Paper Code:A Self-adaptive Weighted Differential Evolution Approach for Large-scale Feature Selection

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Deep LearningSaWDE
Overview

1. SaWDE.m is the main function

2. DataPartition.m is used to randomly partition the original data into training sets and test sets with a ratio of 7 : 3.

3. CSGSTest.m is used to test the performance of each strategy.

Owner
wangxb
Data Mining & Machine Learning : ) Knowledge in Data
wangxb
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