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...
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Published in | APSIPA transactions on signal and information processing Vol. 11; no. 1 |
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Main Authors | , , , |
Format | Journal Article |
Language | English |
Published |
Boston — Delft
Now Publishers
01.01.2022
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Subjects | |
Online Access | Get full text |
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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. |
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Bibliography: | supervised feature selection classification Now Publishers SIP-2022-0016 regression Machine learning |
ISSN: | 2048-7703 2048-7703 |
DOI: | 10.1561/116.00000016 |