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Rank Factor Granules with Fuzzy Collaborative Clustering and Factor Space Theory

机译:基于模糊协作聚类和因子空间理论的秩因子颗粒

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This paper makes a discussion on the ranking problem of factor granules where each granule is composed by three parts: the patterns, the factors and the factor- induced information. Hereinto, the factor-induced information refers to the pattern's attributes and the relationship between any two patterns. The overall ranking process is based on the ideology of fuzzy collaborative clustering, by considering a referential factor granule. The collaborative information, i.e. the partition matrices of factor granules, are used to collaborate the clustering for the referential factor granule. These collaborative information are obtained from di r erent sources by di r erent methods. Specially, one kind is obtained from the qualitative data by factor theory-based method. By comparing the difference of the referential factor granule before and after collaboration in aspect of clustering results, we can sort these factor granules: the little the difference, the closer to the top of the sequence.
机译:本文讨论了因子颗粒的排序问题,其中每个颗粒由三个部分组成:模式,因子和因子诱导信息。在此,因素诱导信息是指模式的属性以及任意两个模式之间的关系。总体排名过程基于模糊协作聚类的思想,并考虑了参考因子粒度。协作信息,即因子粒子的划分矩阵,用于协作对参考因子粒子进行聚类。这些协作信息是通过不同方法从不同来源获得的。特别地,通过基于因子理论的方法从定性数据中获得一种。通过在聚类结果方面比较协作前后参考因子粒子的差异,我们可以对这些因子粒子进行排序:差异越小,序列越接近顶部。

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