Classification-based self-adaptive differential evolution and its application in multi-lateral multi-issue negotiation
Xiaojun BI, Jing XIAO
Classification-based self-adaptive differential evolution and its application in multi-lateral multi-issue negotiation
Multi-lateral multi-issue negotiations are the most complex realistic negotiation problems. Automated approaches have proven particularly promising for complex negotiations and previous research indicates evolutionary computation could be useful for such complex systems. To improve the efficiency of realistic multi-lateral multi-issue negotiations and avoid the requirement of complete information about negotiators, a novel negotiation model based on an improved evolutionary algorithm p-ADE is proposed. The new model includes a new multi-agent negotiation protocol and strategy which utilize p-ADE to improve the negotiation efficiency by generating more acceptable solutions with stronger suitability for all the participants. Where p-ADE is improved based on the well-known differential evolution (DE), in which a new classification-based mutation strategy DE/rand-to-best/pbest as well as a dynamic self-adaptive parameter setting strategy are proposed. Experimental results confirm the superiority of p-ADE over several state-of-the-art evolutionary optimizers. In addition, the p-ADE based multiagent negotiation model shows good performance in solving realistic multi-lateral multi-issue negotiations.
differential evolution / global optimum / ecommerce / agent / multi-lateral multi-issue negotiation
[1] |
Kleindorfer P R, Kunreuther H C, Schoemaker P J H. Decision Sciences: An Integrative Perspective. Cambridge: Cambridge University Press, 1993
|
[2] |
Krovi R, Graesser A, Pracht W. Agent behaviors in virtual negotiation environments. IEEE Transactions on Systems, Man, and Cybernetics, Part C: Applications and Reviews, 1999, 29(1): 15-25
CrossRef
Google scholar
|
[3] |
Lomuscio A R, Wooldridge M, Jennings N R. A classification scheme for negotiation in electronic commerce. Journal of Group Decision and Negotiation, 2003, 12(1): 31-56
CrossRef
Google scholar
|
[4] |
Rubenstein-Montano B, Malaga R. A co-evolutionary approach to strategy design for decision makers in complex negotiation situations. In: Proceedings of the 33rd Hawaii International Conference on System Sciences. 2000
|
[5] |
Jennings N R, Faratin P, Lomuscio A R, Parsons S, Sierra C, Wooldridge M. Automated negotiation: prospects, methods and challenges. Journal of Group Decision and Negotiation, 2001, 10(2): 199-215
CrossRef
Google scholar
|
[6] |
Lin R, Kraus S, Wilkenfeld J, Barry J. Negotiating with bounded rational agents in environments with incomplete information using an automated agent. Artificial Intelligence, 2008, 172(6): 823-851
CrossRef
Google scholar
|
[7] |
Wang Y, Lin K J. Reputation-oriented trustworthy computing in ecommerce environments. IEEE Internet Computing, 2008, 12(4): 55-59
CrossRef
Google scholar
|
[8] |
Von-Neumann J, Morgenstern O. The Theory of Games and Economic Behavior. Princeton: Princeton University Press, 1994
|
[9] |
Fatima S, Wooldridge M, Jennings N R. Comparing equilibria for game theoretic and evolutionary bargaining models. In: Proceedings of the 5th International Workshop on Agent-Mediated Electronic Commerce. 2003, 70-77
|
[10] |
Ehtamo H, Ketteunen E, Hämäläinen R P. Searching for joint gains in multi-party negotiations. European Journal of Operational Research, 2001, 130(1): 54-69
CrossRef
Google scholar
|
[11] |
Fatima S S,Wooldridge M, Jennings N R. An agenda based framework for multi-issues negotiation. Artificial Intelligence, 2004, 152(1): 1-45
CrossRef
Google scholar
|
[12] |
He M, Jennings N R, Leung H. On agent-mediated electronic commerce. IEEE Transactions on Knowledge and Data Engineering, 2003, 15(4): 985-1003
CrossRef
Google scholar
|
[13] |
Gerding E, Van B D, Poutré H L. Multi-issue negotiation processes by evolutionary simulation, validation and social extensions. Computational Economics, 2003,
CrossRef
Google scholar
|
[14] |
Cooper S, Taleb-Bendiab A. Concensus: multi-party negotiation support for conflict resolution in concurrent engineering design. Journal of Intelligent Manufacturing, 1998, 9(2): 155-159
CrossRef
Google scholar
|
[15] |
Matwin S, Szapiro T, Haigh K. Genetic algorithms approach to a negotiation support system. IEEE Transactions on Systems, Man and Cybernetics, 1991, 21(1): 102-114
CrossRef
Google scholar
|
[16] |
Dworman G, Kimbrough S O, Laing J D. On automated discovery of models using genetic programming in game-theoretic contexts. In: Proceedings of the 28th Hawaii International Conference on System Sciences. 1995, 428-438
|
[17] |
Luke S, Spector L. Evolving teamwork and coordination with genetic programming. In: Proceedings of the 1st Annual Conference on Genetic Programming. 1996, 150-156
|
[18] |
Rubenstein-Montano B, Malaga R A. A weighted sum genetic algorithm to support multiple-party multi-objective negotiations. IEEE Transactions on Evolutionary Computation, 2002, 6(4): 366-377
CrossRef
Google scholar
|
[19] |
Rubenstein-Montano B, Yoonb V, Drummeyc K, Liebowitz J. Agent learning in the multi-agent contracting system. Decision Support Systems, 2008, 45(1): 140-149
CrossRef
Google scholar
|
[20] |
Li J, Deng D M. An agent negotiation system based on adaptive genetic algorithm. In: Proceedings of the 5th International Conference on Wireless Communications, Networking and Mobile Computing. 2009, 1-4
|
[21] |
Li J, Wang L C, Jing B. An agent bilateral multi-issue simultaneous bidding negotiation protocol based on genetic algorithm and its application in e-commerce. In: Proceedings of 2008 Congress on Image and Signal Processing. 2009, 395-398
|
[22] |
Li J, Jing B, Yang Y X. Multi-lateral multi-issue negotiation based on hybrid genetic algorithm and its application in e-commerce. Transactions of Beijing Institute of Technology, 2008, 28(10): 890-893 (in Chinese)
|
[23] |
Storn R, Price K. Differential evolution-a simple and efficient heuristic for global optimization over continuous spaces. Journal of Global Optimization, 1997, 11(4): 341-359
CrossRef
Google scholar
|
[24] |
Price K V. An Introduction to Differential Evolution. Maidenhead: McGraw-Hill, 1999, 79-108
|
[25] |
Ilonen J, Kamarainen J K, Lampinen J. Differential evolution training algorithm for feed-forward neural networks. Neural Process Letters, 2003, 17(1): 93-105
CrossRef
Google scholar
|
[26] |
Storn R. Designing nonstandard filters with differential evolution. IEEE Signal Processing Magazine, 2005, 22(1): 103-106
CrossRef
Google scholar
|
[27] |
Rogalsky T, Derksen R W, Kocabiyik S. Differential evolution in aerodynamic optimization. In: Proceedings of the 46th Annual Conference of Canadian Aeronautics and Space Institute. 1999, 29-36
|
[28] |
Joshi R, Sanderson A C. Minimal representation multisensory fusion using differential evolution. IEEE Transactions on Systems, Man, and Cybernetics, Part A: Systems and Humans, 1999, 29(1): 63-76
CrossRef
Google scholar
|
[29] |
Qin A K, Suganthan P N. Self-adaptive differential evolution algorithm for numerical optimization. In: Proceedings of 2005 IEEE Congress on Evolutionary Computation. 2005,
|
[30] |
Noman N, Iba H. Enhancing differential evolution performance with local search for high dimensional function optimization. In: Proceedings of 2005 Genetic and Evolutionary Computation Conference. 2005, 967-974
|
[31] |
Bui L T, Shan Y, Qi F. Comparing two versions of differential evolution in real parameter optimization. Technical Report TR-ALAR-200504009, 2005
|
[32] |
Das S, Konar A, Chakraborty U K. Two improved differential evolution schemes for faster global search. In: Proceedings of 2005 Genetic Evolutionary Computation. 2005, 991-998
|
[33] |
Vesterstrom J, Thomson R. A comparative study of differential evolution, particle swarm optimization, and evolutionary algorithms on numerical benchmark problems. In: Proceedings of 2004 IEEE Congress on Evolutionary Computation. 2004, 1980-1987
|
[34] |
Mezura-Montes E, Velázquez-Reyes J, Coello C A C. A comparative study of differential evolution variants for global optimization. In: Proceedings of the 8th Annual Conference on Genetic and Evolutionary Computation. 2006, 485-492
|
[35] |
Kennedy J, Eberhart R. Particle swarm optimization. In: Proceedings of 1995 IEEE International Conference on Neural Networks. 1995, 1942-1948
|
[36] |
Jeyakumar G, Velayutham C S. A comparative performance analysis of differential evolution and dynamic differential evolution variants. In: Proceedings of 2009 World Congress on Nature & Biologically Inspired Computing. 2009, 463-468
|
[37] |
Eiben A E, Smith J E. Introduction to Evolutionary Computing. Berlin: Springer, 2003
|
[38] |
Eiben A E, Hinterding R, Michalewicz Z. Parameter control in evolutionary algorithms. IEEE Transactions on Evolutionary Computation, 1999, 3(2): 124-141
CrossRef
Google scholar
|
[39] |
Qin A K, Huang V L, Suganthan P N. Differential evolution algorithm with strategy adaptation for global numerical optimization. IEEE Transactions on Evolutionary Computation, 2009, 13(2): 398-417
CrossRef
Google scholar
|
[40] |
Teo J. Exploring dynamic self-adaptive populations in differential evolution. Soft Computation, 2006, 10(8): 637-686
CrossRef
Google scholar
|
[41] |
Brest J, Greiner S, BoškovisćB, Mernik M, Žumer V. Self-adapting control parameters in differential evolution: a comparative study on numerical benchmark problems. IEEE Transactions on Evolutionary Computation, 2006, 10(6): 646-657
CrossRef
Google scholar
|
[42] |
Brest J, Bošković, Greiner S, Žumer V, Maučcec M S. Performance comparison of self-adaptive and adaptive differential evolution algorithms. Soft Computation, 2007, 11(7): 617-629
CrossRef
Google scholar
|
[43] |
Liu J, Lampinen J. Adaptive parameter control of differential evolution. In: Proceedings of the 8th International Mendel Conference on Soft Computing. 2002, 19-26
|
[44] |
Liu M. Differential evolution algorithms and modification. Systems Engineering, 2005, 23(2): 108-111 (in Chinese)
|
[45] |
Das S, Abraham A. Differential evolution using a neighborhood-based mutation operator. IEEE Transactions on Evolutionary Computation, 2009, 13(3): 526-553
CrossRef
Google scholar
|
[46] |
Zhang J Q, Sanderson A C. JADE: self-adaptive differential evolution with fast and reliable convergence performance. In: Proceedings of 2007 IEEE Congress on Evolution Computation. 2007, 2251-2258
|
[47] |
Liang L L, Qin A K, Suganthan P N. Comprehensive learning particle swarm optimizer for global optimization of multimodal functions. IEEE Transactions on Evolutionary Computation, 2006, 10(3): 281-295
CrossRef
Google scholar
|
[48] |
Beheshti R, Rahmani A T. A multi-objective genetic algorithm method to support multi-agent negotiations. In: Proceedings of the 2nd International Conference on Future Information Technology and Management Engineering. 2009, 596-599
|
[49] |
Park S, Yang S B. An efficient multilateral negotiation system for pervasive computing environments. Engineering Applications of Artificial Intelligence, 2008, 21(4): 633-643
CrossRef
Google scholar
|
[50] |
Lau R Y K. Towards a web services and intelligent agents-based negotiation system for B2B e-commerce. Electronic Commerce Research and Applications, 2007, 6(3): 260-273
CrossRef
Google scholar
|
[51] |
Lau R Y K. Towards genetically optimized multi-agent multi-issue negotiations. In: Proceedings of the 38th Hawaii International Conference on System Sciences. 2005
|
[52] |
Kebriaei H, Majd V H, Rahimi-Kian A. A new agent matching scheme using an ordered fuzzy similarity measure and game theory. Computational Intelligence, 2008, 24(2): 108-121
CrossRef
Google scholar
|
[53] |
Du T C, Chen H L. Building a multiple-criteria negotiation support system. IEEE Transactions on Knowledge and Data Engineering, 2007, 19(6): 804-817
CrossRef
Google scholar
|
[54] |
Kraus S, Hoz-Weiss P, Wilkenfeld J, Andersen D R, Pate A. Resolving crises through automated bilateral negotiations. Artificial Intelligence, 2008, 172(1): 1-18
CrossRef
Google scholar
|
[55] |
Suganthan P N, Hansen N, Liang J J, Deb K, Chen Y P, Auger A, Tiwari S. Problem definitions and evaluation criteria for the CEC 2005 special session on real-parameter optimization. Nanyang Technological University Technical Report. 2005
|
/
〈 | 〉 |