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A comparison of mutual and fuzzy-mutual information-based feature selection strategies

机译:基于互信息和模糊互信息的特征选择策略比较

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It is very important to select a small set of relevant features from a high dimensional data set and useful to design either an effective classification or prediction model. This procedure involves a series of estimations of the relationship between each pair of variables and between each variable and class labels. Mutual information is widely used to estimate these relationships. However, alternative strategies may be useful to estimate the mutual information with continuous or hybrid data. In this study, we attempt to evaluate the difference between the selection strategies involved with mutual information and fuzzy mutual information. The results indicate that using fuzzy mutual information is more helpful to obtain more stable feature sets and more accurate estimations of the relationship between two variables.
机译:从高维数据集中选择一小套相关特征非常重要,这对于设计有效的分类或预测模型很有用。此过程涉及对每个变量对之间以及每个变量与类标签之间的关系的一系列估计。相互信息被广泛用于估计这些关系。但是,替代策略可能对评估具有连续数据或混合数据的互信息可能有用。在这项研究中,我们试图评估相互信息涉及的选择策略与模糊相互信息之间的差异。结果表明,使用模糊互信息更有助于获得更稳定的特征集和两个变量之间关系的更准确估计。

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