Title :
Subsethood-product fuzzy neural inference system (SuPFuNIS)
Author :
Paul, Sandeep ; Kumar, Satish
Author_Institution :
Dept. of Electr. Eng., Dayalbagh Educ. Inst., Agra, India
fDate :
5/1/2002 12:00:00 AM
Abstract :
A new subsethood-product fuzzy neural inference system (SuPFuNIS) is presented in this paper. It has the flexibility to handle both numeric and linguistic inputs simultaneously. Numeric inputs are fuzzified by input nodes which act as tunable feature fuzzifiers. Rule based knowledge is easily translated directly into a network architecture. Connections in the network are represented by Gaussian fuzzy sets. The novelty of the model lies in a combination of tunable input feature fuzzifiers; fuzzy mutual subsethood-based activation spread in the network; use of the product operator to compute the extent of firing of a rule; and a volume-defuzzification process to produce a numeric output. Supervised gradient descent is employed to train the centers and spreads of individual fuzzy connections. A subsethood-based method for rule generation from the trained network is also suggested. SuPFuNIS can be applied in a variety of application domains. The model has been tested on Mackey-Glass time series prediction, Iris data classification, Hepatitis medical diagnosis, and function approximation benchmark problems. We also use a standard truck backer-upper control problem to demonstrate how expert knowledge can be used to augment the network. The performance of SuPFuNIS compares excellently with other various existing models
Keywords :
fuzzy neural nets; fuzzy set theory; inference mechanisms; learning (artificial intelligence); neural net architecture; uncertainty handling; Gaussian fuzzy sets; Hepatitis medical diagnosis; Iris data classification; SuPFuNIS; function approximation; fuzzy mutual subsethood-based activation spread; input nodes; linguistic input; neural network architecture; numeric input; rule based knowledge; rule firing; rule generation; subsethood-product fuzzy neural inference system; supervised gradient descent learning; time series prediction; truck backer-upper control problem; tunable feature fuzzifiers; volume-defuzzification process; Computer architecture; Computer networks; Function approximation; Fuzzy sets; Fuzzy systems; Iris; Liver diseases; Medical diagnosis; Medical tests; Predictive models;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2002.1000126