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Feature Selection Using Fuzzy Neighborhood Entropy-Based Uncertainty Measures for Fuzzy Neighborhood Multigranulation Rough Sets

机译:特征选择采用模糊邻熵的模糊邻域多金属粗糙集的不确定性措施

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摘要

For heterogeneous data sets containing numerical and symbolic feature values, feature selection based on fuzzy neighborhood multigranulation rough sets (FNMRS) is a very significant step to preprocess data and improve its classification performance. This article presents an FNMRS-based feature selection approach in neighborhood decision systems. First, some concepts of fuzzy neighborhood rough sets and neighborhood multigranulation rough sets are given, and then the FNMRS model is investigated to construct uncertainty measures. Second, the optimistic and pessimistic FNMRS models are built by using fuzzy neighborhood multigranulation lower and upper approximations from algebra view, and some fuzzy neighborhood entropy-based uncertainty measures are developed in information view. Inspired by both algebra and information views based on the FNMRS model, the fuzzy neighborhood pessimistic multigranulation entropy is proposed. Third, the Fisher score model is utilized to delete irrelevant features to decrease the complexity of high-dimensional data sets, and then, a forward feature selection algorithm is provided to promote the performance of heterogeneous data classification. Experimental results on 12 data sets show that the presented model is effective for selecting important features with the higher stability of classification in neighborhood decision systems.
机译:对于包含数值和符号特征值的异构数据集,基于模糊邻域多密码粗糙集(FNMRS)的特征选择是预处理数据的非常重要的步骤并提高其分类性能。本文介绍了邻里决策系统中基于FNMRS的特征选择方法。首先,给出了一些模糊社区粗糙集和邻域多金属粗糙集的概念,然后研究了FNMRS模型以构建不确定性措施。其次,乐观和悲观的FNMRS模型是通过使用代数视图的模糊邻域多密度的较低和上逼近构建的,并且在信息视图中开发了一些基于模糊的邻域的不确定性措施。基于FNMRS模型的代数和信息视图的启发,提出了模糊的邻域悲观多元体熵。第三,利用Fisher评分模型来删除无关的特征以降低高维数据集的复杂性,然后,提供了前向特征选择算法以促进异构数据分类的性能。 12个数据集的实验结果表明,所提出的模型对于在邻域决策系统中选择具有更高分类稳定性的重要特征是有效的。

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