An Improved Feature Subset Selection Method Using Clusters

نویسنده

  • S. Kowsalya
چکیده

Feature extraction is the process of eliminating the irrelevant information and redundant features during Data Mining. Of all the existing feature subset selection algorithms, most of them can effectively eliminate irrelevant features but fail to handle redundant features. The Improved FAST eliminates irrelevant features first and from the result set it removes the redundant features. The Improved FAST method accomplishes four tasks. During the first step the irrelevant features are removed. In the second task features are divided into cluster that posses features with redundant features. The third task accomplishes the selection of most representative feature that is closely related to the target classes. It is selected from each cluster to form the features subset which is the fourth task. The efficiency of the algorithm is improved by applying the search method and their relevant search time is minimized. The Improved FAST algorithm is evaluated using various types of data like text data, micro-array data and image data to represent its performance.

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تاریخ انتشار 2014