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Three-way decisions based blocking reduction models in hierarchical classification

•Two three-way decisions based hierarchical classification models are proposed.•The ambiguity of hierarchy is noticed and 3WD is used to reduce the uncertainty.•The topic model is used to learn category relations.•The proposed models perform better than several hierarchical classification methods.•E...

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Bibliographic Details
Published in:Information sciences 2020-06, Vol.523, p.63-76
Main Authors: Shen, Wen, Wei, Zhihua, Li, Qianwen, Zhang, Hongyun, Miao, Duoqian
Format: Article
Language:English
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Summary:•Two three-way decisions based hierarchical classification models are proposed.•The ambiguity of hierarchy is noticed and 3WD is used to reduce the uncertainty.•The topic model is used to learn category relations.•The proposed models perform better than several hierarchical classification methods.•Extend the application domain of three-way decisions to fashion image classification. Hierarchical classification (HC) is effective when categories are organized hierarchically. However, the blocking problem makes the effect of hierarchical classification greatly reduced. Blocking means that samples are easily getting misclassified in high-level classifiers so that the samples are blocked at the high-level of the hierarchy. This issue is caused by the inconsistency between the artificially defined hierarchy and the actual hierarchy of the raw data. Another issue is that it is flippant to strictly process data following the hierarchy. Therefore, special treatment is required for some uncertain data. To address the first issue, we learn category relationships and modify the hierarchy. To address the second issue, we introduce three-way decisions (3WD) to targetedly deal with the ambiguous data. We extend original studies and propose two HC models based on 3WD, collectively referred to as TriHC, for carefully modifying the hierarchy to alleviate the blocking problem. The proposed TriHC model learns new category hierarchies by the following three steps: (1) mining category relations; (2) modifying category hierarchies according to the latent category relations; and (3) using 3WD to divide observed objects into three regions: positive region, boundary region, and negative region, and making decisions based on different strategies. Specifically, based on different category relation mining methods, there are two versions of TriHC, cross-level blocking priori knowledge based TriHC (CLPK-TriHC) and expert classifier based TriHC (EC-TriHC). The CLPK-TriHC model defines a cross-level blocking distribution matrix to mine the category relations between the higher and lower levels. To better exploit category hierarchical relations, the EC-TriHC model builds expert classifiers using topic model to learn latent category topics. Experimental results validate that the proposed methods can simultaneously reduce the blocking and improve the classification accuracy.
ISSN:0020-0255
1872-6291
DOI:10.1016/j.ins.2020.02.020