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An improved fuzzy mutual information feature selection for classification systems

机译:分类系统的一种改进的模糊互信息特征选择

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Classification systems are sensitive to input data, especially for datasets with a lot of undesirable features. Selecting relevant features and avoiding irrelevant or redundant features builds effective systems. Fuzzy Mutual Information measures the relevance and redundancy of features. Although it can deal directly with continuous data without discretization, it still requires more computation and storage space. In this paper, we propose an improved fuzzy mutual information to solve this problem. Furthermore, we integrate it with normalized max-relevance and min-redundancy (mRMR) approach. It does not only select the relevant features but also avoids the redundancies with respect to the domination between them. Our experiment was evaluated according to storage, stability, classification accuracy, and the number of selected features. Based on 12 benchmark datasets, experimental results confirm that our proposed method achieved better results.
机译:分类系统对输入数据敏感,特别是对于具有许多不良功能的数据集。选择相关功能并避免不相关或多余的功能可构建有效的系统。模糊互信息度量功能的相关性和冗余性。尽管它可以直接处理连续数据而无需离散化,但仍然需要更多的计算和存储空间。在本文中,我们提出了一种改进的模糊互信息来解决这个问题。此外,我们将其与标准化的最大相关度和最小冗余度(mRMR)方法集成在一起。它不仅选择相关特征,而且避免了在它们之间的支配方面的冗余。根据存储,稳定性,分类准确性和所选功能的数量对我们的实验进行了评估。基于12个基准数据集,实验结果证实了我们提出的方法取得了更好的结果。

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