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Understanding the Prediction of Transmembrane Proteins by Support Vector Machine using Association Rule Mining

机译:使用关联规则挖掘,通过支持向量机了解跨膜蛋白的预测

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With the efforts to understand protein structure, many computational approaches have been made recently. Among them, the support vector machine (SVM) methods have been recently applied and showed successful performance compared with other machine learning schemes. However, despite the high performance, the SVM approaches suffer from the problem of understandability since it is a black-box model. To overcome this limitation, this study attempted to combine the SVM with the association rule based classifier which can present the meaningful explanation about the prediction. To perform this task, a new association rule based classifier (PCPAR) was devised based on the existing classifier, CPAR, to handle the sequential data. PCPAR creates the patterns by merging the generated rules and then classifies the sequential data based on the pattern match. The experimental result presents the following: with sequential data, the PCPAR scheme shows better performance with respect to the accuracy and the number of generated patterns than CPAR method whether applied alone or combined with SVM. The combined scheme of SVMPCPAR generates more compact patterns than the combined scheme of SVM with decision tree, SVM DT, with similar performance. These patterns are easily understandable and biologically meaningful
机译:通过努力理解蛋白质结构,最近已经进行了许多计算方法。其中,最近已经应用了支持向量机(SVM)方法,与其他机器学习方案相比,该方法显示出成功的性能。然而,尽管具有高性能,但由于SVM方法是黑盒模型,因此仍存在易懂性的问题。为了克服这一局限性,本研究尝试将SVM与基于关联规则的分类器结合起来,从而可以提供有关预测的有意义的解释。为了执行此任务,基于现有分类器CPAR设计了一个新的基于关联规则的分类器(PCPAR),以处理顺序数据。 PCPAR通过合并生成的规则来创建模式,然后根据模式匹配对顺序数据进行分类。实验结果表明:与单独使用或与SVM组合使用的CPAR方法相比,对于连续数据,PCPAR方案在准确性和生成模式数量方面表现出更好的性能。与具有决策树的SVM DT组合方案相比,SVMPCPAR的组合方案可生成更紧凑的模式,并且具有相似的性能。这些模式易于理解且具有生物学意义

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