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首页> 外文期刊>International journal of machine learning and cybernetics >Granular matrix-based knowledge reductions of formal fuzzy contexts
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Granular matrix-based knowledge reductions of formal fuzzy contexts

机译:基于粒度矩阵的形式模糊上下文知识约简

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Knowledge reduction is an important issue in formal fuzzy contexts, which can simplify the structure of concept lattices. In this paper, a novel granular matrix-based for knowledge reduction of crisp-fuzzy concept is investigated. Firstly, matrix representations of extents and intents of concepts are defined, respectively, which are used to characterize the join-irreducible elements and propose the corresponding algorithm. In this framework, granular consistent set and granular reduct are developed. Then the judgement theorem of reduction and its corresponding algorithm in formal fuzzy context are proposed. Furthermore, we generalize the matrix approach to formal fuzzy decision contexts. Finally, numerical experiments are conducted to evaluate the effectiveness of the proposed approaches. Our methods present a new framework for knowledge reduction in formal fuzzy contexts.
机译:知识约简是形式模糊上下文中的一个重要问题,它可以简化概念格的结构。在本文中,研究了一种新颖的基于颗粒矩阵的用于减少酥脆概念知识的方法。首先,分别定义概念的程度和意图的矩阵表示形式,用于表征不可约连接元素并提出相应的算法。在此框架中,开发了粒度一致集和粒度归约。然后提出了形式模糊上下文中约简的判断定理及其对应的算法。此外,我们将矩阵方法推广到形式模糊决策上下文。最后,进行数值实验以评估所提出方法的有效性。我们的方法为形式模糊上下文中的知识约简提供了一个新的框架。

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