2022
DOI: 10.1155/2022/2895338
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A Belief Two-Level Weighted Clustering Method for Incomplete Pattern Based on Multiview Fusion

Abstract: Incomplete pattern clustering is a challenging task because the unknown attributes of the missing data introduce uncertain information that affects the accuracy of the results. In addition, the clustering method based on the single view ignores the complementary information from multiple views. Therefore, a new belief two-level weighted clustering method based on multiview fusion (BTC-MV) is proposed to deal with incomplete patterns. Initially, the BTC-MV method estimates the missing data by an attribute-level… Show more

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