DocumentCode :
1415793
Title :
SparseFIS: Data-Driven Learning of Fuzzy Systems With Sparsity Constraints
Author :
Lughofer, Edwin ; Kindermann, Stefan
Author_Institution :
Dept. of Knowledge-based Math. Syst., Johannes Kepler Univ. of Linz, Linz, Austria
Volume :
18
Issue :
2
fYear :
2010
fDate :
4/1/2010 12:00:00 AM
Firstpage :
396
Lastpage :
411
Abstract :
In this paper, we deal with a novel data-driven learning method [sparse fuzzy inference systems (SparseFIS)] for Takagi-Sugeno (T-S) fuzzy systems, extended by including rule weights. Our learning method consists of three phases: The first phase conducts a clustering process in the input/output feature space with iterative vector quantization and projects the obtained clusters onto 1-D axes to form the fuzzy sets (centers and widths) in the antecedent parts of the rules. Hereby, the number of clusters = rules is predefined and denotes a kind of upper bound on a reasonable granularity. The second phase optimizes the rule weights in the fuzzy systems with respect to least-squares error measure by applying a sparsity-constrained steepest descent-optimization procedure. Depending on the sparsity threshold, weights of many or a few rules can be forced toward 0, thereby, switching off (eliminating) some rules (rule selection). The third phase estimates the linear consequent parameters by a regularized sparsity-constrained-optimization procedure for each rule separately (local learning approach). Sparsity constraints are applied in order to force linear parameters to be 0, triggering a feature-selection mechanism per rule. Global feature selection is achieved whenever the linear parameters of some features in each rule are (near) 0. The method is evaluated, which is based on high-dimensional data from industrial processes and based on benchmark datasets from the Internet and compared with well-known batch-training methods, in terms of accuracy and complexity of the fuzzy systems.
Keywords :
fuzzy systems; gradient methods; inference mechanisms; learning (artificial intelligence); least squares approximations; optimisation; vector quantisation; Internet; SparseFIS; Takagi-Sugeno; data-driven learning; feature-selection mechanism; fuzzy systems; least-squares error measure; sparse fuzzy inference systems; sparsity constraints; sparsity-constrained steepest descent-optimization procedure; Feature selection; Takagi–Sugeno (T–S) fuzzy systems; iterative vector quantization (VQ); rule selection; rule-weight optimization; sparsity constraints;
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/TFUZZ.2010.2042960
Filename :
5411778
Link To Document :
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