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Feature Selection: Near Set Approach

机译:特征选择:近集方法

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The problem considered in this paper is how to select features that are useful in classifying perceptual objects that are qualitatively but not necessarily spatially near each other. The term qualitatively near is used here to mean closeness of descriptions or distinctive characteristics of objects. The solution to this problem is inspired by the work of Zdzislaw Pawlak during the early 1980s on the classification of objects. In working toward a solution of the problem of the classification of perceptual objects, this article introduces a near set approach to feature selection. Consideration of the nearness of objects has recently led to the introduction of what are known as near sets, an optimist's view of the approximation of sets of objects that are more or less near each other. Near set theory started with the introduction of collections of partitions (families of neighbourhoods) that provide a basis for a feature selection method based on the information content of the partitions of a. set of sample objects. A byproduct of the proposed approach is a feature filtering method that eliminates features that are less useful in the classification of objects. This contribution of this article is the introduction of a near set approach to feature selection.
机译:本文考虑的问题是如何选择对分类定性但不一定在空间上彼此靠近的感知对象有用的特征。定性接近在这里用于表示描述的紧密程度或物体的独特特征。 Zdzislaw Pawlak在1980年代初期所做的有关物体分类的工作启发了这一解决方案。在解决感知对象分类问题的过程中,本文介绍了一种用于特征选择的近集方法。考虑到对象的接近性最近导致了所谓的近集的引入,这是一种乐观主义者对彼此或多或少彼此接近的对象集的逼近的观点。近集理论始于引入分区(邻居家庭)集合,这些集合为基于a的分区信息内容的特征选择方法提供了基础。样本对象集。所提出方法的副产品是一种特征过滤方法,该方法消除了在对象分类中不太有用的特征。本文的主要作用是介绍了一种用于特征选择的近集方法。

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