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Query-Adaptive Ranking with Support Vector Machines for Protein Homology Prediction

机译:支持向量机的蛋白质同源性预测查询自适应排序

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Protein homology prediction is a crucial step in template-based protein structure prediction. The functions that rank the proteins in a database according to their homologies to a query protein is the key to the success of protein structure prediction. In terms of information retrieval, such functions are called ranking functions, and are often constructed by machine learning approaches. Different from traditional machine learning problems, the feature vectors in the ranking-function learning problem are not identically and independently distributed, since they are calculated with regard to queries and may vary greatly in statistical characteristics from query to query. At present, few existing algorithms make use of the query-dependence to improve ranking performance. This paper proposes a query-adaptive ranking-function learning algorithm for protein homology prediction. Experiments with the support vector machine (SVM) used as the benchmark learner demonstrate that the proposed algorithm can significantly improve the ranking performance of SVMs in the protein homology prediction task.
机译:蛋白质同源性预测是基于模板的蛋白质结构预测中的关键步骤。根据蛋白质与查询蛋白质的同源性对蛋白质进行排序的功能是成功预测蛋白质结构的关键。在信息检索方面,此类功能称为排名功能,通常是通过机器学习方法构建的。与传统的机器学习问题不同,排名函数学习问题中的特征向量不是相同且独立分布的,因为它们是针对查询进行计算的,并且统计特征可能因查询而异。当前,很少有现有算法利用查询相关性来提高排名性能。提出了一种用于蛋白质同源性预测的查询自适应排序功能学习算法。以支持向量机(SVM)为基准学习器进行的实验表明,该算法可以大大提高SVM在蛋白质同源性预测任务中的排名性能。

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