Using Bayesian Belief Network to Solve Abnormal Symptoms after Vaccination under Modern Information Technology

研究成果: Conference contribution同行評審

摘要

Rare side effects are weakening confidence in the vaccine. The question is how we interpret the data. Within 15 months after the discovery of the new coronavirus, a variety of effective and safe vaccines against the new coronavirus were available. After receiving the new coronavirus vaccine, some people developed facial paralysis, thigh pain, and even cerebral venous thrombosis. Although these side effects are very rare, and there is a lack of clarity whether there is a causal relationship with the vaccine or not, such news may undermine the confidence of the global vaccine. In order to maintain the confidence of the public, adverse events after vaccination are called ordinary events, and deaths occurring within a few days after vaccination are also interpreted as being caused by their latent diseases. From the following research, the issue of causality divides the vaccinated population into healthy groups and long-term patient groups, and use Bayesian belief network to analyze whether there are symptoms or abnormal events after vaccination as well as the probability distribution of rare illness, death, etc., in order to understand the relationship among each other. Therefore, suspending the administration of COVID vaccine is not a zero-risk option. The reality is that nothing is without risk. Measures to mitigate a risk must be balanced with competitive hazards. Risk seems to be an abstract and vague concept. Risk can be reduced, but it can never be eliminated. The advantage of the Bayesian model is that it is easy to bring the data of various variables into the graph and calculate the posterior data from the known data to strengthen the persuasiveness of vaccination. By using Bayesian Network with PGM Module of Pytorch, the death probability of these two groups can be calculated under abnormal symptoms or without them. The simulation result of death after inoculation is lower than that of normal state without Covid-19 pandemic.

原文English
主出版物標題Proceedings of 2021 3rd International Conference on Artificial Intelligence and Advanced Manufacture, AIAM 2021
發行者Association for Computing Machinery
頁面1064-1069
頁數6
ISBN(電子)9781450385046
DOIs
出版狀態Published - 23 10月 2021
對外發佈
事件3rd International Conference on Artificial Intelligence and Advanced Manufacture, AIAM 2021 - Manchester, United Kingdom
持續時間: 23 10月 202125 10月 2021

出版系列

名字ACM International Conference Proceeding Series

Conference

Conference3rd International Conference on Artificial Intelligence and Advanced Manufacture, AIAM 2021
國家/地區United Kingdom
城市Manchester
期間23/10/2125/10/21

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