TL;DR
This paper introduces a scalable multi-view clustering method that effectively handles incomplete data by aligning structures across views, improving clustering accuracy and efficiency on large-scale datasets.
Contribution
The paper proposes a novel structure alignment framework for incomplete multi-view clustering that addresses anchor misalignment and inter-view discrepancy issues.
Findings
Outperforms existing methods on seven benchmark datasets.
Achieves linear time and space complexity with respect to sample size.
Demonstrates improved clustering accuracy and robustness.
Abstract
The success of existing multi-view clustering (MVC) relies on the assumption that all views are complete. However, samples are usually partially available due to data corruption or sensor malfunction, which raises the research of incomplete multi-view clustering (IMVC). Although several anchor-based IMVC methods have been proposed to process the large-scale incomplete data, they still suffer from the following drawbacks: i) Most existing approaches neglect the inter-view discrepancy and enforce cross-view representation to be consistent, which would corrupt the representation capability of the model; ii) Due to the samples disparity between different views, the learned anchor might be misaligned, which we referred as the Anchor-Unaligned Problem for Incomplete data (AUP-ID). Such the AUP-ID would cause inaccurate graph fusion and degrades clustering performance. To tackle these issues,…
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