Exploring the Stability of Feature Selection Methods across a Palette of Gene Expression Datasets

Zahra Mungloo-Dilmohamud, Y. Jaufeerally-Fakim, C. Peña-Reyes
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引用次数: 4

Abstract

Gene expression data often need to be classified into classes or grouped into clusters for further analysis, using different machine learning techniques and an important pre-processing step is feature selection (FS). The aim of this study is to investigate the stability of some diverse FS methods on a plethora of microarray gene expression data. This experimental work is broken into three parts. Step 1 involves running some FS methods on one gene expression dataset to have a preliminary assessment on the similarity, or dissimilarity, of the resulting feature subsets across methods. Step 2 involves running two of these methods on a large number of different datasets to investigate whether the results produced by the methods are dependent on the features of the dataset: binary, multiclass, small or large dataset. The final step explores how the similarity of selected feature subsets between pairs of methods evolves as the size of the subsets are increased. Results show that the studied methods display a high amount of variability in terms of the resulting selected features. The feature subsets differed both inter- and intra- methods for different datasets. The reason behind this is not clear yet and is being further investigated. The final objective of the research, that is to define how to select a FS method, is an ongoing work whose initial findings are reported herein.
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探索跨基因表达数据集调色板特征选择方法的稳定性
为了进一步分析,基因表达数据通常需要使用不同的机器学习技术进行分类或分组,一个重要的预处理步骤是特征选择(FS)。本研究的目的是研究一些不同的FS方法在大量微阵列基因表达数据上的稳定性。这项实验工作分为三个部分。第1步涉及在一个基因表达数据集上运行一些FS方法,以对不同方法产生的特征子集的相似性或不相似性进行初步评估。步骤2涉及在大量不同的数据集上运行其中两种方法,以调查方法产生的结果是否依赖于数据集的特征:二进制、多类、小型或大型数据集。最后一步探索方法对之间所选特征子集的相似性如何随着子集大小的增加而演变。结果表明,所研究的方法在结果选择的特征方面显示出大量的可变性。对于不同的数据集,特征子集之间的方法和内部的方法是不同的。这背后的原因尚不清楚,正在进一步调查。研究的最终目标是定义如何选择FS方法,这是一项正在进行的工作,本文报告了其初步发现。
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