Abstract

This paper studies the joint effect of V-matrix, a recently proposed framework for statistical inferences, and extreme learning machine (ELM) on regression problems. First of all, a novel algorithm is proposed to efficiently evaluate the V-matrix. Secondly, a novel weighted ELM algorithm called V-ELM is proposed based on the explicit kernel mapping of ELM and the V-matrix method. Though V-matrix method could capture the geometrical structure of training data, it tends to assign a higher weight to instance with smaller input value. In order to avoid this bias, a novel method called VI-ELM is proposed by minimizing both the regression error and the V-matrix weighted error simultaneously. Finally, experiment results on 12 real world benchmark datasets show the effectiveness of our proposed methods.

Publication Details
Publication Type
Journal Article
Year of Publication
2017
ISSN Number
1871-4099
DOI
10.1007/s11571-017-9444-2
URL
http://dx.doi.org/10.1007/s11571-017-9444-2
Journal
Cognitive Neurodynamics
Contributors
Groups
Date Published
06/2017