Title :
Kernelized Fuzzy Rough Sets and Their Applications
Author :
Hu, Qinghua ; Yu, Daren ; Pedrycz, Witold ; Chen, Degang
Author_Institution :
Harbin Inst. of Technol., Harbin, China
Abstract :
Kernel machines and rough sets are two classes of commonly exploited learning techniques. Kernel machines enhance traditional learning algorithms by bringing opportunities to deal with nonlinear classification problems, rough sets introduce a human-focused way to deal with uncertainty in learning problems. Granulation and approximation play a pivotal role in rough sets-based learning and reasoning. However, a way how to effectively generate fuzzy granules from data has not been fully studied so far. In this study, we integrate kernel functions with fuzzy rough set models and propose two types of kernelized fuzzy rough sets. Kernel functions are employed to compute the fuzzy T-equivalence relations between samples, thus generating fuzzy information granules in the approximation space. Subsequently fuzzy granules are used to approximate the classification based on the concepts of fuzzy lower and upper approximations. Based on the models of kernelized fuzzy rough sets, we extend the measures existing in classical rough sets to evaluate the approximation quality and approximation abilities of the attributes. We discuss the relationship between these measures and feature evaluation function ReliefF, and augment the ReliefF algorithm to enhance the robustness of these proposed measures. Finally, we apply these measures to evaluate and select features for classification problems. The experimental results help quantify the performance of the KFRS.
Keywords :
approximation theory; fuzzy set theory; learning (artificial intelligence); pattern classification; rough set theory; ReliefF algorithm; approximation abilities; approximation quality; classical rough sets; exploited learning technique; feature evaluation function ReliefF; fuzzy T-equivalence relations; fuzzy information granules; generate fuzzy granule; integrate kernel functions; kernel machine; kernelized fuzzy rough set; nonlinear classification problem; traditional learning algorithm; Approximation methods; Classification algorithms; Data models; Fuzzy sets; Kernel; Machine learning; Rough sets; Rough set; feature evaluation; feature selection.; fuzzy rough set; kernel;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2010.260