A Threshold Fuzzy Entropy Based Feature Selection: Comparative Study
نویسندگان
چکیده
منابع مشابه
A Clustering Based Feature Subset Selection Algorithm for High-Dimensional Microarray Data Using Fuzzy Entropy with Neuro-Fuzzy Classifier
Feature selection involves the process of selecting a subset of relevant features that produces the result as the original set of features. The central assumption of using a feature selection technique in high dimensional data is that the data may contain many redundant or irrelevant features. Microarray dataset may also contain a huge number of redundant (insignificant) and irrelevant features...
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