A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System
Trust is considered as the crucial factor for agents in decision making to choose the most trustworthy partner during their interaction in open distributed multiagent systems. Most current trust models are the combination of experience trust and reference trust, in which the reference trust is e...
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(IJARAI) International Journal of Advanced Research in Artificial Intelligence, Vol.4, No.2, 2015
2016
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oai:112.137.131.14:VNU_123-98922016-05-17T20:02:55Z A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System Manh Hung Nguyen, Dinh Que Tran Multiagent system, Trust, Reputation, Liar Trust is considered as the crucial factor for agents in decision making to choose the most trustworthy partner during their interaction in open distributed multiagent systems. Most current trust models are the combination of experience trust and reference trust, in which the reference trust is estimated from the judgements of agents in the community about a given partner. These models are based on the assumption that all agents are reliable when they share their judgements about a given partner to the others. However, these models are no more longer appropriate to applications of multiagent systems, where several concurrent agents may not be ready to share their private judgement about others or may share the wrong data by lying to their partners. In this paper, we introduce a combination model of experience trust and experience trust with a mechanism to enable agents take into account the trustworthiness of referees when they refer their judgement about a given partner. We conduct experiments to evaluate the proposed model in the context of the e-commerce environment. Our research results suggest that it is better to take into account the trustworthiness of referees when they share their judgement about partners. The experimental results also indicate that although there are liars in the multiagent systems, combination trust computation is better than the trust computation based only on the experience trust of agents 2016-05-17T04:17:12Z 2016-05-17T04:17:12Z 2015 Article http://repository.vnu.edu.vn/handle/VNU_123/9892 en application/pdf (IJARAI) International Journal of Advanced Research in Artificial Intelligence, Vol.4, No.2, 2015 |
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topic |
Multiagent system, Trust, Reputation, Liar |
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Multiagent system, Trust, Reputation, Liar Manh Hung Nguyen, Dinh Que Tran A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System |
description |
Trust is considered as the crucial factor for agents in
decision making to choose the most trustworthy partner during
their interaction in open distributed multiagent systems. Most
current trust models are the combination of experience trust
and reference trust, in which the reference trust is estimated
from the judgements of agents in the community about a given
partner. These models are based on the assumption that all
agents are reliable when they share their judgements about a
given partner to the others. However, these models are no more
longer appropriate to applications of multiagent systems, where
several concurrent agents may not be ready to share their private
judgement about others or may share the wrong data by lying
to their partners.
In this paper, we introduce a combination model of experience
trust and experience trust with a mechanism to enable agents
take into account the trustworthiness of referees when they refer
their judgement about a given partner. We conduct experiments
to evaluate the proposed model in the context of the e-commerce
environment. Our research results suggest that it is better to
take into account the trustworthiness of referees when they
share their judgement about partners. The experimental results
also indicate that although there are liars in the multiagent
systems, combination trust computation is better than the trust
computation based only on the experience trust of agents |
format |
Article |
author |
Manh Hung Nguyen, Dinh Que Tran |
author_facet |
Manh Hung Nguyen, Dinh Que Tran |
author_sort |
Manh Hung Nguyen, Dinh Que Tran |
title |
A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System |
title_short |
A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System |
title_full |
A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System |
title_fullStr |
A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System |
title_full_unstemmed |
A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System |
title_sort |
trust-based mechanism for avoiding liars in referring of reputation in multiagent system |
publisher |
(IJARAI) International Journal of Advanced Research in Artificial Intelligence, Vol.4, No.2, 2015 |
publishDate |
2016 |
url |
http://repository.vnu.edu.vn/handle/VNU_123/9892 |
_version_ |
1680963546297401344 |