Feature space learning model

被引:0
|
作者
Renchu Guan
Xu Wang
Maurizio Marchese
Mary Qu Yang
Yanchun Liang
Chen Yang
机构
[1] Jilin University,Key Laboratory for Symbol Computation and Knowledge Engineering of National Education Ministry, College of Computer Science and Technology
[2] University of Trento,Department of Engineering and Computer Science
[3] University of Arkansas at Little Rock and University of Arkansas Medical Sciences,MidSouth Bioinformatics Center and Joint Bioinformatics
[4] Jilin University,College of Earth Sciences
[5] Zhuhai College of Jilin University,Zhuhai Laboratory of Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education
关键词
Feature space learning; Semi-supervised learning; Affinity Propagation; k-means;
D O I
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中图分类号
学科分类号
摘要
With the massive volume and rapid increasing of data, feature space study is of great importance. To avoid the complex training processes in deep learning models which project original feature space into low-dimensional ones, we propose a novel feature space learning (FSL) model. The main contributions in our approach are: (1) FSL can not only select useful features but also adaptively update feature values and span new feature spaces; (2) four FSL algorithms are proposed with the feature space updating procedure; (3) FSL can provide a better data understanding and learn descriptive and compact feature spaces without the tough training for deep architectures. Experimental results on benchmark data sets demonstrate that FSL-based algorithms performed better than the classical unsupervised, semi-supervised learning and even incremental semi-supervised algorithms. In addition, we show a visualization of the learned feature space results. With the carefully designed learning strategy, FSL dynamically disentangles explanatory factors, depresses the noise accumulation and semantic shift, and constructs easy-to-understand feature spaces.
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页码:2029 / 2040
页数:11
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