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Biclustering on expression data: A review

机译:表达数据集锦:综述

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Biclustering has become a popular technique for the study of gene expression data, especially for discovering functionally related gene sets under different subsets of experimental conditions. Most of biclustering approaches use a measure or cost function that determines the quality of biclusters. In such cases, the development of both a suitable heuristics and a good measure for guiding the search are essential for discovering interesting biclusters in an expression matrix. Nevertheless, not all existing biclustering approaches base their search on evaluation measures for biclusters. There exists a diverse set of biclustering tools that follow different strategies and algorithmic concepts which guide the search towards meaningful results. In this paper we present a extensive survey of biclustering approaches, classifying them into two categories according to whether or not use evaluation metrics within the search method: biclustering algorithms based on evaluation measures and non metric-based biclustering algorithms. In both cases, they have been classified according to the type of meta-heuristics which they are based on. (C) 2015 The Authors. Published by Elsevier Inc. This is an open access article under the CC BY license
机译:比对法已成为研究基因表达数据的流行技术,尤其是在实验条件的不同子集下发现功能相关的基因集。大多数二类聚类方法都使用一种度量或成本函数来确定二类聚类的质量。在这种情况下,开发合适的试探法和指导搜索的良好措施对于在表达矩阵中发现有趣的双词组至关重要。但是,并非所有现有的双聚类方法都基于双聚类的评估方法进行搜索。存在多种多样的双重聚类工具,它们遵循不同的策略和算法概念,可引导搜索朝着有意义的方向发展。在本文中,我们将对二类聚类方法进行广泛的调查,根据搜索方法中是否使用评估指标将它们分为两类:基于评估量的二类聚类算法和非基于度量的二类聚类算法。在这两种情况下,都已根据它们所基于的元启发法的类型对其进行了分类。 (C)2015作者。由Elsevier Inc.发行。这是CC BY许可下的开放访问文章

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