Publication | Closed Access
A parallel fuzzy inference model with distributed prediction scheme for reinforcement learning
19
Citations
16
References
1998
Year
Artificial IntelligenceEngineeringMachine LearningFuzzy ModelingEvolving Intelligent SystemDistributed Ai SystemIntelligent SystemsSystems EngineeringFuzzy OptimizationFuzzy RuleFuzzy LogicPredictive AnalyticsFuzzy RulesIntelligent ControlComputer EngineeringComputer ScienceIntelligent Decision Support SystemDistributed Prediction SchemeNeuro-fuzzy SystemParallel Learning
This paper proposes a three-layered parallel fuzzy inference model called reinforcement fuzzy neural network with distributed prediction scheme (RFNN-DPS), which performs reinforcement learning with a novel distributed prediction scheme. In RFNN-DPS, an additional predictor for predicting the external reinforcement signal is not necessary, and the internal reinforcement information is distributed into fuzzy rules (rule nodes). Therefore, using RFNN-DPS, only one network is needed to construct a fuzzy logic system with the abilities of parallel inference and reinforcement learning. Basically, the information for prediction in RFNN-DPS is composed of credit values stored in fuzzy rule nodes, where each node holds a credit vector to represent the reliability of the corresponding fuzzy rule. The credit values are not only accessed for predicting external reinforcement signals, but also provide a more profitable internal reinforcement signal to each fuzzy rule itself. RFNN-DPS performs a credit-based exploratory algorithm to adjust its internal status according to the internal reinforcement signal. During learning, the RFNN-DPS network is constructed by a single-step or multistep reinforcement learning algorithm based on the ART concept. According to our experimental results, RFNN-DPS shows the advantages of simple network structure, fast learning speed, and explicit representation of rule reliability.
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