標題: Locality-constrained max-margin sparse coding
作者: Hsaio, Wen-Hoar
Liu, Chien-Liang
Wu, Wei-Liang
資訊工程學系
工業工程與管理學系
Department of Computer Science
Department of Industrial Engineering and Management
關鍵字: Locality;Sparse Coding;Max-margin
公開日期: 1-May-2017
摘要: This work devises a locality-constrained max-margin sparse coding (LC-MMSC) framework, which jointly considers reconstruction loss and hinge loss simultaneously. Traditional sparse coding algorithms use l(1) constraint to force the representation to be sparse, leading to computational expensive process to optimize the objective function. This work uses locality constraint in the framework to preserve information of data locality and avoid the optimization of l(1). The obtained representation can achieve the goal of data locality and sparsity. Additionally, this work optimizes coefficients, dictionaries and classification parameters simultaneously, and uses block coordinate descent to learn all the components of the proposed model. This work uses semi supervised learning approach in the proposed framework, and the goal is to use both labeled data and unlabeled data to achieve accurate classification performance and improve the generalization of the model. We provide theoretical analysis on the convergence of the proposed LC-MMSC algorithm based on Zangwill's global convergence theorem. This work conducts experiments on three real datasets, including Extended YaleB dataset, AR face dataset and Caltech101 dataset. The experimental results indicate that the proposed algorithm outperforms other comparison algorithms.
URI: http://dx.doi.org/10.1016/j.patcog.2016.12.015
http://hdl.handle.net/11536/146061
ISSN: 0031-3203
DOI: 10.1016/j.patcog.2016.12.015
期刊: PATTERN RECOGNITION
Volume: 65
起始頁: 285
結束頁: 295
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