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An effective measure for assessing the quality of biclusters

机译:评估双簇质量的有效措施

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Biclustering is becoming a popular technique for the study of gene expression data. This is mainly due to the capability of biclustering to address the data using various dimensions simultaneously, as opposed to clustering, which can use only one dimension at the time. Different heuristics have been proposed in order to discover interesting biclusters in data. Such heuristics have one common characteristic: they are guided by a measure that determines the quality of biclusters. It follows that defining such a measure is probably the most important aspect. One of the popular quality measure is the mean squared residue (MSR). However, it has been proven that MSR fails at identifying some kind of patterns. This motivates us to introduce a novel measure, called virtual error (VE), that overcomes this limitation. Results obtained by using VE confirm that it can identify interesting patterns that could not be found by MSR.
机译:双簇正在成为研究基因表达数据的流行技术。这主要是由于能够同时使用多种维度来对数据进行聚类,而不是同时只能使用一个维度的聚类。为了发现数据中有趣的二元组,已经提出了不同的启发式方法。这种启发式方法具有一个共同的特征:它们由确定双簇质量的度量来指导。由此可见,定义这样一种措施可能是最重要的方面。最受欢迎的质量度量之一是均方差(MSR)。但是,已证明MSR无法识别某种模式。这激励我们引入一种克服了这一局限性的新方法,称为虚拟错误(VE)。使用VE获得的结果证实,它可以识别MSR找不到的有趣模式。

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