Kernel Parameter Tuning to Tweak the Performance of Classifiers for Identification of Heart Diseases

Anurag Dhankhar, Sapna Juneja, Abhinav Juneja, V. Bali
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引用次数: 15

Abstract

Medical data analysis is being recognized as a field of enormous research possibilities due to the fact there is a huge amount of data available and prediction in initial stage may save patient lives with timely intervention. With machine learning, a particular algorithm may be created through which any disease may be predicted well in advance on the basis of its feature sets or its symptoms can be detected. With respect to this research work, heart disease will be predicted with support vector machine that falls under the category of supervised machine learning algorithm. The main idea of this study is to focus on the significance of parameter tuning to elevate the performance of classifier. The results achieved were then compared with normal classifier SVM before tuning the parameters. Results depict that the hyperparameters tuning enhances the performance of the model. Finally, results were calculated by using various validation metrics.
核参数调优调整心脏疾病分类器的性能
医学数据分析被认为是一个具有巨大研究可能性的领域,因为有大量的可用数据,在早期阶段进行预测,及时干预可能挽救患者的生命。通过机器学习,可以创建一个特定的算法,通过该算法可以根据其特征集提前预测任何疾病,或者可以检测到其症状。在这项研究工作中,将使用支持向量机来预测心脏病,支持向量机属于监督式机器学习算法的范畴。本研究的主要思想是关注参数调优对提高分类器性能的意义。在调整参数之前,将得到的结果与正常分类器SVM进行比较。结果表明,超参数整定提高了模型的性能。最后,使用各种验证指标计算结果。
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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