Ling Wang

+

Recommended Ph.D.Supervisor

Recommended MA Supervisor

Click:  
The Latest Update Time:  --

Paper Publications

Current position: Home >> Scientific Research >> Paper Publications

Wang L, Meng J, Huang R, et al. Incremental feature weighting for fuzzy feature selection

Release time:2022-12-01 Hits:

Impact Factor:  7.1

DOI number:  10.1016/j.fss.2018.10.021

Journal:  Fuzzy Sets and Systems

Key Words:  Feature selection; Fuzzy; Incremental feature weighting; Mutual information

Abstract:  Feature selection presents many challenges and difficulties during online learning. In this study, we focus on fuzzy feature selection for fuzzy data stream. We present a novel incremental feature weighting method with two main phases comprising offline fuzzy feature selection and online fuzzy feature selection. A sliding window is used to divide the fuzzy data set. Each fuzzy input feature is assigned a weight from [0,1] according to the mutual information shared between the input features and the output feature. These weights are employed to access the candidate fuzzy feature subsets in the current window and based on these subsets, the offline fuzzy features selection algorithm is applied to obtain the fuzzy feature subsets by combining the backward feature selection method with the fuzzy feature selection index in the first sliding window. The online feature selection algorithm is performed in each of the new sliding windows. The feature subset in the current window is updated by combining the fuzzy feature selection results from the previous sliding window with the current candidate fuzzy feature set according to the importance level of the fuzzy input feature. Finally, the evolving relationships of the fuzzy input features are found using the fuzzy feature weight between the sliding windows. Simulation results showed that the proposed algorithm obtains significantly improved adaptability and prediction accuracy compared with existing algorithms.

Indexed by:  Journal paper

Discipline:  Engineering

Document Type:  J

Volume:  368

Page Number:  1 - 19

ISSN No.:  01650114

Translation or Not:  no

Date of Publication:  2019-01-01

Included Journals:  SCI

Links to published journals:  https://www.sciencedirect.com/science/article/pii/S016501141830825X

Copyright ©  2022 USTB All Rights Reserved. Tel:010-62332299