用于特征选择和原型学习的局部分布式粗糙集模型

IF 3.2 1区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS Fuzzy Sets and Systems Pub Date : 2024-09-30 DOI:10.1016/j.fss.2024.109137
Shuang An , Yanhua Song , Changzhong Wang , Ge Guo
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引用次数: 0

摘要

邻域粗糙集(NRS)理论是一种基于邻域理论处理数据不确定性的工具,已成功应用于特征选择和分类建模。在实际应用中,数据分布往往呈现出明显的密度变化,这给经典的 NRS 模型带来了挑战。为了解决这个问题,本研究提出了一种局部分布式粗糙集(DRS)模型,它可以自适应地为每个样本选择邻域半径,并设计相应的数据缩减算法。本研究首先介绍了分布式邻域的概念,然后探讨了基于分布式邻域的局部分布式粗糙集模型。该模型可根据本地分布信息为每个样本动态确定合适的邻域半径。此外,还总结并证明了 DRS 模型的某些特性。随后,基于 DRS 模型开发了特征选择和样本缩减算法。实验结果证明了这些算法的有效性和高效性,表明所设计的 DRS 模型既可行又可推广。
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A locally distributed rough set model for feature selection and prototype learning
Neighborhood rough set (NRS) theory is a tool for handling data uncertainty based on neighborhood theory and has been successfully applied to feature selection and classification modeling. In practical applications, the data distribution often exhibits significant density variations, posing a challenge to the classical NRS model. To address this issue, this study proposes a locally distributed rough set (DRS) model that can adaptively select the neighborhood radius for each sample and designs data reduction algorithms accordingly. In this work, the concept of distributed neighborhood is introduced, followed by an exploration of a locally distributed rough set model based on distributed neighborhood. This model can dynamically determine the appropriate neighborhood radius for each sample based on local distribution information. Additionally, certain properties of the DRS model are summarized and proven. Subsequently, feature selection and sample reduction algorithms are developed based on the DRS model. Experimental results demonstrate the effectiveness and efficiency of these proposed algorithms, indicating that the designed DRS model is both feasible and generalizable.
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来源期刊
Fuzzy Sets and Systems
Fuzzy Sets and Systems 数学-计算机:理论方法
CiteScore
6.50
自引率
17.90%
发文量
321
审稿时长
6.1 months
期刊介绍: Since its launching in 1978, the journal Fuzzy Sets and Systems has been devoted to the international advancement of the theory and application of fuzzy sets and systems. The theory of fuzzy sets now encompasses a well organized corpus of basic notions including (and not restricted to) aggregation operations, a generalized theory of relations, specific measures of information content, a calculus of fuzzy numbers. Fuzzy sets are also the cornerstone of a non-additive uncertainty theory, namely possibility theory, and of a versatile tool for both linguistic and numerical modeling: fuzzy rule-based systems. Numerous works now combine fuzzy concepts with other scientific disciplines as well as modern technologies. In mathematics fuzzy sets have triggered new research topics in connection with category theory, topology, algebra, analysis. Fuzzy sets are also part of a recent trend in the study of generalized measures and integrals, and are combined with statistical methods. Furthermore, fuzzy sets have strong logical underpinnings in the tradition of many-valued logics.
期刊最新文献
General multifractal dimensions of measures Subsethood measures based on cardinality of type-2 fuzzy sets Lattice-valued coarse structures A note on t-norms having additive generators Subresiduated Nelson algebras
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