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Understanding Protein Structure Prediction Using SVM DT

机译:使用SVM DT了解蛋白质结构预测

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摘要

The explanation of a decision made is important for the acceptance of machine learning technology, especially for such applications as bioinfor-matics. Support vector machines (SVM) have shown strong generalization ability in a number of application areas, including protein structure prediction. However, it is a black box model. On the other hand, a decision tree has good comprehensibility. In this paper, a novel approach to rule generation for understanding protein secondary structure prediction by integrating merits of both support vector machine and decision tree is presented. This approach combines SVM with decision tree into a new algorithm called SVM_DT. The results of the experiments of protein secondary structure prediction on RSI26 data sets show that the comprehensibility of SVM_DT is much better than that of SVM. Moreover, the generalization ability of SVM_DT is better than that of decision tree and is similar to that of SVM. Hence, SVM_DT can be used not only for prediction, but also for guiding biological experiments.
机译:做出决定的解释对于接受机器学习技术非常重要,尤其是对于诸如生物信息学等应用程序而言。支持向量机(SVM)在包括蛋白质结构预测在内的许多应用领域中都显示出强大的概括能力。但是,它是黑匣子模型。另一方面,决策树具有良好的可理解性。本文提出了一种通过融合支持向量机和决策树的优点来理解蛋白质二级结构预测的规则生成新方法。这种方法将SVM与决策树结合在一起,成为一种称为SVM_DT的新算法。在RSI26数据集上进行蛋白质二级结构预测的实验结果表明,SVM_DT的可理解性比SVM更好。此外,SVM_DT的泛化能力优于决策树,并且与SVM相似。因此,SVM_DT不仅可以用于预测,还可以用于指导生物学实验。

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