4.6 Article

A Pareto-Based Sparse Subspace Learning Framework

期刊

IEEE TRANSACTIONS ON CYBERNETICS
卷 49, 期 11, 页码 3859-3872

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2018.2849442

关键词

Classification; multiobjective optimization; Pareto solutions; sparse representation; subspace learning

资金

  1. National Basic Research Program (973 Program) of China [2013CB329402]
  2. Director Fund of Beijing Key Laboratory of Intelligent Telecommunication Software and Multimedia [ITSM20180101]
  3. Major Research Plan of the National Natural Science Foundation of China [91438201]
  4. National Natural Science Foundation of China [61371201]
  5. Program for Cheung Kong Scholars and Innovative Research Team in University [IRT1170]
  6. Fundamental Research Funds for the Central Universities [K5051302028]

向作者/读者索取更多资源

High-dimensionality is a common characteristic of real-world data, which often results in high time and space complexity or poor performance of ensuing methods. Subspace learning, as one kind of dimension reduction method, provides a way to overcome the aforementioned problem. In this paper, we introduce multiobjective evolutionary optimization into subspace learning, and propose a Pareto-based sparse subspace learning algorithm for classification tasks. The proposed algorithm aims at minimizing two conflicting objective functions, the reconstruction error and the sparsity. A kernel trick derived from Gaussian kernel is implemented to the sparse subspace learning for the nonlinear phenomena of nature. In order to speed up the convergence, an entropy-driven initialization scheme and a gradient-descent mutation scheme are designed specifically. At last, a knee point is selected from the Pareto front to guarantee that we can obtain a solution with good classification performance, and yet as sparse as possible. The experiments and detailed analysis on real-life datasets and the hyperspectral images demonstrated that the proposed model achieves comparable results with the existing conventional subspace learning and evolutionary feature selection algorithms. Hence, this paper provides a more flexible and efficient approach for sparse subspace learning.

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