Title :
Extracting Takagi-Sugeno Fuzzy Rules with Interpretable Submodels via Regularization of Linguistic Modifiers
Author :
Zhou, Shang-Ming ; Gan, John Q.
Author_Institution :
Dept. of Inf., De Montfort Univ., Leicester
Abstract :
In this paper, a method for constructing Takagi-Sugeno (TS) fuzzy system from data is proposed with the objective of preserving TS submodel comprehensibility, in which linguistic modifiers are suggested to characterize the fuzzy sets. A good property held by the proposed linguistic modifiers is that they can broaden the cores of fuzzy sets while contracting the overlaps of adjoining membership functions (MFs) during identification of fuzzy systems from data. As a result, the TS submodels identified tend to dominate the system behaviors by automatically matching the global model (GM) in corresponding subareas, which leads to good TS model interpretability while producing distinguishable input space partitioning. However, the GM accuracy and model interpretability are two conflicting modeling objectives, improving interpretability of fuzzy models generally degrades the GM performance of fuzzy models, and vice versa. Hence, one challenging problem is how to construct a TS fuzzy model with not only good global performance but also good submodel interpretability. In order to achieve a good tradeoff between GM performance and submodel interpretability, a regularization learning algorithm is presented in which the GM objective function is combined with a local model objective function defined in terms of an extended index of fuzziness of identified MFs. Moreover, a parsimonious rule base is obtained by adopting a QR decomposition method to select the important fuzzy rules and reduce the redundant ones. Experimental studies have shown that the TS models identified by the suggested method possess good submodel interpretability and satisfactory GM performance with parsimonious rule bases.
Keywords :
fuzzy set theory; fuzzy systems; knowledge based systems; learning (artificial intelligence); QR decomposition method; Takagi-Sugeno fuzzy rules; Takagi-Sugeno fuzzy system; fuzzy models; fuzzy sets; global model; good submodel interpretability; input space partitioning; interpretable submodels; linguistic modifiers; membership functions; model objective function; parsimonious rule bases; regularization learning algorithm; system behaviors; Control system synthesis; Data analysis; Data mining; Degradation; Fuzzy sets; Fuzzy systems; Gallium nitride; Modeling; Pattern recognition; Takagi-Sugeno model; Interpretability; Knowledge extraction; Takagi-Sugeno fuzzy models; comprehensibility; distinguishability; fuzziness.; knowledge extraction; linearization; local linear models; local models; regularization; submodels; transparency;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Conference_Location :
10/10/2008 12:00:00 AM
DOI :
10.1109/TKDE.2008.208