Affiliation:
1. Department of Computer Science, University of Liverpool, Liverpool, UK
2. Department of Computer Science and Software Engineering, Xian Jiaotong-Liverpool University, Jiangsu, China
3. Department of Electrical Engineering, Technical University of Denmark, Kongens Lyngby, Denmark
Abstract
Feature ordering is a significant data preprocessing method in Incremental Attribute Learning (IAL), a novel machine learning approach which gradually trains features according to a given order. Previous research has shown that, similar to feature selection, feature ordering is also important based on each feature's discrimination ability, and should be sorted in a descending order of their discrimination ability. However, such an ordering is crucial for the performance of IAL. As the number of feature dimensions in IAL is increasing, feature discrimination ability also should be calculated in the corresponding incremental way. Based on Single Discriminability (SD), where only the feature discrimination ability is computed, a new filter statistical feature discrimination ability predictive metric, called the Accumulative Discriminability (AD), is designed for the dynamical feature discrimination ability estimation. Moreover, a criterion that summarizes all the produced values of AD is employed with a GA (Genetic Algorithm)-based approach to obtain the optimum feature ordering for classification problems based on neural networks by means of IAL. Compared with the feature ordering obtained by other approaches, the method proposed in this paper exhibits better performance in the final classification results. Such a phenomenon indicates that, (i) the feature discrimination ability should be incrementally estimated in IAL, and (ii) the feature ordering derived by AD and its corresponding approaches are applicable with IAL.
Subject
General Earth and Planetary Sciences,General Environmental Science
Reference25 articles.
1. Interference-less neural network training
2. Fast wrapper feature subset selection in high-dimensional datasets by means of filter re-ranking
3. Chao, S., & Wong, F. (2009, July 12-15). An incremental decision tree learning methodology regarding attributes in medical data mining. Paper presented at the 2009 International Conference on Machine Learning and Cybernetics, Baoding, China.
4. Incremental Multiple Objective Genetic Algorithms
5. Elements of Information Theory (Thomas M. Cover and Joy A. Thomas)