From numeric data to information granules: A design through clustering and the principle of justifiable granularity

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Designing information granules used intensively in Granular Computing is of paramount relevance to the fundamentals of the discipline. Information granules are key functional components in granular models, granular classifiers, and granular decision-making models. The design of information granules is central to the discipline of Granular Computing. In this study, we introduce a way of designing information granules by combining the mechanisms of unsupervised and supervised learning and subsequently using the principle of justifiable granularity. An overall design process consists of two phases. First, the granulation process involves hierarchical clustering or K-means clustering. It is followed by a parametric refinement of information granules realized by the principle of justifiable granularity. The characterization of information granules is offered in terms of measures of coverage, specificity, and entropy. Experimental results including synthetic data and publicly available data are covered to demonstrate the performance of the proposed approach.

论文关键词:Granular computing,Granular data,Information content of information granules,Principle of justifiable granularity,Clustering

论文评审过程:Received 6 November 2015, Revised 21 February 2016, Accepted 13 March 2016, Available online 17 March 2016, Version of Record 16 April 2016.

论文官网地址:https://doi.org/10.1016/j.knosys.2016.03.012