冠状病毒疾病外推的机器学习方法:案例研究

Kadali Dileep Kumar, N.V.Jagan Mohan Dr. Remani, Neelamadhab Padhy, S. C. Satapathy, Nagesh Salimath, Rahul Deo Sah
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引用次数: 0

摘要

有监督/无监督机器学习过程是数据挖掘和大数据领域的一种流行方法。利用COVID-19健康数据进行的冠状病毒疾病评估最近揭示了这些方法的潜在应用领域。本研究对K-Means聚类程序的各种监测无监督机器学习中的显著倾向及其在疾病绩效评估中的功能和用途进行了分类。在此,我们提出了结构风险最小化意味着影响分类效率的一系列问题,包括改变训练数据作为输入空间的特征、自然环境以及分类和学习过程的结构。上述三个问题提高了轨迹聚类数据预测实验冠状病毒的广阔视角,以控制线性分类能力,并向每个个体发出线索。k均值聚类是一种有效的冠状病毒数据内嵌计算方法。它是利用超平面分离数据库中的未知变量,用于疾病检测过程。该病毒可以减少所提出的K-means编程模型,使用基于距离的最近邻分类,通过将患者记录的子组分类为输入,在超平面的帮助下映射数据。冠状病毒数据的线性回归和逻辑回归可以提供估值,追踪疾病凭据是一种尝试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning approach for corona virus disease extrapolation: A case study
Supervised/unsupervised machine learning processes are a prevalent method in the field of Data Mining and Big Data. Corona Virus disease assessment using COVID-19 health data has recently exposed the potential application area for these methods. This study classifies significant propensities in a variety of monitored unsupervised machine learning of K-Means Cluster procedures and their function and use for disease performance assessment. In this, we proposed structural risk minimization means that a number of issues affect the classification efficiency that including changing training data as the characteristics of the input space, the natural environment, and the structure of the classification and the learning process. The three problems mentioned above improve the broad perspective of the trajectory cluster data prediction experimental coronavirus to control linear classification capability and to issue clues to each individual. K-Means Clustering is an effective way to calculate the built-in of coronavirus data. It is to separate unknown variables in the database for the disease detection process using a hyperplane. This virus can reduce the proposed programming model for K-means, map data with the help of hyperplane using a distance-based nearest neighbor classification by classifying subgroups of patient records into inputs. The linear regression and logistic regression for coronavirus data can provide valuation, and tracing the disease credentials is trial.
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