On Supervised Feature Selection from High Dimensional Feature Spaces

The application of machine learning to image and video data often yields a high dimensional feature space. Effective feature selection techniques identify a discriminant feature subspace that lowers computational and modeling costs with little performance degradation. A novel supervised feature sele...

Full description

Saved in:
Bibliographic Details
Published inAPSIPA transactions on signal and information processing Vol. 11; no. 1
Main Authors Yang, Yijing, Wang, Wei, Fu, Hongyu, Kuo, C.-C. Jay
Format Journal Article
LanguageEnglish
Published Boston — Delft Now Publishers 01.01.2022
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:The application of machine learning to image and video data often yields a high dimensional feature space. Effective feature selection techniques identify a discriminant feature subspace that lowers computational and modeling costs with little performance degradation. A novel supervised feature selection methodology is proposed for machine learning decisions in this work. The resulting tests are called the discriminant feature test (DFT) and the relevant feature test (RFT) for the classification and regression problems, respectively. The DFT and RFT procedures are described in detail. Furthermore, we compare the effectiveness of DFT and RFT with several classic feature selection methods. To this end, we use deep features obtained by LeNet-5 for MNIST and Fashion-MNIST datasets as illustrative examples. Other datasets with handcrafted and gene expressions features are also included for performance evaluation. It is shown by experimental results that DFT and RFT can select a lower dimensional feature subspace distinctly and robustly while maintaining high decision performance.
Bibliography:supervised feature selection
classification
Now Publishers
SIP-2022-0016
regression
Machine learning
ISSN:2048-7703
2048-7703
DOI:10.1561/116.00000016