Feature Extraction Based on Support Vector Data Description
作者:Li Zhang, Xingning Lu
摘要
Motivated by the improvement of performance and reduction of complexity, feature extraction is referred to one manner of dimensionality reduction. This paper presents a new feature extraction method based on support vector data description (FE-SVDD). First, the proposed method establishes hyper-sphere models for each category of the given data using support vector data description. Second, FE-SVDD calculates the distances between data points and the centers of the hyper-spheres. Finally, the ratios of the distances to the radii of the hyper-spheres are treated as new extracted features. Experimental results on different data sets indicate that FE-SVDD can speed up the procedure of feature extraction and extract the distinctive information of original data.
论文关键词:Feature extraction, Support vector data description, Dimensionality reduction, Support vector machine
论文评审过程:
论文官网地址:https://doi.org/10.1007/s11063-018-9838-0