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Experimental Study of different FSAs in Classifying Protein Function

机译:不同FSA在分类蛋白质功能中的实验研究

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This paper addresses one of the challenges of machine learning in improving performance through feature selection algorithms (FSAs). Application of FSAs in the bioinformatics domain has become a necessity due to enormous growth of public sequence databases. This paper provides an experimental framework on the use of Rough Set Theory (RST) as FSAs in finding minimal feature subsets for classifying protein function. In experimenting RST, three different recent models are explored; Correlation Feature Selection (CFS), FCBF (Fast Correlation-Based Filter) and Artificial Immune System (AIS). The experimental study for these FSAs are based on four criteria: the accuracy (AC), the area under ROC graph (ROC), the length of the reducts (ARL), and the time taken (TT). Classification was performed on the reduced feature set using the Support Vector Machine algorithm. The results demonstrate that CFS and FCBF performs better if the main objectives are to measure the accuracy and ROC, however in terms of duration and rule length, RST is a better choice.
机译:本文通过特征选择算法(FSAS)来解决机器学习提高性能的一个挑战。由于公共序列数据库巨大增长,FSA在生物信息域中的应用成为必需品。本文提供了在寻找用于分类蛋白质功能的最小特征子集中的FSA时使用粗糙集理论(RST)的实验框架。在实验RST中,探索了三种不同的最新模型;相关特征选择(CFS),FCBF(基于快相关的过滤器)和人工免疫系统(AIS)。对这些FSA的实验研究基于四个标准:精度(AC),ROC图(ROC)下的区域,减少的长度(ARL),以及所花费的时间(TT)。使用支持向量机算法对缩小功能集进行分类。结果表明,如果主要目标是测量准确性和ROC,则CFS和FCBF更好地执行更好,但在持续时间和规则长度方面,RST是更好的选择。

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