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Measures of uncertainty for neighborhood rough sets

机译:邻域粗糙集不确定性的度量

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Uncertainty measures are critical evaluating tools in machine learning fields, which can measure the dependence and similarity between two feature subsets and can be used to judge the significance of features in classifying and clustering algorithms. In the classical rough sets, there are some uncertainty tools to measure a feature subset, including accuracy, roughness, information entropy, rough entropy, etc. These measures are applicable to discrete-valued information systems, but not suitable to real-valued data sets. In this paper, by introducing the neighborhood rough set model, each object is associated with a neighborhood subset, named a neighborhood granule. Several uncertainty measures of neighborhood granules are proposed, which are neighborhood accuracy, information quantity, neighborhood entropy and information granularity in the neighborhood systems. Furthermore, we prove that these uncertainty measures satisfy non-negativity, invariance and monotonicity. The maximum and minimum of these measures are also given. Theoretical analysis and experimental results show that information quantity, neighborhood entropy and information granularity measures are better than the neighborhood accuracy measure in the neighborhood systems. (C) 2017 Elsevier B.V. All rights reserved.
机译:不确定性度量是机器学习领域中的关键评估工具,它可以度量两个特征子集之间的相关性和相似性,并且可以用来判断特征在分类和聚类算法中的重要性。在经典的粗糙集中,存在一些不确定性工具来测量特征子集,包括准确性,粗糙度,信息熵,粗糙熵等。这些度量适用于离散值信息系统,但不适用于实值数据集。在本文中,通过介绍邻域粗糙集模型,每个对象都与一个邻域子集相关联,称为邻域颗粒。提出了几种邻域粒子的不确定性度量,即邻域系统中的邻域精度,信息量,邻域熵和信息粒度。此外,我们证明了这些不确定性度量满足非负性,不变性和单调性。还给出了这些措施的最大值和最小值。理论分析和实验结果表明,在邻域系统中,信息量,邻域熵和信息粒度度量优于邻域精度度量。 (C)2017 Elsevier B.V.保留所有权利。

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