Variational Algorithms for Marginal MAP
Qiang Liu, Alexander Ihler

TL;DR
This paper introduces a unified variational framework for marginal MAP inference, developing new message passing algorithms that improve accuracy and convergence guarantees over existing methods.
Contribution
It derives a dual variational formulation for marginal MAP and proposes novel mixed-product message passing algorithms with convergence guarantees.
Findings
Algorithms outperform existing methods in accuracy.
New upper bounds on the optimal objectives are provided.
Convergence guarantees are established for the proposed algorithms.
Abstract
The marginal maximum a posteriori probability (MAP) estimation problem, which calculates the mode of the marginal posterior distribution of a subset of variables with the remaining variables marginalized, is an important inference problem in many models, such as those with hidden variables or uncertain parameters. Unfortunately, marginal MAP can be NP-hard even on trees, and has attracted less attention in the literature compared to the joint MAP (maximization) and marginalization problems. We derive a general dual representation for marginal MAP that naturally integrates the marginalization and maximization operations into a joint variational optimization problem, making it possible to easily extend most or all variational-based algorithms to marginal MAP. In particular, we derive a set of "mixed-product" message passing algorithms for marginal MAP, whose form is a hybrid of…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Machine Learning and Algorithms · Error Correcting Code Techniques
