4.8 Article

From Minimum Enclosing Ball to Fast Fuzzy Inference System Training on Large Datasets

Journal

IEEE TRANSACTIONS ON FUZZY SYSTEMS
Volume 17, Issue 1, Pages 173-184

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TFUZZ.2008.2006620

Keywords

Core vector machine (CVM); fuzzy inference systems (FISs); Gaussian mixture model (GMM); minimum enclosing ball (MEB)

Funding

  1. Hong Kong Polytechnic University [Z-08R]
  2. National Science Foundation of China [60773206, 60704047, 90820002]
  3. National 863 Research [2007AA1Z158]
  4. Ministry of Education of China [NCET-04-0496]
  5. National KeySoft Laboratory, Nanjing University
  6. Key Laboratory of Computer Science, Institute of Software, Chinese Academy of Sciences WAS
  7. Key Laboratory of Computer Information Technologies, JiangSu Province, China
  8. National Key Laboratory of Pattern Recognition, Institute of Automation, CAS, China

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While fuzzy inference systems (FISs) have been extensively studied in the past decades, the minimum enclosing ball (MEB) problem was recently introduced to develop fast and scalable methods in pattern classification and machine learning. In this paper, the relationship between these two apparently different data modeling techniques is explored. First, based on the reduced-set density estimator, a bridge between the MEB problem and the FIS is established. Then, an important finding that the Mamdani-Larsen FIS (ML-FIS) can he translated into a special kernelized MEB problem, i.e., a center-constrained MEB problem under some conditions, is revealed. Thus, fast kernelized MER approximation algorithms can be adopted to construct ML-FIS fit an efficient manner. Here, we propose the use of a core vector machine (CVM), which is a fast kernelized MEB approximation algorithm for support vector machine (SVM) training, to accomplish this task. The proposed fast ML-FIS training algorithm has the following merits: 1) the number of fuzzy rules can be automatically determined by the CVM training and 2) fast ML-FIS training on large datasets can be achieved as the upper bound on the time complexity of learning the parameters in ML-FIS is linear with the dataset size N and the tipper bound on the corresponding space complexity is theoretically independent of N. Our experiments on simulated and real datasets confirm these advantages of the proposed training method, and demonstrate its superior robustness as well. This paper not only represents a very first study of the relationship between MEB and FIS, but it also points out the mutual transformation between kernel methods and FISs under the framework of the Gaussian mixture model and MEB.

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