A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction Environment

To improve the liveness of agents and enhance trust and collaboration in multiagent system, a new cooperation model based on trust rating in dynamic infinite interaction environment (TR-DII) is proposed. TR-DII model is used to control agent’s autonomy and selfishness and to make agent do the ration...

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Main Author: Sixia Fan
Format: Article
Language:English
Published: Hindawi Limited 2018-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2018/2089596
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spelling doaj-201b85e9d9ee4fea8baa856e0a294e3b2020-11-24T21:14:25ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472018-01-01201810.1155/2018/20895962089596A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction EnvironmentSixia Fan0School of Business, Shanghai Dianji University, Shanghai 201306, ChinaTo improve the liveness of agents and enhance trust and collaboration in multiagent system, a new cooperation model based on trust rating in dynamic infinite interaction environment (TR-DII) is proposed. TR-DII model is used to control agent’s autonomy and selfishness and to make agent do the rational decision. TR-DII model is based on two important components. One is dynamic repeated interaction structure, and the other is trust rating. The dynamic repeated interaction structure is formed with multistage inviting and evaluating actions. It transforms agents’ interactions into an infinity task allocation environment, where controlled and renewable cycle is a component most agent models ignored. Additionally, it influences the expectations and behaviors of agents which may not appear in one-shot time but may appear in long-time cooperation. Moreover, with rewards and punishments mechanism (RPM), the trust rating (TR) is proposed to control agent blindness in selection phase. However, RPM is the factor that directly influences decisions, not the reputation as other models have suggested. Meanwhile, TR could monitor agent’s statuses in which they could be trustworthy or untrustworthy. Also, it refines agent’s disrepute in a new way which is ignored by the others. Finally, grids puzzle experiment has been used to test TR-DII model and other five models are used as comparisons. The results show that TR-DII model can effectively adjust the trust level between agents and makes the solvers be more trustworthy and do choices that are more rational. Moreover, through interaction result feedback, TR-DII model could adjust the income function, to control cooperation reputation, and could achieve a closed-loop control.http://dx.doi.org/10.1155/2018/2089596
collection DOAJ
language English
format Article
sources DOAJ
author Sixia Fan
spellingShingle Sixia Fan
A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction Environment
Mathematical Problems in Engineering
author_facet Sixia Fan
author_sort Sixia Fan
title A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction Environment
title_short A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction Environment
title_full A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction Environment
title_fullStr A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction Environment
title_full_unstemmed A Multiagent Cooperation Model Based on Trust Rating in Dynamic Infinite Interaction Environment
title_sort multiagent cooperation model based on trust rating in dynamic infinite interaction environment
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2018-01-01
description To improve the liveness of agents and enhance trust and collaboration in multiagent system, a new cooperation model based on trust rating in dynamic infinite interaction environment (TR-DII) is proposed. TR-DII model is used to control agent’s autonomy and selfishness and to make agent do the rational decision. TR-DII model is based on two important components. One is dynamic repeated interaction structure, and the other is trust rating. The dynamic repeated interaction structure is formed with multistage inviting and evaluating actions. It transforms agents’ interactions into an infinity task allocation environment, where controlled and renewable cycle is a component most agent models ignored. Additionally, it influences the expectations and behaviors of agents which may not appear in one-shot time but may appear in long-time cooperation. Moreover, with rewards and punishments mechanism (RPM), the trust rating (TR) is proposed to control agent blindness in selection phase. However, RPM is the factor that directly influences decisions, not the reputation as other models have suggested. Meanwhile, TR could monitor agent’s statuses in which they could be trustworthy or untrustworthy. Also, it refines agent’s disrepute in a new way which is ignored by the others. Finally, grids puzzle experiment has been used to test TR-DII model and other five models are used as comparisons. The results show that TR-DII model can effectively adjust the trust level between agents and makes the solvers be more trustworthy and do choices that are more rational. Moreover, through interaction result feedback, TR-DII model could adjust the income function, to control cooperation reputation, and could achieve a closed-loop control.
url http://dx.doi.org/10.1155/2018/2089596
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