4 CONCLUSIONS
We formulate the bimatrix game with random payoffs
as a chance-constrained game. We consider the case
where the entries of payoff matrices are independent
random variables following a certain distribution. In
particular, we discuss the case of normal and Cauchy
distributions. We show that the chance-constrained
game corresponding to normal distribution can be for-
mulated as an equivalent NCP. Further if the entries of
payoff matrices are also identically distributed with
non-negative mean, a uniform strategy pair is a Nash
equilibrium. We show that the chance-constrained
game corresponding to Cauchy distribution can be
formulated as an equivalent LCP. Recently, the elec-
tricity markets over the past few years have been
transformed from nationalized monopolies into com-
petitive markets with privately owned participants.
The uncertainties in electricity markets are present
due to various external factors. These situations can
be modeled as chance-constrained games and the ap-
proaches developed in this paper can be applied to
compute the Nash equilibrium.
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