TL;DR
V3H introduces a novel multi-view clustering method that leverages view variation and heredity concepts from genetics to effectively utilize both unique and consistent information in incomplete multi-view data, improving clustering accuracy.
Contribution
It is the first to incorporate genetics-inspired view variation and heredity concepts into multi-view clustering, enhancing the integration of incomplete views.
Findings
Outperforms state-of-the-art methods on 15 benchmark datasets.
Effectively captures both unique and consistent information across views.
Reduces impact of data incompleteness through low-rank data structure recovery.
Abstract
Real data often appear in the form of multiple incomplete views. Incomplete multi-view clustering is an effective method to integrate these incomplete views. Previous methods only learn the consistent information between different views and ignore the unique information of each view, which limits their clustering performance and generalizations. To overcome this limitation, we propose a novel View Variation and View Heredity approach (V3H). Inspired by the variation and the heredity in genetics, V3H first decomposes each subspace into a variation matrix for the corresponding view and a heredity matrix for all the views to represent the unique information and the consistent information respectively. Then, by aligning different views based on their cluster indicator matrices, V3H integrates the unique information from different views to improve the clustering performance. Finally, with…
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