1. Saliency analysis of Support Vector Machines for feature selection
- Creator:
- Tay, Francis E. H. and Cao, L. J.
- Format:
- bez média and svazek
- Type:
- model:article and TEXT
- Subject:
- saliency analysis, feature selection, support vector machines, and structural risk minimization principle
- Language:
- English
- Description:
- This paper deals with the application of saliency analysis to Support Vector Machines (SVMs) for feature selection. The importance of feature is ranked by evaluating the sensitivity of the network output to the feature input in terms of the partial derivative. A systematic approach to remove irrelevant features based on the sensitivity is developed. Two simulated non-linear time series and five real financial time series are examined in the experiment. Based on the simulation results, it is shown that that saliency analysis is effective in SVMs for identifying important features.
- Rights:
- http://creativecommons.org/publicdomain/mark/1.0/ and policy:public