Title :
SaFIN: A Self-Adaptive Fuzzy Inference Network
Author :
Tung, Sau Wai ; Quek, Chai ; Guan, Cuntai
Author_Institution :
Centre for Comput. Intell., Nanyang Technol. Univ., Singapore, Singapore
Abstract :
There are generally two approaches to the design of a neural fuzzy system: (1) design by human experts, and (2) design through a self-organization of the numerical training data. While the former approach is highly subjective, the latter is commonly plagued by one or more of the following major problems: (1) an inconsistent rulebase; (2) the need for prior knowledge such as the number of clusters to be computed; (3) heuristically designed knowledge acquisition methodologies; and (4) the stability-plasticity tradeoff of the system. This paper presents a novel self-organizing neural fuzzy system, named Self-Adaptive Fuzzy Inference Network (SaFIN), to address the aforementioned deficiencies. The proposed SaFIN model employs a new clustering technique referred to as categorical learning-induced partitioning (CLIP), which draws inspiration from the behavioral category learning process demonstrated by humans. By employing the one-pass CLIP, SaFIN is able to incorporate new clusters in each input-output dimension when the existing clusters are not able to give a satisfactory representation of the incoming training data. This not only avoids the need for prior knowledge regarding the number of clusters needed for each input-output dimension, but also allows SaFIN the flexibility to incorporate new knowledge with old knowledge in the system. In addition, the self-automated rule formation mechanism proposed within SaFIN ensures that it obtains a consistent resultant rulebase. Subsequently, the proposed SaFIN model is employed in a series of benchmark simulations to demonstrate its efficiency as a self-organizing neural fuzzy system, and excellent performances have been achieved.
Keywords :
expert systems; fuzzy neural nets; fuzzy reasoning; knowledge acquisition; learning (artificial intelligence); pattern clustering; self-organising feature maps; CLIP; SaFIN model; categorical learning induced partitioning; category learning process; clustering technique; consistent resultant rule base; heuristically designed knowledge acquisition methodology; human expert; inconsistent rule base; input-output dimension; neural fuzzy system; numerical training data; self adaptive fuzzy inference network; self automated rule formation mechanism; self organizing neural fuzzy system; stability-plasticity tradeoff; Computational modeling; Fuzzy neural networks; Fuzzy systems; Learning systems; Training data; Categorical learning-induced partitioning; fuzzy neural networks; hybrid intelligent systems; self-organizing; Algorithms; Computer Simulation; Expert Systems; Feedback; Fuzzy Logic; Humans; Models, Theoretical; Neural Networks (Computer);
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2011.2167720