2024
DOI: 10.38007/ijssem.2024.050104
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Low Rank Representation Subspace Clustering Algorithm Based on Hessian Regularization and Non Negative Constraints

Abstract: Existing low rank representation methods do not fully utilize the local structural features of data, resulting in problems such as loss of local similarity during the learning process. This paper proposed to use the low rank representation subspace clustering algorithm based on Hessian regularization and non-negative constraint (LRR-HN), to explore the overall and local structures of data. Firstly, the high predictability of Hessian regularization was fully utilized to preserve the local manifold structure of … Show more

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