An Analysis of Methods for Tuning a Support-Vector Machine for Binary Classification


如何引用文章

全文:

开放存取 开放存取
受限制的访问 ##reader.subscriptionAccessGranted##
受限制的访问 订阅存取

详细

Using methods based on support-vector machines (SVMs), it is possible to handle voluminous, high-dimensional, and poorly structured datasets, which is especially important in finding solutions for predictions in bioinformatics. In this paper, we discuss the key stage in designing support-vector machines, namely, how to choose the model. Methods for tuning support-vector machines were analyzed for binary classification. Two alternative approaches, that is, the gradient-based method and the derivative-free method of stochastic searching, were considered and performed for determination of the best values of hyperparameters. The quality performance of the support-vector classifiers obtained using the above-mentioned methods is investigated on the basis of benchmark data. The nested resampling technique is used to improve the accuracy of model evaluation. The results show the effectiveness of the chosen model-selection method for binary classification.

作者简介

N. Kadyrova

Institute of Applied Mathematics and Mechanics, Peter the Great St. Petersburg Polytechnical University

编辑信件的主要联系方式.
Email: natalia.kadyrova@gmail.com
俄罗斯联邦, St. Petersburg, 195251

L. Pavlova

Institute of Applied Mathematics and Mechanics, Peter the Great St. Petersburg Polytechnical University

Email: natalia.kadyrova@gmail.com
俄罗斯联邦, St. Petersburg, 195251

补充文件

附件文件
动作
1. JATS XML

版权所有 © Pleiades Publishing, Inc., 2018