4.7 Article

Adaptive Classifier Ensemble Method Based on Spatial Perception for High-Dimensional Data Classification

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 33, Issue 7, Pages 2847-2862

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2019.2961076

Keywords

Learning systems; Feature extraction; Principal component analysis; Classification algorithms; Data mining; Dimensionality reduction; Bagging; Feature transformation; spatial perception; ensemble learning; high-dimensional data; classification

Funding

  1. NSFC [61751205, 61722205, 61572199, 61572540, U1611461]
  2. Key R&D Program of Guang Dong Province [2018B010107002]
  3. Guangdong Natural Science Funds [2016A030308013]

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An adaptive classifier ensemble learning method based on spatial perception is proposed to address the limitations of traditional methods in classifying high-dimensional data. By designing local and cross-space perception methods, the proposed method achieves both high performance and diversity while providing macro analysis of data features.
Classifying high-dimensional small-size data is challenging in the field of pattern recognition. Traditional ensemble learning methods have several limitations: 1) sample-space based methods are easily affected by noise and redundant features; 2) feature-space based methods cannot excavate the essential characteristics of features; 3) feature subspaces cause information loss, which leads to a decline in accuracy; 4) most selective ensemble methods only consider the diversity and performance of sub-classifiers and ignore the impact on integration systems. To address the above limitations, we propose an adaptive classifier ensemble learning method (AdaSPEL) based on spatial perception for high-dimensional data. First, we design a local-space perception method for feature transformation, which encourages both high performance and diversity of the ensemble members. Second, we design a cross-space perception method based on the distribution of samples to obtain the cross-space enhanced features to provide a macro analysis for the characteristics of data. Furthermore, an adaptive selective ensemble method based on local and global evaluation mechanisms is proposed, which considers the impact of sub-classifiers on integrated systems. Experimental results on 33 high-dimensional data sets verify that our method outperforms mainstream ensemble learning methods based on feature space and sample space, and neural network-based algorithms.

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