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The Hierarchical Classifier for COVID-19 Resistance Evaluation

机译:Covid-19电阻评估的分层分类器

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Finding dependencies in the data requires the analysis of relations between dozens of parameters of the studied process and hundreds of possible sources of influence on this process. Dependencies are nondeterministic and therefore modeling requires the use of statistical methods for analyzing random processes. Part of the information is often hidden from observation or not monitored. That is why many difficulties have arisen in the process of analyzing the collected information. The paper aims to find frequent patterns and parameters affected by COVID-19. The novelty of the paper is hierarchical architecture comprises supervised and unsupervised methods. It allows the development of an ensemble of the methods based on k-means clustering and classification. The best classifiers from the ensemble are random forest with 500 trees and XGBoost. Classification for separated clusters gives us higher accuracy on 4% in comparison with dataset analysis. The proposed approach can be used also for personalized medicine decision support in other domains. The features selection allows us to analyze the following features with the highest impact on COVID-19: age, sex, blood group, had influenza.
机译:在数据中寻找依赖关系需要分析研究过程的数十个参数和对该过程的数百种可能的影响源。依赖关系是非确定性的,因此建模需要使用统计方法来分析随机过程。部分信息通常隐藏在观察中或未被监视。这就是为什么在分析收集的信息的过程中出现了许多困难。纸张旨在找到受Covid-19影响的频繁模式和参数。本文的新颖性是等级架构,包括监督和无监督的方法。它允许基于K-Means聚类和分类的方法开发该方法的集合。来自集合的最好的分类器是随机森林,有500棵树和XGBoost。与数据集分析相比,分离群集的分类为4%提供了更高的准确性。所提出的方法也可用于其他领域的个性化医学决策支持。选择选择使我们能够分析以下特征,对Covid-19的最高影响:年龄,性别,血液组进行流感。

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