2013 IEEE/WIC/ACM International Joint Conferences on Web Intelligence (WI) and Intelligent Agent Technologies (IAT) 2013
DOI: 10.1109/wi-iat.2013.91
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Predicting the Performance of Opponent Models in Automated Negotiation

Abstract: Abstract-When two agents settle a mutual concern by negotiating with each other, they usually do not share their preferences so as to avoid exploitation. In such a setting, the agents may need to analyze each other's behavior to make an estimation of the opponent's preferences. This process of opponent modeling makes it possible to find a satisfying negotiation outcome for both parties. A large number of such opponent modeling techniques have already been introduced, together with different measures to assess … Show more

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Cited by 28 publications
(33 citation statements)
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“…To our knowledge, there is limited work in which the performance of different opponent models is compared. Two examples are the work by Papaioannou et al [34], who evaluate a set of techniques that predict the opponent's strategy in terms of resulting performance gain, as well as computational complexity; and Baarslag et al [4,5], who compare the performance and accuracy of preference modeling techniques. The BOA architecture focuses on opponent models which estimate the (partial) preference profile, because most existing available implementations fit in this category; however, in principle, our architecture can accommodate for the other types of opponent models as well.…”
Section: Components Of Negotiation Strategymentioning
confidence: 99%
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“…To our knowledge, there is limited work in which the performance of different opponent models is compared. Two examples are the work by Papaioannou et al [34], who evaluate a set of techniques that predict the opponent's strategy in terms of resulting performance gain, as well as computational complexity; and Baarslag et al [4,5], who compare the performance and accuracy of preference modeling techniques. The BOA architecture focuses on opponent models which estimate the (partial) preference profile, because most existing available implementations fit in this category; however, in principle, our architecture can accommodate for the other types of opponent models as well.…”
Section: Components Of Negotiation Strategymentioning
confidence: 99%
“…For example, by re-implementing the ANAC agents in the BOA architecture, it becomes possible to compare the accuracy of all ANAC opponent models, and to pinpoint the best opponent model among them. Following this approach, we are able to identify a categories of opponent models that outperform others [4,5]; naturally, this helps to build better agents in the future.…”
Section: Employing the Boa Architecturementioning
confidence: 99%
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