协同多智能体联合行动学习算法在零售商店决策中的应用

D. Vidhate
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引用次数: 0

摘要

Thisarticlegivesanovelapproachtocooperativedecision-makingalgorithmsbyJoint Actionlearningfortheretailshopapplication。Accordingly,thisapproachpresents三个零售商店在retailmarketplace。Retailers canhelp到eachother和canobtainprofitfromcooperationknowledgethroughlearningtheirownstrategies thatjuststandfortheiraimsandbenefit。Thevendorsaretheknowledgeableagents toemploycooperativelearningtotraininthecircumstances。Assumingasignificant hypothesison thevendor的stockpolicy, restockperiod, andarrivalprocessof的消费者,theapproachwasformedasaMarkovmodel。Theproposedalgorithms learndynamicconsumerperformance。Moreover,thearticleillustratestheresultsof cooperativereinforcementlearningalgorithmsbyjointactionlearningofthreeshop agentsfortheperiodofone-yearsaleduration。Twoapproacheshavebeencompared inthearticle,i.e.multi-agentQLearningandjointactionlearning。关键词:消费者行为,合作学习,联合行动学习,强化学习
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Cooperative Multi-Agent Joint Action Learning Algorithm (CMJAL) for Decision Making in Retail Shop Application
Thisarticlegivesanovelapproachtocooperativedecision-makingalgorithmsbyJoint Actionlearningfortheretailshopapplication.Accordingly,thisapproachpresents three retailer stores in the retailmarketplace.Retailers canhelp to eachother and canobtainprofitfromcooperationknowledgethroughlearningtheirownstrategies thatjuststandfortheiraimsandbenefit.Thevendorsaretheknowledgeableagents toemploycooperativelearningtotraininthecircumstances.Assumingasignificant hypothesison thevendor’s stockpolicy, restockperiod, andarrivalprocessof the consumers,theapproachwasformedasaMarkovmodel.Theproposedalgorithms learndynamicconsumerperformance.Moreover,thearticleillustratestheresultsof cooperativereinforcementlearningalgorithmsbyjointactionlearningofthreeshop agentsfortheperiodofone-yearsaleduration.Twoapproacheshavebeencompared inthearticle,i.e.multi-agentQLearningandjointactionlearning. KeywoRDS Consumer Behavior, Cooperative Learning, Joint Action Learning, Reinforcement Learning
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