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LitCovid-PubTator

Id Subject Object Predicate Lexical cue tao:has_database_id
1 67-75 Disease denotes COVID-19 MESH:C000657245
5 133-141 Disease denotes COVID-19 MESH:C000657245
6 282-291 Disease denotes infection MESH:D007239
7 1234-1252 Disease denotes infectious disease MESH:D003141
15 1598-1615 Species denotes Novel Coronavirus Tax:2697049
16 2081-2092 Species denotes coronavirus Tax:11118
17 2256-2262 Species denotes people Tax:9606
18 2276-2280 Species denotes Taro Tax:4460
19 1501-1509 Disease denotes COVID-19 MESH:C000657245
20 1995-2003 Disease denotes COVID-19 MESH:C000657245
21 2889-2897 Disease denotes COVID-19 MESH:C000657245
31 3270-3275 Species denotes human Tax:9606
32 3866-3872 Species denotes people Tax:9606
33 4105-4111 Species denotes people Tax:9606
34 4597-4603 Species denotes people Tax:9606
35 4635-4641 Species denotes people Tax:9606
36 3142-3150 Disease denotes COVID-19 MESH:C000657245
37 4644-4651 Disease denotes anxiety MESH:D001007
38 4769-4777 Disease denotes COVID-19 MESH:C000657245
39 4851-4869 Disease denotes systematic failure MESH:D006333
43 5206-5212 Species denotes people Tax:9606
44 5966-5984 Disease denotes infectious disease MESH:D003141
45 6043-6051 Disease denotes COVID-19 MESH:C000657245
51 7352-7358 Species denotes people Tax:9606
52 7554-7560 Species denotes people Tax:9606
53 7304-7312 Disease denotes COVID-19 MESH:C000657245
54 7455-7474 Disease denotes infectious diseases MESH:D003141
55 7520-7528 Disease denotes infected MESH:D007239
62 8134-8142 Disease denotes COVID-19 MESH:C000657245
63 8298-8306 Disease denotes Infected MESH:D007239
64 8317-8336 Disease denotes infectious diseases MESH:D003141
65 8990-9008 Disease denotes infectious disease MESH:D003141
66 9045-9053 Disease denotes infected MESH:D007239
67 9200-9208 Disease denotes Infected MESH:D007239
69 10171-10180 Disease denotes infection MESH:D007239
73 11575-11581 Species denotes SARS-2 Tax:2697049
74 11074-11082 Disease denotes COVID-19 MESH:C000657245
75 11618-11626 Disease denotes COVID-19 MESH:C000657245
77 14350-14357 Species denotes patient Tax:9606
79 14843-14849 Species denotes people Tax:9606
81 16908-16914 Species denotes people Tax:9606
86 17183-17189 Species denotes people Tax:9606
87 17154-17162 Disease denotes COVID-19 MESH:C000657245
88 38740-38749 Disease denotes infection MESH:D007239
92 20073-20079 Species denotes people Tax:9606
93 20123-20129 Species denotes people Tax:9606
95 20901-20909 Disease denotes infected MESH:D007239
98 21553-21559 Species denotes people Tax:9606
99 21532-21540 Disease denotes infected MESH:D007239
103 21852-21861 Disease denotes infection MESH:D007239
104 21928-21936 Disease denotes infected MESH:D007239
105 21958-21967 Disease denotes infection MESH:D007239
107 22168-22177 Disease denotes infection MESH:D007239
110 22252-22262 Disease denotes randomness MESH:C562757
111 22317-22326 Disease denotes infection MESH:D007239
113 22513-22522 Disease denotes infection MESH:D007239
116 24169-24175 Species denotes people Tax:9606
117 24475-24481 Species denotes people Tax:9606
119 24842-24852 Disease denotes infections MESH:D007239
121 25189-25198 Disease denotes infection MESH:D007239
124 27304-27313 Disease denotes infection MESH:D007239
125 27374-27383 Disease denotes infection MESH:D007239
134 29577-29583 Species denotes people Tax:9606
135 29638-29644 Species denotes people Tax:9606
136 29724-29730 Species denotes people Tax:9606
137 29094-29103 Disease denotes infection MESH:D007239
138 29211-29220 Disease denotes infection MESH:D007239
139 29274-29283 Disease denotes infection MESH:D007239
140 29584-29592 Disease denotes infected MESH:D007239
141 29645-29653 Disease denotes infected MESH:D007239
143 30089-30098 Disease denotes infection MESH:D007239
146 30287-30296 Disease denotes infection MESH:D007239
147 30639-30648 Disease denotes infection MESH:D007239
150 30946-30952 Species denotes people Tax:9606
151 31111-31117 Species denotes people Tax:9606
155 32066-32072 Species denotes people Tax:9606
156 32077-32085 Disease denotes infected MESH:D007239
157 32137-32150 Disease denotes low infection MESH:D007239
160 33602-33620 Disease denotes infectious disease MESH:D003141
161 33829-33837 Disease denotes COVID-19 MESH:C000657245
163 35998-36007 Disease denotes infection MESH:D007239
169 36837-36843 Species denotes people Tax:9606
170 36425-36445 Disease denotes lower new infections MESH:C000657245
171 36484-36494 Disease denotes infections MESH:D007239
172 36647-36655 Disease denotes infected MESH:D007239
173 36787-36796 Disease denotes infection MESH:D007239
176 37310-37318 Disease denotes COVID-19 MESH:C000657245
177 37514-37524 Disease denotes infections MESH:D007239
181 39268-39286 Disease denotes infectious disease MESH:D003141
184 40012-40016 Disease denotes SARS MESH:D045169
185 40040-40048 Disease denotes COVID-19 MESH:C000657245
187 41179-41188 Disease denotes infection MESH:D007239
243 42983-42991 Disease denotes infected MESH:D007239
245 43629-43638 Disease denotes infection MESH:D007239
249 44127-44133 Species denotes people Tax:9606
250 43792-43801 Disease denotes infection MESH:D007239
251 43962-43972 Disease denotes infections MESH:D007239
253 44539-44548 Disease denotes infection MESH:D007239
257 44938-44944 Species denotes people Tax:9606
258 44929-44937 Disease denotes infected MESH:D007239
259 45034-45044 Disease denotes infections MESH:D007239
263 45567-45576 Disease denotes infection MESH:D007239
264 45755-45765 Disease denotes infections MESH:D007239
265 45822-45831 Disease denotes infection MESH:D007239

LitCovid-PD-HP

Id Subject Object Predicate Lexical cue hp_id
T1 4644-4651 Phenotype denotes anxiety http://purl.obolibrary.org/obo/HP_0000739
T2 9899-9915 Phenotype denotes highly sensitive http://purl.obolibrary.org/obo/HP_0041092
T3 27862-27867 Phenotype denotes falls http://purl.obolibrary.org/obo/HP_0002527
T4 28102-28107 Phenotype denotes falls http://purl.obolibrary.org/obo/HP_0002527
T5 29295-29300 Phenotype denotes falls http://purl.obolibrary.org/obo/HP_0002527
T6 38470-38486 Phenotype denotes highly sensitive http://purl.obolibrary.org/obo/HP_0041092

LitCovid-sentences

Id Subject Object Predicate Lexical cue
T1 0-85 Sentence denotes Re-Thinking the Role of Government Information Intervention in the COVID-19 Pandemic:
T2 86-118 Sentence denotes An Agent-Based Modeling Analysis
T3 120-128 Sentence denotes Abstract
T4 129-301 Sentence denotes The COVID-19 pandemic imposes new challenges on the capability of governments in intervening with the information dissemination and reducing the risk of infection outbreak.
T5 302-602 Sentence denotes To reveal the complexity behind government intervention decision, we build a bi-layer network diffusion model for the information-disease dynamics that were intervened in and conduct a full space simulation to illustrate the trade-off faced by governments between information disclosing and blocking.
T6 603-900 Sentence denotes The simulation results show that governments prioritize the accuracy of disclosed information over the disclosing speed when there is a high-level medical recognition of the virus and a high public health awareness, while, for the opposite situation, more strict information blocking is preferred.
T7 901-1132 Sentence denotes Furthermore, an unaccountable government tends to delay disclosing, a risk-averse government prefers a total blocking, and a low government credibility will discount the effect of information disclosing and aggravate the situation.
T8 1133-1479 Sentence denotes These findings suggest that information intervention is indispensable for containing the outbreak of infectious disease, but its effectiveness depends on a complicated way on both external social/epidemic factors and the governments’ internal preferences and governance capability, for which more thorough investigations are needed in the future.
T9 1481-1483 Sentence denotes 1.
T10 1484-1496 Sentence denotes Introduction
T11 1497-1573 Sentence denotes The COVID-19 pandemic has attacked the whole world over the past few months.
T12 1574-1782 Sentence denotes The key features of the Novel Coronavirus, such as long incubation period, high infectiousness, and asymptomatic transmission, were not perceived at the beginning until they were gradually unveiled [1,2,3,4].
T13 1783-2034 Sentence denotes The WHO and governments keep disclosing epidemic information, but the disclosure is based on their own endowments, preferences, and perceptions, resulting in misleading information at least in the early stage of COVID-19 outbreak, such as “Masks work?
T14 2035-2128 Sentence denotes NO” (quoted from Scott Atlas, the White House coronavirus task force member), “This is a flu.
T15 2129-2327 Sentence denotes This is like a flu” (quoted from Donald Trump, the president of the US), and “There is some immune system variation with Asian people”(quoted form Taro Aso, the Deputy Prime Minister of Japan), etc.
T16 2328-2406 Sentence denotes This information failed to alert the public but let their guards down instead.
T17 2407-2541 Sentence denotes Then, the high mortality rate and emergency announcements subsequently incited widespread fear and exacerbated the epidemic situation.
T18 2542-2667 Sentence denotes Theoretically, a systematic provision of timely and effective information from the government can mitigate the downsides [5].
T19 2668-2817 Sentence denotes However, in the real world, speed entails inaccuracy and cognitive uncertainty that keep government away from accomplishing such a tough mission [6].
T20 2818-3068 Sentence denotes Thus, in the early stage of an epidemic with strong externalities like COVID-19, the government’s choice between timeliness and effectiveness of intervention strategies raises a theoretical challenge for the management of urgent public health crisis.
T21 3069-3314 Sentence denotes The key to successfully contain the spread of an unexpected disease like COVID-19 is to understand the complicated two-way interaction between the dynamics of disease and those of information (and the human behavior response to information) [7].
T22 3315-3498 Sentence denotes Information might either amplify or diminish the public’s response to a risk event, depending on the transmission of risk information and public’s reactions at the time it occurs [8].
T23 3499-3716 Sentence denotes At the micro-level, one’s behavior depends on the epidemiological status of the disease, the individual’s knowledge about it (information accessed), misinformation, and the individual’s education and income level [9].
T24 3717-3950 Sentence denotes Along with the spread of disease in social life (physical level), information spreads in a virtual network, which brings the awareness of crisis for people [10,11,12], leading them to take preventive measures to stay healthy [13,14].
T25 3951-4076 Sentence denotes Therefore, the spread of disease facilitates the spread of information, which in turn inhibits the spread of disease [15,16].
T26 4077-4225 Sentence denotes However, on the other hand, people usually get illogical, fail to discern falsity, and disregard the truth during information dissemination [17,18].
T27 4226-4383 Sentence denotes Misleading information seems to have a natural disposition to resonate with public opinions, which causes spontaneous misrepresentation in transmission [19].
T28 4384-4538 Sentence denotes In addition, discussions on epidemic bring panic [20] and aggravate the harm of the epidemic [21], which will be further exaggerated by social media [22].
T29 4539-4709 Sentence denotes Meanwhile, increasing uncertainty about the disease makes people feel loss of control and boost people’s anxiety [23], usually accompanied by psychological distress [24].
T30 4710-4875 Sentence denotes Therefore, information is critical to fighting against the COVID-19-crisis [25,26], and improper information management strategy may lead to systematic failure [27].
T31 4876-5067 Sentence denotes The government, as the main governing body, is the most critical (information) node in the entire network, since it can intervene in information by “blocking” [28,29] and “disclosing” [5,30].
T32 5068-5310 Sentence denotes The minimal blocking implies a free and open information environment, which stimulates information to be widely diffused and induces more people to take self-protective measures [31], but “rumors” might also proliferate at the mean time [24].
T33 5311-5446 Sentence denotes Even if (under certain premises) some “rumors” are accurate [7,32,33], it might still interrupt the prevention efforts to the epidemic.
T34 5447-5728 Sentence denotes It is always believed that government should perform as a central node to disclose accurate and up-to-date information to the entire society, so as to keep the public away from untruthful information and prompt the public to make informed decisions about health protection [30,34].
T35 5729-5948 Sentence denotes However, in the real world, governments do face time constraints and the trade-off between being accurate and being up-to-date in terms of information disclosing, which is not considered in classical information theory.
T36 5949-6257 Sentence denotes Because a highly infectious disease caused by unknown viruses with great externality, such as COVID-19, spreads together with information of varying qualities (truthfulness, accuracy, etc.), it is highly probable that the disease has already contaminated the society before low-quality information is purged.
T37 6258-6510 Sentence denotes In this case, the government has no way to disclose accurate information in time, resulting in the loss of public trust and raising the doubt of the public on the governing capacity of the government, which will accelerate epidemic outbreak [35,36,37].
T38 6511-6732 Sentence denotes Therefore, governments need to not only decide when to inject information into the network, but also whether to follow the tenet that governments do not and should not block information spreading at any circumstance [38].
T39 6733-6884 Sentence denotes For information blocking, studies have been conducted in theoretical [39,40,41], in empirical [42,43], in case studies [43,44], and other perspectives.
T40 6885-7075 Sentence denotes These studies argued that, even if governments have the power to control information [45], they should not do that because free spread of information is essential to welfare-maximizing [38].
T41 7076-7264 Sentence denotes This argument is based on two underlying assumptions: (1) publishers are completely competitive to reach an equilibrium of disclosing accurate information; (2) there is no time constraint.
T42 7265-7419 Sentence denotes These two assumptions do not apply for COVID-19 because, in the age of Internet media, people are not incentive compatible to spread accurate information.
T43 7420-7731 Sentence denotes Moreover, such highly externalized infectious diseases caused by unknown viruses might have already infected a considerable amount of people before low-quality information is purified, so the government should not simply adhere to the tenet of not blocking information when facing an unknown health crisis [38].
T44 7732-7861 Sentence denotes As a result, we will discuss the complexity and diversity in information blocking and broaden current information control theory.
T45 7862-8082 Sentence denotes By the discussion so far, we notice that the successful containment of epidemic outbreak relies on the successful management on the information dissemination process, which, however, is hard to achieve in the real world.
T46 8083-8337 Sentence denotes To better understand the failure in containing the COVID-19 pandemic, we here construct an information-behavior bi-layer model by adding a parallel layer of information transmission to the classical SI (Susceptible-Infected) model of infectious diseases.
T47 8338-8490 Sentence denotes We intend to describe the effect of heterogeneous virtual information (at information layer) on heterogeneous nodes’ behaviors (at physical layer) [46].
T48 8491-8624 Sentence denotes The government, as the key node in information network, can influence the entire network through information disclosing and blocking.
T49 8625-8838 Sentence denotes Based on this, we assign values to key variables such as the medical awareness level of the virus and the public’s health awareness level and then conduct computer simulation experiments under different scenarios.
T50 8839-8932 Sentence denotes We reveal the pattern of government information intervention based on the simulation results.
T51 8933-9225 Sentence denotes In addition, we only focus on the emergence stage of the infectious disease, during which the recovery from the infected status, such as self-healing and cure of the disease, is omitted [47]; therefore, the base model is the SI model rather than the SIR (Susceptible-Infected-Recovery) model.
T52 9226-9411 Sentence denotes Based on the bi-layered network model, we explore two main themes: how disease spreads affect information spreads and how information affects the efficiency of controlling the epidemic.
T53 9412-9662 Sentence denotes We introduce the non-dualism of information and the heterogeneity of nodes’ behaviors into the epidemic model and conduct a simulation to reveal the information intervention dilemma faced by the government between information disclosing and blocking.
T54 9663-9844 Sentence denotes We find that governments face a trade-off between speed and accuracy in information disclosing; and the optimal strategy is contingent on varying conditions in information blocking.
T55 9845-9973 Sentence denotes The optimal combination of disclosing and blocking is highly sensitive to the government preference and its governance capacity.
T56 9974-10368 Sentence denotes Governments that are only responsible for the outcome of intervention will focus unilaterally on the accuracy at the expense of speed; a risk-averse government that intends to minimize the maximum infection rate under uncertain scenarios will impose a more restrictive blocking; and the most restrictive blocking strategy might be the best for governments with lower capability and credibility.
T57 10369-10448 Sentence denotes In summary, this paper makes several important contributions to the literature.
T58 10449-10612 Sentence denotes First, existing studies did not pay sufficient attention to the spread and evolution of rumors during a public crisis [48,49,50], which is considered in our study.
T59 10613-10875 Sentence denotes We expounded the impacts of information dissemination on epidemic evolution in scenarios with different levels of medical awareness of the virus, public health awareness, and government preferences and credibilities, which complements the research in this field.
T60 10876-11182 Sentence denotes Second, most current studies regard information and disease transmissions as simultaneously happened and jointly induced by the physical movement of an agent [46], while this is not the case during COVID-19 pandemic as the internet obviates the needs for physical contact in information transmissions [51].
T61 11183-11362 Sentence denotes Thus, in our paper, we separate the information and disease transmissions and investigate the impact of heterogeneous information on the individual behaviors and disease dynamics.
T62 11363-11532 Sentence denotes Third, unlike previous research on government information interventions with known risk [5,28,29,30], ours are on government information interventions with unknown risk.
T63 11533-11804 Sentence denotes The lack of prior knowledge on the Corona-SARS-2 is the most striking feature of the COVID-19 pandemic, which weakens the usefulness of government action and calls for a reassessment of government information intervention under a crisis environment with high uncertainty.
T64 11805-11937 Sentence denotes To this end, this paper demonstrates a couple of intervention dilemmas faced by government, which complements the existing theories.
T65 11939-11941 Sentence denotes 2.
T66 11942-11949 Sentence denotes Methods
T67 11951-11955 Sentence denotes 2.1.
T68 11956-11991 Sentence denotes The Model of Information Disclosing
T69 11992-12124 Sentence denotes The information dissemination system resp. behavioral response system is embedded in the information network resp. physical network.
T70 12125-12160 Sentence denotes Both networks are given as follows.
T71 12161-12339 Sentence denotes Information network: the network has (N+1) nodes, first N are individual nodes representing N individuals denoted as i,i=1,2,⋯N, and one government information node denoted as j.
T72 12340-12558 Sentence denotes The degree of an individual node i is denoted as yi, which obeys a power-law distribution, that is, Fyi∝yi−v, where F(·) is the CDF and yi satisfies ϵ≤1∕yi≤1, where ϵ is a small constant to avoid the degree to blow up.
T73 12559-12643 Sentence denotes Degree and degree distribution are concepts used in graph theory and network theory.
T74 12644-12746 Sentence denotes A graph (or network) consists of a number of vertices (nodes) and the edges (links) that connect them.
T75 12747-12842 Sentence denotes The number of edges (links) connected to each vertex (node) is the degree of the vertex (node).
T76 12843-13140 Sentence denotes The degree distribution is a general description of the number of degrees of vertices (nodes) in a graph (or network), and, for random graphs, the degree distribution is the probability distribution of the number of degrees of vertices in the graph, which usually assumes a power-law distribution.
T77 13141-13200 Sentence denotes Throughout the following analysis, we take v=−1 and ϵ=0.01.
T78 13201-13447 Sentence denotes The government node j (representing real-world government) discloses information to every individual node and can only obtain information from n1 (n1≪N) (The notation “≪” means that the number n1 must be far less than the number N.) random nodes.
T79 13448-13565 Sentence denotes The neighborhood of an individual node i is the set of all other nodes (including j) it connects with, denoted as Oi.
T80 13566-13728 Sentence denotes Physical network: the physical network has M nodes, including n2 “special” nodes defined as the “gathering spots”, which predisposes these nodes to this epidemic.
T81 13729-14024 Sentence denotes Mt denotes the distribution of locations of all N individuals during period t, and M0 is the initial distribution that can be viewed as the “home” for every individual (node), thus at the beginning of each period t the individuals move from M0 to Mt and return back to M0 at the end of period t.
T82 14025-14136 Sentence denotes Home coordinates M0 and gathering spots are randomly assigned and different from each other, so we have N+n2<M.
T83 14137-14364 Sentence denotes Suppose there are n3 random nodes, each with identical initial information ξ, who disseminate information at the outbreak of disease; n4 random nodes are initially affected by the public crisis, representing the “patient zero”.
T84 14365-14436 Sentence denotes Without loss of generality, we unitize the information between 0 and 1.
T85 14437-14507 Sentence denotes The rules for information dissemination in each period are as follows.
T86 14508-14516 Sentence denotes Stage i.
T87 14517-14564 Sentence denotes Individual nodes send information to neighbors.
T88 14565-14729 Sentence denotes Each node that has information at the beginning of each period sends its information to all its neighbors, so all (N+1) nodes might receive information from others.
T89 14730-15001 Sentence denotes As information is spontaneously [19], rapidly, and extensively [22] misrepresented during transmission, and most people do not send more accurate information than they receive [17,18], we assume that information gets distorted and misrepresented during each transmission.
T90 15002-15147 Sentence denotes Thus, the actual amount of information received is δxi due to information decay, where δ∼U(0,1), and we assume xi∈0,1 without loss of generality.
T91 15148-15157 Sentence denotes Stage ii.
T92 15158-15210 Sentence denotes Individual nodes receive information from neighbors.
T93 15211-15364 Sentence denotes Each node might have multiple information sources, and it merges the information from all its neighbors weighted by their degrees (and including itself).
T94 15365-15516 Sentence denotes Each individual updates its information based on Equation (1) at each period before the government intervenes:(1) xi,t+1=∑k∈Oiδxk,tyk+xi,tyi∑k∈Oiyk+yi.
T95 15517-15527 Sentence denotes Stage iii.
T96 15528-15584 Sentence denotes The government node censors and screens the information.
T97 15585-15960 Sentence denotes The government has a threshold XD once it receives information from individuals (otherwise, the government would not act in this stage), the government will screen out all individuals with above-threshold information at the beginning of current period, among whom the government pinpoints the nearest ones and takes the maximum amount of information they carry denoted as xd.
T98 15961-15970 Sentence denotes Stage iv.
T99 15971-16009 Sentence denotes Government node discloses information.
T100 16010-16215 Sentence denotes The government is not able to intervene until it censors and screens the information; thus, there is a lag between receiving information and disclosing, which as we can see in Figure 4e, increases with XD.
T101 16216-16380 Sentence denotes After the lag (otherwise, the government would not act in this stage), the government shall disclose xd to all nodes in each period with a weight of λ, where λ∈0,1.
T102 16381-16433 Sentence denotes The higher the λ, the more credible the information.
T103 16434-16442 Sentence denotes Stage v.
T104 16443-16485 Sentence denotes Individual nodes update information again.
T105 16486-16675 Sentence denotes The government intervention switches the updating rule to (2) xi,t+1=λxd+(1−λ)∑k∈Oiδxk,tyk+xi,tyi∑k∈Oiyk+yi, which is also the final amount of the information after government intervention.
T106 16676-16865 Sentence denotes In addition, we assume that the amount of information of initial information holders (those who have information in period 0) is constant, i.e., they do not apply for Equations (1) and (2).
T107 16866-17058 Sentence denotes In short, in the first period, only a few people disseminate information, which will be randomly decayed in each subsequent period, this process simulates the misrepresentation of information.
T108 17059-17177 Sentence denotes Twitter data show that there was a significant heterogeneity in the behavioral response to the COVID-19 epidemic [52].
T109 17178-17552 Sentence denotes Some people, once informed about the epidemic, wear a mask and practice social distance to not expose themselves to the virus—while others panicked, herded, and behaved irrationally because of bad news, exemplified by flocking to churches for psychological comfort [53], to supermarkets for daily supplies [54], and taking radical actions like repeated hospital visits [55].
T110 17553-17863 Sentence denotes Thus, in this paper, we group the population by susceptibleness to irrational behavior caused by information described by an exogenous parameter—individual threshold XI that distinguishes whether an individual is panic-prone or non panic-prone by comparing it with the amount of information the individual has.
T111 17864-17952 Sentence denotes An above-threshold (under-threshold) information denotes a (non) panic-prone individual.
T112 17953-18136 Sentence denotes For a panic-prone node, we assume its probability of going to gathering spots instead of maintaining the original trajectory is 1−x·,a, where x·,a is the amount of information it has.
T113 18137-18223 Sentence denotes For a non panic-prone node, we assume that its probability of not moving is r·,N=x·,a.
T114 18224-18675 Sentence denotes Thus, the behavioral routine is as follows (see Figure 1 for a simplified example): a node moves along with its path with a maximum radius d1, and the actual distance it moves obeys a uniform distribution in (0,d1); this node will randomly choose one of the gathering spots if intending to go to one in this period; every individual node follows this routine, then we have an evolving geographical distribution Mt of the population moving in period t.
T115 18676-18816 Sentence denotes The uninfected will contact everyone within the maximum infection radius d2 and there is a probability μ of being infected for each contact.
T116 18817-19121 Sentence denotes Throughout the simulation analysis, we focus on the impact of three key parameters, the initial information (ϵ), individual threshold (XI), and disclosing threshold (XD), which are the most important quantities to measure the impact of government intervention on the coupled information-disease dynamics.
T117 19122-19388 Sentence denotes The initial information is the source of all information, which denotes the medical awareness of the virus; the individual threshold is a parameter to distinguish the population by groups set above, the smaller it is, the higher the level of public health awareness.
T118 19389-19523 Sentence denotes Disclosing the threshold, chosen by the government, measures its relative priority to speed and accuracy in information dissemination.
T119 19524-19613 Sentence denotes One of the objectives of our experiment is to ascertain the optimal disclosing threshold.
T120 19614-19826 Sentence denotes Government prioritizes speed more as its threshold is lower, “0“ means that government discloses the information immediately upon receipt; “1” means that government only discloses completely accurate information.
T121 19828-19832 Sentence denotes 2.2.
T122 19833-19874 Sentence denotes The Experiments of Information Disclosing
T123 19875-20164 Sentence denotes The simulation steps will be: (Figure 2 brief overviews these steps):Generate a random information network and a random physical network, the former illustrates the information relationship between people, and the latter records the coordinates of people M0 and gathering spots on the map.
T124 20165-20227 Sentence denotes Assign values to initial information and individual threshold.
T125 20228-20494 Sentence denotes The initial information is the source of all information, which denotes the medical awareness of the virus; the individual threshold is a parameter to distinguish the population by groups set above; the smaller it is, the higher the level of public health awareness.
T126 20495-20537 Sentence denotes Assign values to the disclosing threshold.
T127 20538-20672 Sentence denotes The disclosing threshold, chosen by the government, measures its relative priority to speed and accuracy in information dissemination.
T128 20673-20762 Sentence denotes One of the objectives of our experiment is to ascertain the optimal disclosing threshold.
T129 20763-20823 Sentence denotes Government prioritizes speed more as its threshold is lower.
T130 20824-20916 Sentence denotes Generate random individual nodes with initial information and random initial infected nodes.
T131 20917-21010 Sentence denotes Enter period 1. (a) Each individual node with information sends out information to neighbors.
T132 21011-21097 Sentence denotes (b) Each individual node will update its information (weighted) based on Equation (1).
T133 21098-21264 Sentence denotes (c) The government initiates a censoring and screening and enters stage d after a lag period, only for the first time does it receive the above-threshold information.
T134 21265-21350 Sentence denotes If the government never receives above-threshold information, skip c, d, and go to e.
T135 21351-21496 Sentence denotes (d) Government discloses information to the public, which induces another round of information update for individual nodes based on Equation (2).
T136 21497-21690 Sentence denotes (e) The population is grouped into infected and healthy people by health status, and into panic-prone and non panic-prone by how much information one has compared with the individual threshold.
T137 21691-21837 Sentence denotes (f) Each individual node moves in a physical layer following the routine of the subgroup it is in with probability based on its final information.
T138 21838-21980 Sentence denotes (g) Reset the infection status of healthy individual within the transmission radius of an infected one according to the infection probability.
T139 21981-22077 Sentence denotes Return to step 5, initiate a new round for 50 times, that is, run the experiment for 50 periods.
T140 22078-22142 Sentence denotes The data show a stability after 40 periods, so we stopped at 50.
T141 22143-22207 Sentence denotes Output the final overall infection rate at the end of period 50.
T142 22208-22332 Sentence denotes Repeat steps 4–7 for 50 times to reduce the randomness, record the mean, and standard deviation of the final infection rate.
T143 22333-22574 Sentence denotes Reassign for the disclosing threshold discrete values that equally divide the interval 0,1 into 11 parts, and repeat steps 3–8 for each value, that is, 11 times, to find the final infection rates for different disclosing threshold scenarios.
T144 22575-22760 Sentence denotes Reassign for initial information a discrete array 0.4,0.6,0.8,1.0, and reassign for an individual threshold the same values reassigned for the disclosing threshold in the previous step.
T145 22761-22803 Sentence denotes Then, repeat steps 2–9, that is, 44 times.
T146 22804-22896 Sentence denotes Now, we have conducted an experiment with a full parameter space for each initial condition.
T147 22897-23078 Sentence denotes A total of 484 different conditions were simulated for 24,200 repetitions of the experiment, each lasts for 50 periods, which adds up to a total of 1,210,000 periods of experiments.
T148 23079-23162 Sentence denotes They essentially cover all possible scenarios under different external constraints.
T149 23163-23251 Sentence denotes Table 1 lists the definitions, values, and distributions of all parameters in the model.
T150 23253-23257 Sentence denotes 2.3.
T151 23258-23307 Sentence denotes The Model and Experiments of Information Blocking
T152 23308-23452 Sentence denotes We assume the government will suppress any transmission of information under XB; thus, XB=0 denotes the special case in the previous discussion.
T153 23453-23659 Sentence denotes Combining the blocking threshold with other initial conditions above, we have a new parameter space simulation with a total of 5324 different scenarios simulated and a total of 266,200 repeated experiments.
T154 23660-23731 Sentence denotes Each group lasts for 50 periods, for a total of 13,310,000 experiments.
T155 23733-23735 Sentence denotes 3.
T156 23736-23758 Sentence denotes Results and Discussion
T157 23760-23764 Sentence denotes 3.1.
T158 23765-23783 Sentence denotes Modeling Framework
T159 23784-23888 Sentence denotes Our model consists of two main systems: information dissemination system and behavioral response system.
T160 23889-24030 Sentence denotes In the information dissemination system, each individual sends (receives) information to (from) its neighbors through an information network.
T161 24031-24322 Sentence denotes Given that information will always be rapidly, extensively [22], and spontaneously [19] misrepresented during transmission, and that most people do not send more accurate information than they receive [17,18], we assume information gets distorted and misrepresented during each transmission.
T162 24323-24435 Sentence denotes In the behavioral response system, each individual makes a move according to its information (with probability).
T163 24436-24690 Sentence denotes Once informed about the epidemic, some people behave rationally such as practicing social distancing, while others behave irrationally such as flocking to churches [53], to supermarkets [54], and taking radical actions like repeated hospital visits [55].
T164 24691-24767 Sentence denotes The information dissemination system affects the behavioral response system.
T165 24768-24898 Sentence denotes The government might intervene in the information dissemination to reduce infections by either disclosing or blocking information.
T166 24899-25052 Sentence denotes For information disclosing, the government discloses information to all individuals to make them behave rationally (or at least not behave irrationally).
T167 25053-25204 Sentence denotes Obviously, the more accurate the information is and the earlier it is disclosed, the public can be better guided which lowers the final infection rate.
T168 25205-25336 Sentence denotes However, it takes time for government to censor and screen information before disclosing, which brings an accuracy-speed trade-off.
T169 25337-25676 Sentence denotes We use a disclosing threshold to measure the government’s preference on speed or accuracy; a higher threshold indicates a higher preference on accuracy: a threshold “1” means the government would not disclose any information unless it is completely accurate; while “0” indicates an immediate disclosure without any censoring and screening.
T170 25677-25785 Sentence denotes For information blocking, the government blocks less-accurate information transmissions between individuals.
T171 25786-25878 Sentence denotes Obviously, a stringent blocking leads to a transmission of information with higher accuracy.
T172 25879-26041 Sentence denotes However, blocking will slow down the overall information dissemination in the network, and then slow down the government’s censoring and screening of information.
T173 26042-26101 Sentence denotes Thus, there is a trade-off between disclosing and blocking.
T174 26102-26357 Sentence denotes We use a blocking threshold to measure the blocking stringency, the government would block any transmission of any under-threshold information: a threshold “0” means no blocking at all; while “1” means that government blocks all information transmissions.
T175 26358-26415 Sentence denotes We analyze both of the optimal thresholds for government.
T176 26416-26494 Sentence denotes More details on the settings of our model can be found in the Methods section.
T177 26495-26577 Sentence denotes In reality, the government has a great influence on the information dissemination.
T178 26578-26833 Sentence denotes Thus, in our model, we assume that the government node is the most critical one and the government-disclosed information highly outweighs individuals’ information (except for the further discussion of a government with low credibility in a later section).
T179 26835-26839 Sentence denotes 3.2.
T180 26840-26886 Sentence denotes Intervention Dilemma in Disclosing Information
T181 26887-27006 Sentence denotes In this part, we will discuss the speed-accuracy trade-off results and analyze the mechanism in information disclosing.
T182 27007-27486 Sentence denotes First, Figure 3 summarizes the results of the simulations with 44 different external constraints, and we find that there is seldom a single dominant disclosing threshold (the government’s preference on speed or accuracy), i.e., seeking either speed or accuracy alone will not result in the lowest infection rate, and the optimal strategy (corresponding to the lowest infection rate at the end of the last period) is somewhere in between, which implies a speed-accuracy trade-off.
T183 27487-27650 Sentence denotes Specifically, the optimal disclosing threshold lies between both ends in about 84.09% of the cases, and their distributions vary in different external constraints.
T184 27651-28324 Sentence denotes Figure 3a,b show that (1) if the initial information is 1 or 0.8 and the individual threshold is in [0,0.7], the optimal disclosing threshold has a 91.75% probability of being in the middle, and mostly (66.89%) falls within [0.6,0.8]; (2) if the initial information is 0.6 and the individual threshold is in [0,0.5], the government has a 93.00% probability of dealing with a trade-off (Figure 3c), and the optimal disclosing threshold mostly (77.78%) falls in [0.4,0.6]; (3) if the initial information is 0.4, the optimal disclosing threshold will almost certainly be greater than 0.4 (99.98%), but the distribution is too scattered to give a specific interval (Figure 3d).
T185 28325-28404 Sentence denotes The mode of optimal disclosing threshold is 0.8 but only with 20.30% frequency.
T186 28405-28856 Sentence denotes In addition, we can see that, if the virus is medically well-known (ξ≥0.8) and public health awareness is low (XI≥0.7), the government shall prioritize accuracy over speed; if the virus is medically medium-known (ξ=0.6) and public awareness is high (XI≤0.5), the government shall balance speed and accuracy, which almost equally signifies; and if the virus in medically less-known (ξ=0.4), the government shall probably prioritize accuracy over speed.
T187 28857-28946 Sentence denotes Second, we will dissect the underlying logic and mechanism of the government’s trade-off.
T188 28947-29132 Sentence denotes We take one of the curves in Figure 3a that is denoted by ξ=1 and XI=0.5, as an example, to find the relationship between disclosing the threshold infection rate, then we have Figure 4.
T189 29133-29851 Sentence denotes In all 550 (11×50) experiments, the disclosing threshold for the lowest final infection rate usually lies between 0.7 and 0.9, and the final infection rate first falls then rises as the disclosing threshold increases, with the inflection point being at 0.8 (Figure 4a); the amount of final information per capita and the duration of government intervention both increase monotonically with the disclosing threshold (Figure 4b,e); the number of people infected after government intervention, the number of people infected by a panic after government intervention and the number of uninfected people remaining at the time of government intervention all negatively correlate with the disclosing threshold (Figure 4c,d,f).
T190 29852-30104 Sentence denotes One of the fundamental reasons for the government to balance speed and accuracy is the precipitous fall in the marginal contribution of accuracy as the disclosing threshold exceeds a certain “point”, while speed hardly affects the final infection rate.
T191 30105-30184 Sentence denotes The following is a detailed analysis on the effects of both accuracy and speed.
T192 30185-30482 Sentence denotes With respect to accuracy, the effect comes from two perspectives: (1) accurate information lowers the infection from panic in a healthy panic-prone population (Figure 4d); (2) accurate information changes the behavior routine in the panic-prone population, which reduces the spread of the disease.
T193 30483-30738 Sentence denotes Both (1) and (2) are in play until the disclosing threshold exceeds 0.5 (XI in our example); after that, there is no longer a panic-prone group, neither is infection from panic, which explains the precipitous fall in the marginal contribution of accuracy.
T194 30739-31002 Sentence denotes When it comes to speed, the effect comes from two perspectives as well: (1) the time the government spends on censoring and screening information, which we call a lag; (2) the number of remaining uninfected people at the time of government disclosing information.
T195 31003-31163 Sentence denotes The more accurate information the government seeks, the longer the lag (Figure 4e) and the fewer uninfected people remain at the time of disclosing (Figure 4f).
T196 31164-31316 Sentence denotes Notice that both have roughly the same slope with respect to disclosing threshold, which explains a roughly constant marginal cost of pursuing accuracy.
T197 31317-31851 Sentence denotes The combination of constant marginal costs and abrupt fall in marginal benefits leads to an inflection point in disclosing threshold, which explains the heterogeneity in the distribution of optimal disclosing threshold: as disclosing threshold exceeds individual threshold, a sudden fall of benefits occurs, which theoretically makes the optimal disclosing threshold slightly greater than the individual threshold, which explains what we discussed above that the intervals in which the optimal disclosing threshold mostly lays differ.
T198 31852-32156 Sentence denotes In most cases, the government’s premature disclosing of inaccurate information will contaminate the overall network, while obsession with accuracy may have the government miss the disclosure window before too many people are infected, which is intolerable to government who requires a low infection rate.
T199 32157-32184 Sentence denotes Thus, there is a trade-off.
T200 32186-32190 Sentence denotes 3.3.
T201 32191-32235 Sentence denotes Intervention Dilemma in Blocking Information
T202 32236-32418 Sentence denotes We assume the government will block any transmission of under-the-blocking-threshold (XB) information between individuals; thus, XB=0 denotes the special case in previous discussion.
T203 32419-32456 Sentence denotes Other settings are the same as above.
T204 32457-32545 Sentence denotes In this part, we will discuss the optimal blocking strategies and analyze the mechanism.
T205 32546-32624 Sentence denotes As shown in Figure 5, the optimal blocking threshold varies from case to case.
T206 32625-32961 Sentence denotes Overall, a small blocking threshold ([0.1,0.3]) is necessarily (100%) not optimal; a strict blocking threshold (XB≥0.8) is usually (50.41%) optimal, experimental data show a value between 45% and 55% in most external conditions; but 0 is the optimal threshold still in 20.25% of cases, and usually (89.80%) occurs when ξ≥0.8 and XI≤0.7.
T207 32962-33046 Sentence denotes When the initial information is low (ξ≤0.6), not blocking is seldom (0.83%) optimal.
T208 33047-33096 Sentence denotes We have our key findings from the above analysis.
T209 33097-33347 Sentence denotes First, minor blocking is not an option for government because it is dominated by stricter blocking in a deteriorated or being deteriorated information environment and undermines the efficiency of information dissemination in a benevolent environment.
T210 33348-33621 Sentence denotes Second, in the age of the Internet, information is extremely interconnected and low-quality information is more easily disseminated, thus stricter information blocking might be an option worth considering in the early stages of an outbreak of an unknown infectious disease.
T211 33622-33916 Sentence denotes Finally, if the virus is well-known at the medical level, plus the public has a certain level of health awareness, free spread of information might improve the situation; while, otherwise, as in the case of COVID-19, governments should intervene in the spread of information in social networks.
T212 33917-34055 Sentence denotes From the simulation results, we can see that, in most cases, the optimal strategy will be either highly stringent blocking or free spread.
T213 34056-34215 Sentence denotes Blocking low-quality information not only increases the overall information of the whole population, but causes side effects under certain external conditions.
T214 34216-34276 Sentence denotes Thus, not blocking can be an optimal strategy in some cases.
T215 34277-34365 Sentence denotes In this section, we provide an in-depth analysis of the data and a mechanistic analysis.
T216 34366-34625 Sentence denotes Figure 5b reveals in general the optimal blocking threshold negatively correlates with initial information: as initial information drops from 1 to 0.4, the probability of optimal blocking threshold taking 0 will be 52.07%, 27.27%, 1.65%, and 0%, respectively.
T217 34626-34725 Sentence denotes Figure 5c shows a positive correlation between optimal blocking threshold and individual threshold.
T218 34726-34909 Sentence denotes Governments block information mainly by suppressing less-accurate information, but which, once implemented, will slow down the overall information dissemination in the network anyway.
T219 34910-35015 Sentence denotes Therefore, blocking can neither be too stringent nor too liberal, an optimal one usually lies in between.
T220 35016-35116 Sentence denotes However, mild blocking is necessarily not optimal as it fails to purify the information environment.
T221 35117-35273 Sentence denotes Furthermore, when the virus is well-known (ξ=1), especially when public health awareness is high (XI≤0.3), not blocking dominates most of the time (69.70%).
T222 35274-35485 Sentence denotes While stringent blocking (XB≥0.8) is necessarily not (0%) an optimal strategy because higher-quality information, which helps to slow the spread of the disease with high public health awareness, is also blocked.
T223 35486-35676 Sentence denotes Thus, when both the initial information and the level of public health awareness are at a high level, not blocking is optimal; otherwise, information that would not cause panic might do now.
T224 35677-35820 Sentence denotes In addition, when medical awareness of the virus declines, so does the proportion of valuable information, which necessitates blocking as well.
T225 35822-35826 Sentence denotes 3.4.
T226 35827-35880 Sentence denotes Optimal Intervention under Different Government Types
T227 35881-36013 Sentence denotes In previous sections, our study was based on the neutral government assumption that governments only seek the lowest infection rate.
T228 36014-36171 Sentence denotes However, in reality, a government is not a personalized organization pursuing social optimum because it is often checked by various inside and outside nodes.
T229 36172-36235 Sentence denotes In addition, government credibility makes a difference as well.
T230 36236-36347 Sentence denotes In this section, we will discuss the optimal strategy for non-neutral governments and low-credible governments.
T231 36348-36547 Sentence denotes An unaccountable government that evades responsibilities would only care for lower new infections after intervention rather than global infections, which digresses from the objective described above.
T232 36548-36673 Sentence denotes As shown in Figure 6a, the later the government discloses information, the less that will be newly infected after disclosure.
T233 36674-36870 Sentence denotes There are two underlying reasons: (1) late disclosed information will indeed be more accurate, which reduces the infection rate; and (2) there are less uninfected people at the time of disclosing.
T234 36871-36968 Sentence denotes Therefore, a blame-evading government would delay the disclosing to avoid being held accountable.
T235 36969-37170 Sentence denotes A conservative government that prefers the least error-prone strategy (minimizing maximum loss) rather than the optimal one (the loss minimization strategy) would block all the information (Figure 6b).
T236 37171-37410 Sentence denotes Since the optimal strategy would not be accessed until all external conditions are fully judged and scrutinized, which is not feasible for COVID-19, complete blocking would be optimal for such a government to avoid the worst case scenario.
T237 37411-37525 Sentence denotes Our experiment of 484 different scenarios manifests a complete blocking will never lead to the highest infections.
T238 37527-37529 Sentence denotes 4.
T239 37530-37541 Sentence denotes Conclusions
T240 37542-37939 Sentence denotes In this paper, we introduce the non-dualism (by non-dualism, we mean the information is neither absolutely accurate nor absolutely not but partially accurate) of information and the heterogeneity of nodes’ behaviors into the epidemic model and conduct a simulation to reveal the information intervention dilemma faced by the government and to explore the trade-offs among corresponding strategies.
T241 37940-38055 Sentence denotes Our experiments highlight that:For information disclosing, governments face a trade-off between speed and accuracy.
T242 38056-38205 Sentence denotes A better medical understanding of the virus and an inadequate public health awareness make accuracy outweigh speed; otherwise, a quick one is better.
T243 38206-38415 Sentence denotes For information blocking, the optimal strategy is contingent on varying conditions: no blocking is usually optimal for a well-known virus and a higher public health awareness; otherwise, blocking is preferred.
T244 38416-38546 Sentence denotes The optimal combination of disclosing and blocking is highly sensitive to the government preference and its governance capability.
T245 38547-38930 Sentence denotes A government that is only responsible for the outcome of intervention will focus unilaterally on accuracy at the expense of speed; a risk-averse government that intends to minimize the maximum infection rate in uncertain scenarios will impose a more restrictive blocking; and the most restrictive blocking strategy might be best for governments with lower capability and credibility.
T246 38931-39134 Sentence denotes These findings reveal the complexity in government decision-making about dissemination of disease information: neither allowing free flow of information nor disclosing it as early as possible is optimal.
T247 39135-39227 Sentence denotes Under extreme conditions, they are even harmful to the goal of controlling disease outbreak.
T248 39228-39473 Sentence denotes The interaction between information and infectious disease deepens our knowledge about public health crisis governance, enriches the existing theories in public economics and public management, and provides useful social and policy implications.
T249 39474-39546 Sentence denotes In reality, some governments are not as capable and credible as assumed.
T250 39547-39698 Sentence denotes A lower credibility will discount the effects of disclosing information or even annul it, which makes a total blocking optimal as shown in Figure 6c,d.
T251 39699-39867 Sentence denotes The bankruptcy of government credibility originates in two ways: (1) the government’s past mediocre performance; (2) the public’s inherent belief in “small government”.
T252 39868-40152 Sentence denotes Meanwhile, a similar experience in the past also affected government responses and effects, as we can see with the horrible painful memories of SARS inducing vigilance for COVID-19 in East Asia countries, while the U.S. and Europe were indifferent in the early stage of this pandemic.
T253 40153-40284 Sentence denotes In the preceding discussion, we relaxed one assumption at a time, whereas the government’s preferences are more complex in reality.
T254 40285-40574 Sentence denotes In a broader context, the government’s preferences (objective function) are affected by two things: the government’s perception and judgment of the epidemic (decision-making base), and the government’s priorities in different objectives (decision-making objectives); both change over time.
T255 40575-40612 Sentence denotes This paper also has some limitations.
T256 40613-40844 Sentence denotes For instance, our discussion focuses mainly on the theoretical mechanisms behind the joint spreading process of information and epidemic, and the proposed intervention strategies have not yet been analyzed with the real-world data.
T257 40845-40945 Sentence denotes One reason for the lack of empirical analysis is the complex set-up of the bi-layered network model.
T258 40946-41146 Sentence denotes The information dissemination network and the physical-layer contact network are not precisely observable in the real world, which makes it challenging for acquiring sufficient data for model fitting.
T259 41147-41386 Sentence denotes On the other hand, the observed infection and information dissemination process are often already intervened in by the government; therefore, it is hard to separate the net effect of government intervention from the ex-post spreading data.
T260 41387-41468 Sentence denotes Then, it is technically difficult to quantify the key parameters of intervention.
T261 41469-41741 Sentence denotes To this end, we believe more sophisticated empirical techniques have to be introduced for the implement data-oriented analysis of our model, such as the network reconstruction and the causal detection techniques, which forms a promising direction for future investigation.
T262 41743-41758 Sentence denotes Acknowledgments
T263 41759-41855 Sentence denotes The authors are grateful to Sheng Hua (Wuhan University) for helpful discussions and assistance.
T264 41856-41979 Sentence denotes Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.
T265 41981-42001 Sentence denotes Author Contributions
T266 42002-42101 Sentence denotes Conceptualization and methodology, Y.L., Z.J., and X.Z.; analysis, Y.L., Z.J., X.Z., Y.Z., and H.L.
T267 42102-42160 Sentence denotes All authors participated in manuscript writing or editing.
T268 42161-42237 Sentence denotes All authors have read and agreed to the published version of the manuscript.
T269 42239-42246 Sentence denotes Funding
T270 42247-42374 Sentence denotes This research was funded by the Ministry of Education in the China Profject of Humanities and Social Sciences, undner Grant No.
T271 42375-42477 Sentence denotes 20YJC790176, and the Fundamental Research Funds for the Central Universities in China, under Grant No.
T272 42478-42492 Sentence denotes 2242020S30024.
T273 42494-42521 Sentence denotes Data Availability Statement
T274 42522-42595 Sentence denotes The data presented in this study are available on request of the authors.
T275 42597-42618 Sentence denotes Conflicts of Interest
T276 42619-42663 Sentence denotes The authors declare no conflict of interest.
T277 42664-42848 Sentence denotes The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.
T278 42850-42906 Sentence denotes Figure 1 A diagram for individuals’ behavioral routine.
T279 42907-43049 Sentence denotes Consider a world with 36 nodes (d1=2, d2=1), among which there are only one infected node (S), one health node (H) and one gathering spot (G).
T280 43050-43088 Sentence denotes Figure 2 Flowchart of our simulation.
T281 43089-43142 Sentence denotes In step ii, we assigned 4×11×11=484 different values.
T282 43143-43210 Sentence denotes Then, we repeated steps iii and iv each for 50 times, respectively.
T283 43211-43266 Sentence denotes Figure 3 Distribution diagram of disclosing threshold.
T284 43267-43534 Sentence denotes These four subfigures (a–d) correspond to initial information of 1, 0.8, 0.6, and 0.4, respectively, each one has 11 curves representing individual thresholds of all 11 values, which shows the optimal disclosing thresholds under all 44 different external constraints.
T285 43535-43665 Sentence denotes The horizontal axis is all possible values of disclosing thresholds, the vertical axis is the infection rate of the whole society.
T286 43666-44159 Sentence denotes Figure 4 Simulation results for government’s trade-off in disclosing under the special case of ξ=1,XI=0.5. (a) depicts final infection rate; (b) conveys the impact of disclosing threshold on information; (c,d) represent the positive effective of a larger disclosing threshold by showing the new infections overall or from panic after government intervention; and (e,f) describe the negative effect by showing when the government intervenes and how many health people remained at intervention.
T287 44160-44418 Sentence denotes Figure 5 Simulation results for government’s trade-off in blocking. (a) conveys the distributions of optimal blocking threshold under 484 different external scenarios (4 pieces of initial information, 11 individual thresholds, and 11 disclosing thresholds).
T288 44419-44721 Sentence denotes We show how the figure works by taking the first column as an example: there are 98 conditions in which 0 is the lowest infection rate; (b) conveys the relationship between initial information and blocking threshold; and (c) conveys the relationship between individual threshold and blocking threshold.
T289 44722-45249 Sentence denotes Figure 6 Simulation results for non-neutral governments and low-credible governments. (a) portrays the unaccountable governments based on the settings in Figure 4a, the vertical axis is the number of newly infected people after government intervention; (b) the distribution of worst blocking threshold (highest infections) based on the settings of Figure 5 portrays the risk-averse government; (c,d) describe the low-credible governments by reassigning for government’s credibility 10% while keeping other variables unchanged.
T290 45250-45324 Sentence denotes Table 1 Definitions, values, and distributions of variables in the model.
T291 45325-45367 Sentence denotes Variable Definition Values/Distributions
T292 45368-45407 Sentence denotes ξ initial information 0.4,0.6,0.8,1.0
T293 45408-45447 Sentence denotes XI individual threshold 0.1,0.2,⋯,1.0
T294 45448-45487 Sentence denotes XD disclosing threshold 0.1,0.2,⋯,1.0
T295 45488-45525 Sentence denotes XB blocking threshold 0.1,0.2,⋯,1.0
T296 45526-45554 Sentence denotes d1 maximum moving radius 2
T297 45555-45586 Sentence denotes d2 maximum infection radius 1
T298 45587-45606 Sentence denotes N population 1024
T299 45607-45664 Sentence denotes n1 population that can send information to government 5
T300 45665-45699 Sentence denotes n2 numbers of gathering spots 10
T301 45700-45742 Sentence denotes n3 population with initial information 1
T302 45743-45768 Sentence denotes n4 initial infections 3
T303 45769-45818 Sentence denotes M numbers of nodes (area of the whole map) 2500
T304 45819-45861 Sentence denotes μ infection rate of one-time contact 30%
T305 45862-45896 Sentence denotes δ information decay rate U1%,99%
T306 45897-45929 Sentence denotes λ government’s credibility 90%