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Hierarchical sparse coding from a Bayesian perspective

机译:贝叶斯观点的分层稀疏编码

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摘要

AbstractWe consider the problem of hierarchical sparse coding, where not only a few groups of atoms are active at a time but also each group enjoys internal sparsity. The current approaches are usually to achieve between-group sparsity using the1penalty, such that many groups have small coefficients rather than being accurately zeroed out. The trivial groups may incur the proneness to overfitting of noise and are thereby harmful to interpretability of sparse representation. To this end, we in this paper reformulate the hierarchical sparse model from a Bayesian perspective employing twofold priors: the spike-and-slab prior and the Laplacian prior. The former is utilized to explicitly induce between-group sparsity, while the latter is adopted for both inducing within-group sparsity and obtaining a small reconstruction error. We propose a nest prior by integrating the both priors to result in hierarchical sparsity. The resultant optimization problem can be delivered a convergence solution in a few iterations via the proposed nested algorithm, corresponding to the nested prior. In experiments, we evaluate the performance of our method on signal recovery, image inpainting and sparse representation based classification, with simulated signals and two publicly available image databases. The results manifest that the proposed method, compared with the popular methods for sparse coding, can yield more concise representation and more reliable interpretation of data.
机译: 摘要 我们考虑了分层稀疏编码的问题,在这种情况下,不仅有几组原子同时处于活动状态,而且每组原子都享有内部稀疏性。当前的方法通常是使用 1 惩罚来实现组间稀疏性,从而使许多组的人很少系数,而不是准确地归零。琐碎的组可能会导致过度拟合噪声的倾向,从而不利于稀疏表示的可解释性。为此,我们从贝叶斯的角度出发,采用双重先验:尖峰板坯先验和拉普拉斯先验,重新构造了层次稀疏模型。前者用于显式诱导组间稀疏性,而后者用于诱导组内稀疏性和获得较小的重构误差。我们通过合并两个先验以产生分层稀疏性来提出嵌套先验。通过与嵌套先验相对应的嵌套算法,可以在几次迭代中提供最终的优化问题收敛解。在实验中,我们评估了我们的方法在信号恢复,图像修复和基于稀疏表示的分类上的性能,并具有模拟信号和两个公共可用的图像数据库。结果表明,与流行的稀疏编码方法相比,该方法可以更简洁的表示和更可靠的数据解释。

著录项

  • 来源
    《Neurocomputing》 |2018年第10期|279-293|共15页
  • 作者

    Yupei Zhang; Ming Xiang; Bo Yang;

  • 作者单位

    Department of Computer Science and Technology, The School of Electronic and Information Engineering, Xi′an Jiaotong University;

    Department of Computer Science and Technology, The School of Electronic and Information Engineering, Xi′an Jiaotong University;

    Department of Computer Science and Technology, The School of Electronic and Information Engineering, Xi′an Jiaotong University;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hierarchical sparse modeling; Bayesian framework; Spike-and-slab prior; Laplacian prior; Sparse representation based classification;

    机译:分层稀疏建模;贝叶斯框架;钉板先验;拉普拉斯先验;基于稀疏表示的分类;

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