Version 51 (modified by mark, 14 years ago) ( diff )

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Literature Survey: Opponent Models

This page provides an overview of the literature survey of Mark Hendrikx. The first Section discusses the researched papers, including a summary
of the relevant details. The second Section provides an overview of all meetings. Finally, the third Section outlines a global planning.
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Papers

TitleA Framework for Building Intelligent SLA Negotiation Strategies under Time Constraints
Author(s)G.C. Silaghi, L.D. Şerban and C.M. Litan
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Summary
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TitleA Framework for Multi-agent Electronic Marketplaces: Analysis and Classification of Existing Systems
Author(s)K. Kurbel and I. Loutchko
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TitleAgentFSEGA - Time Constrained Reasoning Model for Bilateral Multi-Issue Negotiation
Author(s)L.D. Serban, G.C. Silaghi, and C.M. Litan
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TitleAn Architecture for Negotiating Agents that Learn
Author(s)H.H. Bui, S. Venkatesh, and D. Kieronska
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Summary
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Cites seenYes


TitleAnalysis of Negotiation Dynamics
Author(s)K. Hindriks, C.M. Jonker, D. Tykhonov
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TitleAnticipating Agent's Negotiation Strategies in an E-marketplace Using Belief Models
Author(s)F. Teuteberg, K. Kurbel
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TitleBayesian Learning in Bilateral Multi-issue Negotiation and its Application in MAS-based Electronic Commerce
Author(s)J. Li, Y. Cao
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Cites seenYes


TitleBenefits of Learning in Negotiation
Author(s)D. Zeng, K. Sycara
Subject(s)Benefits of learning, Bayesian learning, reservation values
Summary Growing interest in e-commerce motivates research in automated negotiation. Building intelligent negotiation agents is still
emerging. In contrast to most negotiation models, sequential decision model allows for learning. Learning can help understand
human behaviour, but can also result in better results for the learning party. Bayesian learning of reservation
values can be used to determine the zone of agreement for an issue based on the domain knowledge and bidding interactions.
Concluding for one-issue, learning positively influences bargaining quality, number of exchanged proposals,
and leads to a better compromise if both learn. Learning works always works better in the proposed case.
Relevance8. Strong example of Bayesian learning
BibtexLink
Cites seenYes


TitleBayesian Learning in Negotiation
Author(s)D. Zeng, K. Sycara
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TitleBilateral Negotiation with Incomplete and Uncertain Information
Author(s)C. Mudgal, J. Vassileva
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Cites seenYes


TitleCompromising Strategy based on Estimated Maximum Utility for Automated Negotiating Agents
Author(s)S. Kawaguchi, K. Fujita, T. Ito
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Cites seen


TitleFacing the Challenge of Human-Agent Negotiations via Effective General Opponent Modeling
Author(s)J. Li, Y. Cao
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TitleIAMhaggler: A Negotiation Agent for Complex Environments
Author(s)C.R. Williams, V. Robu, E.H. Gerding, and N.R. Jennings
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TitleInferring implicit preferences from negotiation actions
Author(s)A. Restificar and P. Haddawy
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TitleLearning algorithms for single-instance electronic negotiations using the time-dependent behavioral tactic
Author(s)W.W.H Mok and R.P. Sundarraj
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TitleLearning an Opponent's Preferences to Make Effective Multi-Issue Negotiation Trade-Offs
Author(s)R.M. Coehoorn, N.R. Jennings
Subject(s)KDE Learning, Negotiation model, Concession based strategy
Summary Effective and efficient multi-issue negotiation requires an agent to have some indication of it's opponent's preferences
over the issues in the domain. Kernel Density Estimation (KDE) is used to estimate the weight attached to different issues
by different agents. It is assumed that if the value of an issue increases, that this is positive for one agent, and negative
for the other. No assumptions about relation between time, negotiation history and issue-weight are required, in contrast
to Bayesian learning. The difference between concessive (counter)offers is used to estimate the weights of the issues
(assumption: stronger concessions are made later on in the negotiation). Faratin's hill climbing algorithm augmented with KDE is
used to propose the next bid. KDE proved succesful on the used negotiation model. Future works entails testing the approach
against different opponent strategies and extending the approach to other negotiation models (see assumption in summary).
Relevance9. KDE learning described in detail. Strong related work section
BibtexLink
Cites seenYes


TitleLearning Opponents' Preferences in Multi-Object Automated Negotiation
Author(s)S. Buffett and B. Spencer
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TitleLearning other agents' preferences in multiagent negotiation
Author(s)H.H. Bui, D. Kieronska, S. Venkatesh
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Cites seenYes


TitleModeling opponent decision in repeated one-shot negotiations
Author(s)S.Saha, A. Biswas, S. Sen
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TitleNegotiation Decision Functions for Autonomous Agent
Author(s)P. Faratin, C. Sierra, N.R. Jennings
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TitleNegotiation Dynamics: Analysis, Concession Tactics, and Outcomes
Author(s)K. Hindriks, C.M. Jonker, D. Tykhonov
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TitleOn-Line Incremental Learning in Bilateral Multi-Issue Negotiation
Author(s)V. Soo, C. Hung
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Cites seenYes


TitleOpponent Model Estimation in Bilateral Multi-issue Negotiation
Author(s)N. van Galen Last
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TitleOpponent Modelling in Automated Multi-Issue Negotiation Using Bayesian Learning
Author(s)K. Hindriks, D. Tykhonov
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Summary
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Cites seenYes


TitleThe Benefits of Opponent Models in Negotiation
Author(s)K. Hindriks, C.M. Jonker, D. Tykhonov
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Cites seenYes


TitleThe First Automated Negotiating Agents Competition (ANAC 2010)
Author(s)T. Baarslag, K. Hindriks, C. Jonker, S. Kraus, R. Lin
Subject(s)ANAC, overview multiple agents, opponent models, acceptance conditions
SummaryThe ANAC competition models bilateral multi-issue closed negotiations and provides a benchmark for negotiation agents.
Opponent models can also be used to identify the type of strategy of the opponent. Interesting agents for further analysis
are: IAM(crazy)Haggler, FSEGA (profile learning), and Agent Smith. Issues can be predicatable, which means that they
have a logical order, or unpredicatable, such as colors. This paper also includes acceptance conditions.
Relevance5, too global, however interesting citations
BibtexLink
Cites seen


TitleTowards a Quality Assessment Method for Learning Preference Profiles in Negotiation
Author(s)K.V. Hindriks and D. Tykhonov
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Cites seenYes


TitleUsing Similarity Criteria to Make Issue Trade-offs in Automated Negotiations
Author(s)P. Faratin, C. Sierra, N.R. Jennings
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Summary
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Cites seen


TitleYushu: a Heuristic-Based Agent for Automated Negotiating Competition
Author(s)B. An and V. Lesser
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BibtexX
Cites seen


Meetings

Onaangekondigde Meeting (20/04/11)

In verband met de conferentie in Taiwan is in overleg met Tim besproken dat we waarschijnlijk meer tijd nodig gaan hebben voor ons paper.
Dit houdt in dat de deadline is verschoven naar begin september. Als persoonlijk doel heb ik gesteld om eind juni een kladversie te hebben.

Planning

26/04/11Meeste interessante papers gevonden
28/04/11 - 09/05-11Conferentie bijwonen en op laag tempo doorwerken
23/05/11Alle papers samengevat
26/05/11Opzet taxonomie
29/06/11Kladversie paper af

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