Classification Tasks Solving with Machine Learning Methods

Ginka Marinova, Maya P. Todorova
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Abstract

The subject of analysis and research is data in the field of medical oncology through machine learning methods. The types of classification in machine learning are presented, and three methods are described - K-Nearest Neighbors, Naive Bayes Classifier, Support Vector Machines. Two classification tasks in the field of medicine have been formulated, implemented, and researched. Classifiers are created and trained with the methods KNN, SVM, and NBC. The solved classification tasks aim to support patients and clinical psycho-oncologists.
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用机器学习方法解决分类任务
分析和研究的主题是通过机器学习方法在医学肿瘤学领域的数据。介绍了机器学习中的分类类型,并描述了三种方法:k近邻、朴素贝叶斯分类器和支持向量机。制定、实施和研究了医学领域的两项分类任务。使用KNN、SVM和NBC方法创建和训练分类器。解决的分类任务旨在为患者和临床心理肿瘤学家提供支持。
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