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Customized Dictionary Learning for Subdatasets with Fine Granularity

Author

Listed:
  • Lei Ye
  • Can Wang
  • Xin Xu
  • Hui Qian

Abstract

Sparse models have a wide range of applications in machine learning and computer vision. Using a learned dictionary instead of an “off-the-shelf” one can dramatically improve performance on a particular dataset. However, learning a new one for each subdataset (subject) with fine granularity may be unwarranted or impractical, due to restricted availability subdataset samples and tremendous numbers of subjects. To remedy this, we consider the dictionary customization problem, that is, specializing an existing global dictionary corresponding to the total dataset, with the aid of auxiliary samples obtained from the target subdataset. Inspired by observation and then deduced from theoretical analysis, a regularizer is employed penalizing the difference between the global and the customized dictionary. By minimizing the sum of reconstruction errors of the above regularizer under sparsity constraints, we exploit the characteristics of the target subdataset contained in the auxiliary samples while maintaining the basic sketches stored in the global dictionary. An efficient algorithm is presented and validated with experiments on real-world data.

Suggested Citation

  • Lei Ye & Can Wang & Xin Xu & Hui Qian, 2016. "Customized Dictionary Learning for Subdatasets with Fine Granularity," Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-13, November.
  • Handle: RePEc:hin:jnlmpe:5376087
    DOI: 10.1155/2016/5376087
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