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 learning tree structured potential game


Learning Tree Structured Potential Games

Neural Information Processing Systems

Many real phenomena, including behaviors, involve strategic interactions that can be learned from data. We focus on learning tree structured potential games where equilibria are represented by local maxima of an underlying potential function. We cast the learning problem within a max margin setting and show that the problem is NP-hard even when the strategic interactions form a tree. We develop a variant of dual decomposition to estimate the underlying game and demonstrate with synthetic and real decision/voting data that the game theoretic perspective (carving out local maxima) enables meaningful recovery.


Learning Tree Structured Potential Games

Vikas Garg, Tommi Jaakkola

Neural Information Processing Systems

Indeed, there may be many possible equilibria in a specific context, and the particular choice may vary considerably. Each possible configuration is nevertheless characterized by local constraints that represent myopic optimizations of individual players. For example, senators can be thought to vote relative to give and take deals with other closely associated senators.


Reviews: Learning Tree Structured Potential Games

Neural Information Processing Systems

The problem presented in the paper is interesting. In general the notion of using games and their results as samples is intriguing. The locally-optimal nature of equilibria seems interesting to explore, especially since many methods (such as structured prediction) usually focus on MAP assignments. While the general idea is interesting, the experiments are disappointing, and suggest that the method is computationally prohibitive and cannot be used in practice. The lack of guarantees on the optimization process is also discouraging.


Learning Tree Structured Potential Games

Neural Information Processing Systems

Many real phenomena, including behaviors, involve strategic interactions that can be learned from data. We focus on learning tree structured potential games where equilibria are represented by local maxima of an underlying potential function. We cast the learning problem within a max margin setting and show that the problem is NP-hard even when the strategic interactions form a tree. We develop a variant of dual decomposition to estimate the underlying game and demonstrate with synthetic and real decision/voting data that the game theoretic perspective (carving out local maxima) enables meaningful recovery.


Learning Tree Structured Potential Games

Garg, Vikas, Jaakkola, Tommi

Neural Information Processing Systems

Many real phenomena, including behaviors, involve strategic interactions that can be learned from data. We focus on learning tree structured potential games where equilibria are represented by local maxima of an underlying potential function. We cast the learning problem within a max margin setting and show that the problem is NP-hard even when the strategic interactions form a tree. We develop a variant of dual decomposition to estimate the underlying game and demonstrate with synthetic and real decision/voting data that the game theoretic perspective (carving out local maxima) enables meaningful recovery. Papers published at the Neural Information Processing Systems Conference.

  learning tree structured potential game, local maxima

Learning Tree Structured Potential Games

Garg, Vikas, Jaakkola, Tommi

Neural Information Processing Systems

Many real phenomena, including behaviors, involve strategic interactions that can be learned from data. We focus on learning tree structured potential games where equilibria are represented by local maxima of an underlying potential function. We cast the learning problem within a max margin setting and show that the problem is NP-hard even when the strategic interactions form a tree. We develop a variant of dual decomposition to estimate the underlying game and demonstrate with synthetic and real decision/voting data that the game theoretic perspective (carving out local maxima) enables meaningful recovery.