支持向量机在模式分类中的应用:在QSAR研究中的应用

R. Czerminski, A. Yasri, D. Hartsough
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引用次数: 95

摘要

用于分类和回归问题的支持向量机(SVM)方法最初是由Vapnik及其同事开发的[1]。在过去的几年里,它已经在机器学习社区中获得了认可[2]。本文的目的是评估SVM在分类应用的定量结构-活动关系(QSAR)领域中的性能,并比较SVM的一种特定实现[3]与人工神经网络(ANN)的一种特定实现[4]的性能。为此,我们使用了模拟各种反应面的人工数据,以及从涵盖各种药理学领域的文献中获得的生物学数据。在生物数据上获得的结果也与以前使用其他建模技术的工作进行了比较。我们还讨论了SVM在构建药物生物活性QSAR模型中的应用。
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Use of Support Vector Machine in Pattern Classification: Application to QSAR Studies
The Support Vector Machine (SVM) approach for classification and regression problems was originally developed by Vapnik and co-workers [1]. For the last few years it has been gaining acceptance in the machine learning community [2]. The purpose of this paper is to evaluate SVM performance in the quantitative structure-activity relationship (QSAR) domain for classification applications and to compare the performance of one particular implementation of an SVM [3] to one particular implementation of an artificial neural network (ANN) [4]. For this purpose, we used artificial data simulating various response surfaces, and biological data derived from the literature covering various pharmacological domains. The results obtained on biological data are also compared to previous work using other modeling techniques. We also discuss the usage of SVM in building QSAR models for biological activity of drugs.
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