采用Fisher核方法检测远端蛋白同源性。

T Jaakkola, M Diekhans, D Haussler
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引用次数: 0

摘要

本文介绍了一种新的检测蛋白同源性的方法,即Fisher核方法,该方法在利用SCOP超家族对蛋白结构域进行分类方面表现良好。该方法是支持向量机的一种变体,使用了一个新的核函数。核函数由隐马尔可夫模型推导而来。将生成模型(如hmm)与判别方法(如支持向量机)相结合的一般方法也可以应用于生物序列分析的其他领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using the Fisher kernel method to detect remote protein homologies.

A new method, called the Fisher kernel method, for detecting remote protein homologies is introduced and shown to perform well in classifying protein domains by SCOP superfamily. The method is a variant of support vector machines using a new kernel function. The kernel function is derived from a hidden Markov model. The general approach of combining generative models like HMMs with discriminative methods such as support vector machines may have applications in other areas of biosequence analysis as well.

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