An Experiment to Signify Fuzzy Logic as an Effective User Interface Tool for Artificial Neural Network
نویسندگان
چکیده
Artificial Neural Networks are bio-inspired mechanisms for intelligent decision support. Artificial Neural Networks have got remarkable ability to learn and derive meaning from large amount of domain data. The paper discusses the limitations of ANN from user interface perspective and emphasizes how fuzzy logic can serve as an effective user interface tool for ANN. The paper presents a framework for mere ANN based system considering a case of decision making problem of employee evaluation as well as discusses technical details of its implementation. The research work focuses on enhancing the ANN based system by developing Neuro-Fuzzy architecture for employee evaluation system as well as discusses technical details of its implementation. Keywords— Artificial Neural Network, Employee Evaluation, Evaluation parameters, Fuzzy logic, User Interface
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