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首页> 外文期刊>International Journal of Bio-Inspired Computation >Protein classification via an ant-inspired association rules-based classifier
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Protein classification via an ant-inspired association rules-based classifier

机译:通过基于蚂蚁启发式关联规则的分类器对蛋白质进行分类

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摘要

Association rules mining and classification rules discovery are two important data mining techniques used to expose the relations among large sets of data items. The technique aims to find out the rules that satisfy the predefined minimum support and the confidence. Association rules mining has successfully been implemented in biomedical research and has demonstrated encouraging results in analysing the gene expression data in order to discover the relevant biological association among different genes, gene expression, and various protein properties like protein functionality and sequence similarity. In this paper, we applied the association rule mining technique - the ACO-AC to the problem of classifying proteins into its correct fold of the SCOP dataset. The technique combines the association rules mining and supervised classification mechanism using ant colony optimisation. Experimental results reveal the classifier performance in protein classification problem as excellent by identifying most accurate and compact rules.
机译:关联规则挖掘和分类规则发现是两种重要的数据挖掘技术,用于揭示大型数据项集之间的关系。该技术旨在找出满足预定最小支持和置信度的规则。关联规则挖掘已在生物医学研究中成功实施,并在分析基因表达数据方面显示出令人鼓舞的结果,从而发现了不同基因,基因表达以及各种蛋白质特性(如蛋白质功能和序列相似性)之间的相关生物学关联。在本文中,我们将关联规则挖掘技术-ACO-AC应用于将蛋白质分类为SCOP数据集的正确折叠的问题。该技术结合了使用蚁群优化的关联规则挖掘和监督分类机制。实验结果表明,通过识别最准确,最紧凑的规则,分类器在蛋白质分类问题中的表现非常出色。

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