Covid-19 Forecasting Using CNN Approach With A Halbinomial Distribution And A Linear Decreasing Inertia Weight-Based Cat Swarm Optimization

R. Murugesan, Karthikeyan Madhu, Jayalakshmi Sambandam, L. Malliga
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Abstract

In recent times, the COVID-19 epidemic has spread to over 170 nations. Authorities all around the world are feeling the strain of COVID-19 since the total of infected people is rising as well as they does not familiar to handle the problem. The majority of current research effort is thus being directed on the analysis of COVID-19 data within the framework of the machines learning method. Researchers looked the COVID 19 data to make predictions about who would be treated, who would die, and who would get infected in the future. This might prompt governments worldwide to develop strategies for protecting the health of the public. Previous systems rely on Long Short- Term Memory (LSTM) networks for predicting new instances of COVID-19. The LSTM network findings suggest that the pandemic might be over by June of 2020. However, LSTM may have an over-fitting issue, and it may fall short of expectations in terms of true positive. For this issue in COVID-19 forecasting, we suggest using two methods such as Cat Swarm Optimization (CSO) for reducing the inertia weight linearly and then artificial intelligence based binomial distribution is used. In this proposed study, we take the COVID-19 predicting database as an contribution and normalise it using the min-max approach. The accuracy of classification is improved with the use of the first method to choose the optimal features. In this method, inertia weight is added to the CSO optimization algorithm convergence. Death and confirmed cases are predicted for a certain time period throughout India using Convolutional Neural Network with Partial Binomial Distribution based on carefully chosen characteristics. The experimental findings validate that the suggested scheme performs better than the baseline system in terms of f-measure, recall, precision, and accuracy.
基于Halbinomial分布和线性递减惯性权重的CNN方法预测Covid-19
近年来,新冠肺炎疫情已蔓延至170多个国家。由于感染人数不断增加,世界各国当局都感到了压力,而且他们不熟悉如何处理这个问题。因此,目前的大部分研究工作都集中在机器学习方法框架内对COVID-19数据的分析上。研究人员研究了COVID - 19的数据,以预测谁会接受治疗,谁会死亡,谁会在未来被感染。这可能促使世界各国政府制定保护公众健康的战略。以前的系统依赖于长短期记忆(LSTM)网络来预测新的COVID-19实例。LSTM网络的调查结果表明,大流行可能会在2020年6月结束。然而,LSTM可能存在过拟合问题,并且在真正方面可能达不到预期。针对COVID-19预测中的这一问题,我们建议使用Cat Swarm Optimization (CSO)等两种方法线性减小惯性权值,然后使用基于人工智能的二项分布。在本研究中,我们将COVID-19预测数据库作为贡献,并使用最小-最大方法对其进行归一化。采用第一种方法选择最优特征,提高了分类精度。该方法在CSO优化算法收敛性中加入惯性权值。根据精心选择的特征,使用部分二项分布的卷积神经网络预测整个印度某一时期的死亡和确诊病例。实验结果表明,该方案在f-measure、召回率、精密度和准确度方面都优于基线系统。
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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