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Scenario Sampling for Large Supermodular Games

Social Science Research Network (SSRN), 2023
Abstract

This paper introduces a simulation algorithm for evaluating the log-likelihood function of a large supermodular binary-action game. Covered examples include (certain types of) peer effect, technology adoption, strategic network formation, and multi-market entry games. More generally, the algorithm facilitates simulated maximum likelihood (SML) estimation of games with large numbers of players, TT, and/or many binary actions per player, MM (e.g., games with tens of thousands of strategic actions, TM=O(104)TM=O(10^4)). In such cases the likelihood of the observed pure strategy combination is typically (i) very small and (ii) a TMTM-fold integral who region of integration has a complicated geometry. Direct numerical integration, as well as accept-reject Monte Carlo integration, are computationally impractical in such settings. In contrast, we introduce a novel importance sampling algorithm which allows for accurate likelihood simulation with modest numbers of simulation draws.

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