4.8 Article

Laplacian Regularized Low-Rank Representation and Its Applications

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2015.2462360

Keywords

Low-rank representation; graph; Hyper-Laplacian; manifold structure; Laplacian Matrix; regularization

Funding

  1. Australian Research Council (ARC) [DP130100364]
  2. Foundation of Key Laboratory of Autonomous Systems and Networked Control, Ministry of Education, P.R. China [2013A06]
  3. Guangdong Natural Science Foundation [2014A030313511]
  4. National Natural Science Foundation (NSF) of China [61333013, 61322306, 61272341, 61231002]
  5. National Basic Research Program of China (973 Program) [2015CB352502]
  6. Microsoft Research Asia Collaborative Research Program

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Low-rank representation (LRR) has recently attracted a great deal of attention due to its pleasing efficacy in exploring low-dimensional subspace structures embedded in data. For a given set of observed data corrupted with sparse errors, LRR aims at learning a lowest-rank representation of all data jointly. LRR has broad applications in pattern recognition, computer vision and signal processing. In the real world, data often reside on low-dimensional manifolds embedded in a high-dimensional ambient space. However, the LRR method does not take into account the non-linear geometric structures within data, thus the locality and similarity information among data may be missing in the learning process. To improve LRR in this regard, we propose a general Laplacian regularized low-rank representation framework for data representation where a hypergraph Laplacian regularizer can be readily introduced into, i.e., a Non-negative Sparse Hyper-Laplacian regularized LRR model (NSHLRR). By taking advantage of the graph regularizer, our proposed method not only can represent the global low-dimensional structures, but also capture the intrinsic non-linear geometric information in data. The extensive experimental results on image clustering, semi-supervised image classification and dimensionality reduction tasks demonstrate the effectiveness of the proposed method.

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