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Estimating the Class Posterior Probabilities in Protein Secondary Structure Prediction

机译:估算蛋白质二级结构预测中的阶级后概率

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Support vector machines, let them be bi-class or multi-class. have proved efficient for protein secondary structure prediction. They can be used either as sequence-to-structure classifier, structure-to-structure classifier, or both. Compared to the classifier most commonly found in the main prediction methods, the multi-layer perceptron, they exhibit one single drawback: their outputs are not class posterior probability estimates. This paper addresses the problem of post-processing the outputs of multi-class support vector machines used as sequence-to-structure classifiers with a structure-to-structure classifier estimating the class posterior probabilities. The aim of this comparative study is to obtain improved performance with respect to both criteria: prediction accuracy and quality of the estimates.
机译:支持向量机,让它们是双级或多级。已证明蛋白质二级结构预测有效。它们可以用作序列到结构分类器,结构与结构分类器或两者。与主要预测方法中最常见的分类器相比,它们表现出一个单层缺点:它们的输出不是类后概率估计。本文解决了用作序列到结构分类器的多级支持向量机输出的问题,其具有估计类后续概率的结构 - 结构分类器。该比较研究的目的是获得关于两个标准的改进性能:预测准确性和估计的质量。

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