In this paper, we deal with the sequential decision making problem of agents operating in computational economies, where there is uncertainty regarding the trustworthiness of service providers populating the environment. Specifically, we propose a generic Bayesian trust model, and formulate the optimal Bayesian solution to the exploration-exploitation problem facing the agents when repeatedly interacting with others in such environments. We then present a computationally tractable Bayesian reinforcement learning algorithm to approximate that solution by taking into account the expected value of perfect information of an agent's actions. Our algorithm is shown to dramatically outperform all previous finalists of the international Agent Reput...
In many dynamic open systems, agents have to interact with one another to achieve their goals. Here,...
Trust is a fundamental concern in large-scale open distributed systems. It lies at the core of all i...
We define a mathematical measure for the quantitative comparison of probabilistic computational trus...
In this paper, we deal with the sequential decision making problem of agents operating in computatio...
In many systems, agents must rely on their peers to achieve their goals. However, when trusted to pe...
With the abundance of services available in today's world, identifying those of high quality is beco...
In open multi-agent systems, agents typically need to rely on others for the provision of informatio...
In this paper, we present a framework for trust-aware sequential decision-making in a human-robot te...
Abstract. Multi-agent systems where agents compete against one an-other in a specific environment po...
Abstract. Trust learning is a crucial aspect of information exchange, negotiation, and any other kin...
Vickrey-Clarke-Groves (VCG) mechanisms are often used to allocate tasks to selfish and rational agen...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
Trust relationships occur naturally in many diverse contexts such as collaborative systems, e-commer...
Cooperative agent and robot systems are designed so that each is working toward the same common good...
Reputation-based trust models using statistical learning have been intensively studied for distribut...
In many dynamic open systems, agents have to interact with one another to achieve their goals. Here,...
Trust is a fundamental concern in large-scale open distributed systems. It lies at the core of all i...
We define a mathematical measure for the quantitative comparison of probabilistic computational trus...
In this paper, we deal with the sequential decision making problem of agents operating in computatio...
In many systems, agents must rely on their peers to achieve their goals. However, when trusted to pe...
With the abundance of services available in today's world, identifying those of high quality is beco...
In open multi-agent systems, agents typically need to rely on others for the provision of informatio...
In this paper, we present a framework for trust-aware sequential decision-making in a human-robot te...
Abstract. Multi-agent systems where agents compete against one an-other in a specific environment po...
Abstract. Trust learning is a crucial aspect of information exchange, negotiation, and any other kin...
Vickrey-Clarke-Groves (VCG) mechanisms are often used to allocate tasks to selfish and rational agen...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
Trust relationships occur naturally in many diverse contexts such as collaborative systems, e-commer...
Cooperative agent and robot systems are designed so that each is working toward the same common good...
Reputation-based trust models using statistical learning have been intensively studied for distribut...
In many dynamic open systems, agents have to interact with one another to achieve their goals. Here,...
Trust is a fundamental concern in large-scale open distributed systems. It lies at the core of all i...
We define a mathematical measure for the quantitative comparison of probabilistic computational trus...