Machine Learning and Bayes Probability For Detecting Camouflaged Mini Pandemic at the Waves of Covid-19

H. Nieto-Chaupis
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Abstract

This paper present a methodology based at Machine Learning and a theory backed by the Bayes probability to identify rare strains that might not be in coherence with the corona virus. By using the criteria of Tom Mitchell applied on the data belonging to 2021–2022 period, the distributions of infections registered at the beginning of 2022 would not be in accordance to waves of pandemic as seen at 2020 and 2021. Therefore, algorithm of Machine Learning has yielded that the so-called Omicron variant would no be coherent with known mutations neither exhibiting same pattern of previous waves of pandemic. This creates a space to speculate about the origin of new strains that are camouflaged to central corona virus. From the results of this work, it is observed that Omicron might have nothing to do with Covid-19 pandemic, instead it have triggered a small pandemic of short duration as validated by global data.
机器学习和贝叶斯概率在Covid-19浪潮中检测伪装的迷你大流行
本文提出了一种基于机器学习的方法和一种由贝叶斯概率支持的理论,以识别可能与冠状病毒不一致的罕见菌株。根据汤姆·米切尔对2021 - 2022年期间数据应用的标准,2022年初登记的感染分布将不符合2020年和2021年的大流行浪潮。因此,机器学习算法得出的结论是,所谓的欧米克隆变异与已知的突变不一致,也不会表现出与前几波大流行相同的模式。这就为推测伪装成中央冠状病毒的新毒株的起源创造了空间。从这项工作的结果来看,Omicron可能与Covid-19大流行无关,而是引发了全球数据验证的短时间小流行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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