Feature Subset Selection Algorithm for High-Dimensional Data by using FAST Clustering Approach

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Feature selection involves the process of identifying the most useful feature's subset which produces compatible results similar to original set of feature. Efficiency and effectiveness are the two measures to evaluate feature selection algorithm. The time to find the cluster concerns to efficiency, while effectiveness is concerned to quality of subset feature. With these criteria, fast clustering algorithm was proposed and experimented in two steps. Features are divided into cluster in first step and followed by selection representative feature related to the target class from each cluster. Fast algorithm has the probability of producing a useful and independent feature subset. Performance of this algorithm is evaluated against several

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Feature selection involves the process of identifying the most useful feature's subset which produces compatible results similar to original set of feature. Efficiency and effectiveness are the two measures to evaluate feature selection algorithm. The time to find the cluster concerns to efficiency, while effectiveness is concerned to quality of subset feature. With these criteria, fast cl...

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تاریخ انتشار 2017