Elastic Net Hypergraph Learning for Image Clustering and Semi-supervised Classification
Qingshan Liu, Yubao Sun, Cantian Wang, Tongliang Liu, Dacheng Tao

TL;DR
This paper introduces an elastic net hypergraph learning model that captures high-order relationships in data, improving image clustering and semi-supervised classification by overcoming limitations of pairwise graph models.
Contribution
The paper proposes a novel elastic net hypergraph learning framework combining robust matrix elastic net and hypergraph modeling for better data relationship representation.
Findings
Effective in image clustering and classification tasks
Outperforms traditional graph models in capturing high-order data relationships
Demonstrates robustness on face and handwriting datasets
Abstract
Graph model is emerging as a very effective tool for learning the complex structures and relationships hidden in data. Generally, the critical purpose of graph-oriented learning algorithms is to construct an informative graph for image clustering and classification tasks. In addition to the classical -nearest-neighbor and -neighborhood methods for graph construction, -graph and its variants are emerging methods for finding the neighboring samples of a center datum, where the corresponding ingoing edge weights are simultaneously derived by the sparse reconstruction coefficients of the remaining samples. However, the pair-wise links of -graph are not capable of capturing the high order relationships between the center datum and its prominent data in sparse reconstruction. Meanwhile, from the perspective of variable selection, the norm sparse constraint, regarded as a…
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