Litcius/Paper detail

Feature Selection for High Dimensional Data Using Weighted K-Nearest Neighbors and Genetic Algorithm

Shuangjie Li, Kaixiang Zhang, Qianru Chen, Shuqin Wang, Shaoqiang Zhang

2020IEEE Access36 citationsDOIOpen Access PDF

Abstract

Too many input features in applications may lead to over-fitting and reduce the performance of the learning algorithm. Moreover, in most cases, each feature containing different information content has different effects on the prediction target. Therefore, a feature selection method for calculating the importance of each feature, called WKNNGAFS, is proposed in this paper. In this method, the genetic algorithm (GA) is adopted to search the optimal weight vector, the value of the ith component of which corresponds to the contribution degree of the ith feature to the classification from a global perspective. Besides, weighted K-nearest neighbors algorithm (WKNN), which takes both the different contributions of nearest neighbors and the different classification ability of each feature into account, is used to determine the target label. To evaluate the effectiveness of the proposed method, nine existing feature selection methods are compared with it on 13 real datasets, including 6 high dimensional microarray datasets. Experimental results demonstrate the method is more effective and can improve classification performance.

Topics & Concepts

Feature selectionk-nearest neighbors algorithmComputer sciencePattern recognition (psychology)Feature (linguistics)Data miningArtificial intelligenceGenetic algorithmFeature vectorSelection (genetic algorithm)AlgorithmStatistical classificationMachine learningPhilosophyLinguisticsFace and Expression RecognitionEvolutionary Algorithms and ApplicationsGene expression and cancer classification