2016
DOI: 10.1016/j.jss.2016.02.016
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DISARM: A social distributed agent reputation model based on defeasible logic

Abstract: Intelligent Agents act in open and thus risky environments, hence making the appropriate decision about who to trust in order to interact with, could be a challenging process.As intelligent agents are gradually enriched with Semantic Web technology, acting on behalf of their users with limited or no human intervention, their ability to perform assigned tasks is scrutinized. Hence, trust and reputation models, based on interaction trust or witness reputation, have been proposed, yet they often presuppose the us… Show more

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Cited by 11 publications
(4 citation statements)
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References 50 publications
(56 reference statements)
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“…ere are many representative reputation models, such as Regret [16], FIRE [17], FIRE+ (FIRE+ is an extension of FIRE model proposed by Qureshi et al, which can avoid collusion attacks ) [20], DISARM (DISARM is a social, distributed, hybrid, rulebased reputation model named by Kravari and Bassiliades, which uses defeasible logic) [21], and AFRAS (AFRAS is from "a fuzzy reputation agent system" named by Carbo et al) [22], can be classified as integrated reputation models that generate agents' reputations by integrating many reputation factors.…”
Section: Related Workmentioning
confidence: 99%
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“…ere are many representative reputation models, such as Regret [16], FIRE [17], FIRE+ (FIRE+ is an extension of FIRE model proposed by Qureshi et al, which can avoid collusion attacks ) [20], DISARM (DISARM is a social, distributed, hybrid, rulebased reputation model named by Kravari and Bassiliades, which uses defeasible logic) [21], and AFRAS (AFRAS is from "a fuzzy reputation agent system" named by Carbo et al) [22], can be classified as integrated reputation models that generate agents' reputations by integrating many reputation factors.…”
Section: Related Workmentioning
confidence: 99%
“…e FIRE-+ model [20] is devised to avoid collusion attacks that cannot be avoided by the Fire model; it also mainly focuses on the sources of direct and witness-based interaction experiences, but through a graph construction of witness ratings and various interaction policies (direct interaction policy, witness interaction policy, and connection decision policy), collusion among agents can be effectively detected. DISARM [21] introduces a distributed reputation system considering the relationships among agents as a network; DISARM proposes the use of defeasible logic combining the direct and witness information to support accurate reputation assessment. Wu et al [23] introduce an artificial neural network-based reputation bootstrapping approach, which establishes the reputation of an agent by explicit evidences (direct interaction experiences) and implicit evidences (information that may be relevant with performance) in order to solve the reputation detection problem of newly deployed agents.…”
Section: Related Workmentioning
confidence: 99%
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“…The process employs the best social friendships of the current user and the past invocation histories with satisfactory web services of his friends to generate satisfactory results. To limit the disadvantages of distributed approaches, a novel distributed reputation model was presented in [8], which treats multi-agent systems as social networks and leverages social relations among these agents.…”
Section: Related Workmentioning
confidence: 99%