Abstract
Game theory is an interdisciplinary approach to the study of human behavior. Games describe a widely accepted framework for representing interactive decision-making. Artificial Neural Networks (ANNs) are universal approximators and have the ability of learning. Combining ANNs with game representation, we introduced a new architecture by which the learning abilities of ANNs are utilized to predict game behavior. Based on previous work, we investigated further the potential value of neural networks for modeling and predicting human interactive learning in repeated games. We conducted simulation studies based on the new model using experiments data which are provided by authors other than this paper. Through computer simulations and comparing with other models, we demonstrated that our model is superior in many respects to other models on ten experiments.
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References
Hu, X., Wang, J.: A Recurrent Neural Network for Solving a Class of General Variational Inequalities. IEEE Transactions on Systems, Man and Cybernetics 37(3), 528–539 (2007)
Liu, Q., Wang, J.: A One-Layer Recurrent Neural Network With a Discontinuous Hard-Limiting Activation Function for Quadratic Programming. IEEE Transactions on Neural Networks 19(3), 558–570 (2008)
Cohen, M.D.: Learning with Regret. Science 319, 1052–1053 (2008)
Erev, I., Roth, A.: Predicting How People Play Games: Reinforcement Learning in Experimental Games with Unique, Mixed-strategy Equilibria. Am. Econ. Rev. 88, 848–881 (1998)
Erev, I., Roth, A., Slonim, L., Barron, G.: Learning and Equilibrium as Useful Approximations: Accuracy of Prediction on Randomly Selected Constant Sum Games. Econ. Theory 33, 29–51 (2007)
Camerer, C., Ho, T.H.: Experience-weighted Attraction Learning in Formal Games. Econometrica 67, 827–874 (1999)
Ho, T.-H., Camerer, C., Chong, J.-K.: Self-tuning Experience-weighted Attraction Learning in Games. J. of Econ. Theory 133, 177–198 (2007)
Ert, E., Erev, I.: Replicated Alternatives and the Role of Confusion, Chasing and Regret in Decisions from Experience. J. Behav. Decision Making 20, 305–322 (2007)
Marchiori, D., Warglien, M.: Predicting Human Interactive Learing by Regret-Driven Neural Networks. Science 319, 1111–1113 (2008)
Camerer, C.F.: Behavioral Game Theory: Experiments on Strategic Interaction Princeton. Princeton University Press, NJ (2003)
Nash, J.F.: Equilibrium Points in N-Person Games. Mathematics 36, 48–49 (1950)
Hertz, J., Krogh, A., Palmer, R.G.: Introduction to the Theory of Neural Computation. Addison-Wesley, Redwood City (1991)
Hopfield, J.J.: Learning Algorithms and Probability Distributions in Feed-forward and Feed-back Networks. Proc. Natl. Acad. Sci. U.S.A. 84, 8429–8433 (1987)
Selten, R., Stöcker, R.: End behavior in Sequences of Finite Prisoner’s Dilemma Supergames a learning Theory Approach. J. Econ. Behav. Organ. 7, 47–70 (1986)
Camille, N., et al.: The Involvement of the Orbitofrontal Cortex in the Experience of Regret. Science 304, 1167–1170 (2004)
Coricelli, G., et al.: Regret and Its Avoidance: a Neuroimaging Study of Choice Behavior. Nat. Neurosci. 8, 1255–1262 (2005)
Lee, D.: Neuroeconomics Best to Go with What You Know. Nature 441, 822–823 (2006)
Selten, R.: Axiomatic Characterization of the Quadratic Scoring Rule. Exp. Econ. 1, 43–61 (1998)
Erev, I., Roth, A., Slonim, L., Barron, G.: Predictive Value and the Usefulness of Game Theoretic Models. Int. J. of Forecasting 18, 359–368 (2002)
Lieberman, B., Malcom, D.: The Behavior of Responsive Individuals Playing a two- person, Zero Sum Game Requiring the Use of Mixed Strategies. Psychonomic Science 12, 373–374 (1965)
O’Neill, B.: Nunmetric Test of the Minimax Theory of Two Person Zerosum Games. Proc. Natl. Acad. Sciences U.S.A. 84, 2106–2109 (1987)
Avrahami, J., Guth, W., Kareev, Y.: Games of Competition in a Stochastic Environment. Theory and Decision 59, 255–294 (2005)
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Sun, Q., Ren, G., Qi, X. (2009). Interactive Learning Neural Networks for Predicting Game Behavior. In: Yu, W., He, H., Zhang, N. (eds) Advances in Neural Networks – ISNN 2009. ISNN 2009. Lecture Notes in Computer Science, vol 5551. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-01507-6_87
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DOI: https://doi.org/10.1007/978-3-642-01507-6_87
Publisher Name: Springer, Berlin, Heidelberg
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