A Matlab Toolbox For Grey Clustering Probability Model Of Postgraduate’s Innovative Ability

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Tang, Xiao-qing

A Matlab Toolbox For Grey Clustering Probability Model Of Postgraduate’s Innovative Ability Journal Article

Mechanics, Materials Science & Engineering, 3 (1), pp. 194-203, 2016, ISSN: 2412-5954.

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Author: Xiao-qing Tang

ABSTRACT. In this article, we propose a new grey clustering probability model. That is, grey whiteness function is the probability when score in the clustering. And the weight is the proportion of the thresholds. As an illustrative example, we use the toolboxes developed for carrying on an analysis of the test scores of postgraduate’s ability on innovation. The evaluation process successfully shows that the toolboxes are fairly convenient, quite efficient.

Keywords: grey clustering, probability model, Matlab toolbox

DOI 10.13140/RG.2.1.1682.6004

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