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A comparative analysis of feature selection stability measures

机译:特征选择稳定性测度的比较分析

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Now-a-days, data mining become indispensable for business organizations for decision making, which makes use of the information from huge amount of archived data. Due to the advancements in information technology, there will be proliferation of extremely high-dimensional data. Feature selection manages the "curse of dimensionality" as it is an important dimensionality reduction technique. Recently, Stability or robustness of feature selection methods becomes a hot topic of interest for researchers. Feature selection stability is the measure of the sensitivity of feature selection algorithms for the slight perturbations in the experimental dataset. There are various selection stability measures which have been used to measure the stability of feature selection algorithms based on the result sets. This paper gives an account of various selection stability measures and also the merits and demerits of each stability measure that have been explored using a set of experimental datasets.
机译:如今,数据挖掘已成为企业进行决策的必不可少的工具,它可以利用来自大量已归档数据的信息。由于信息技术的进步,极高维度的数据将会泛滥。特征选择管理“维数的诅咒”,因为它是一种重要的降维技术。最近,特征选择方法的稳定性或鲁棒性成为研究人员关注的热点话题。特征选择稳定性是特征选择算法对实验数据集中轻微扰动的敏感性的度量。有多种选择稳定性度量用于根据结果集度量特征选择算法的稳定性。本文介绍了各种选择稳定性测度,以及使用一组实验数据集探索的每种稳定性测度的优缺点。

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