We study the marginal-MAP problem on graphical models, and present a novel approximation method based on direct approximation of the sum operation. A primary difficulty of marginal-MAP problems lies in the non-commutativity of the sum and max operations, so that even in highly structured models, marginalization may produce a densely connected graph over the variables to be maximized, resulting in an intractable potential function with exponential size. We propose a chain decomposition approach for summing over the marginalized variables, in which we produce a structured approximation to the MAP component of the problem consisting of only pairwise potentials. We show that this approach is equivalent to the maximization of a specific variational free energy, and it provides an upper bound of the optimal probability. Finally, experimental results demonstrate that our method performs favorably compared to previous methods.
CITATION STYLE
Cheng, Q., Chen, F., Dong, J., Xu, W., & Ihler, A. (2012). Approximating the Sum Operation for Marginal-MAP Inference. In Proceedings of the 26th AAAI Conference on Artificial Intelligence, AAAI 2012 (pp. 1882–1887). AAAI Press. https://doi.org/10.1609/aaai.v26i1.8394
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