Abstract—Often in multi-agent systems, agents interact with other agents to fulfill their own goals. Trust is, therefore, considered essential to make such interactions effective. This work describes a trust model that augments fuzzy logic with Q-learning to help trust evaluating agents select beneficial trustees for interaction in uncertain, open, dynamic, and untrusted multi-agent systems. The performance of the proposed model is evaluated using simulation. The simulation results indicate that the proper augmentation of fuzzy subsystem to Q-learning can be useful for trust evaluating agents, and the resulting model can respond to dynamic changes in the environment. I
Abstract- This paper presents a cooperative reinforcement learning algorithm of multi-agent systems....
The modelling of trust values on agents is broadly considered fundamental for decision-making in hum...
Abstract In this paper, we present a framework for enabling agents in multiagent systems to engender...
In automated and unsupervised multi-agent environments, where agents act on behalf of their stakehol...
Trust management model that we present is adapted for ubiquitous devices cooperation, rather than fo...
Multi-agent systems are based upon cooperative interactions between agents, in which agents provide ...
In open environments in which autonomous agents can break contracts, computational models of trust h...
In open environments in which autonomous agents can break contracts, computational models of trust h...
Traditional Reinforcement learning algorithm can only solve the learning problem of the intelligent ...
E-commerce markets can increase their efficiency through the usage of intelligent agents which negot...
Abstract. In this paper, we discuss the benefits of several fuzzy inference sys-tem design methodolo...
In open multiagent systems, agents need to model their environments in order to identify trustworthy...
Abstract—In open multiagent systems, agents need to model their environments in order to identify tr...
Abstract. In an open Multi-Agent System, the goals of agents acting on behalf of their owners often ...
Multi-agent systems can break interactions in distributed and heterogeneous environments. One of the...
Abstract- This paper presents a cooperative reinforcement learning algorithm of multi-agent systems....
The modelling of trust values on agents is broadly considered fundamental for decision-making in hum...
Abstract In this paper, we present a framework for enabling agents in multiagent systems to engender...
In automated and unsupervised multi-agent environments, where agents act on behalf of their stakehol...
Trust management model that we present is adapted for ubiquitous devices cooperation, rather than fo...
Multi-agent systems are based upon cooperative interactions between agents, in which agents provide ...
In open environments in which autonomous agents can break contracts, computational models of trust h...
In open environments in which autonomous agents can break contracts, computational models of trust h...
Traditional Reinforcement learning algorithm can only solve the learning problem of the intelligent ...
E-commerce markets can increase their efficiency through the usage of intelligent agents which negot...
Abstract. In this paper, we discuss the benefits of several fuzzy inference sys-tem design methodolo...
In open multiagent systems, agents need to model their environments in order to identify trustworthy...
Abstract—In open multiagent systems, agents need to model their environments in order to identify tr...
Abstract. In an open Multi-Agent System, the goals of agents acting on behalf of their owners often ...
Multi-agent systems can break interactions in distributed and heterogeneous environments. One of the...
Abstract- This paper presents a cooperative reinforcement learning algorithm of multi-agent systems....
The modelling of trust values on agents is broadly considered fundamental for decision-making in hum...
Abstract In this paper, we present a framework for enabling agents in multiagent systems to engender...