Accelerated Dual Decomposition for MAP Inference
Date
2010
Authors
Jojic, Vladimir
Gould, Stephen
Koller, Daphne
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Volume Title
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OmniPress
Abstract
Approximate MAP inference in graphical models is an important and challenging problem for many domains including computer vision, computational biology and natural language understanding. Current state-of-the-art approaches employ convex relaxations of these problems as surrogate objectives, but only provide weak running time guarantees. In this paper, we develop an approximate inference algorithm that is both efficient and has strong theoretical guarantees. Specifically, our algorithm is guaranteed to converge to an ε-accurate solution of the convex relaxation in O (1|ε) time. We demonstrate our approach on synthetic and real-world problems and show that it outperforms current state-of-the-art techniques.
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Keywords
Keywords: Approximate inference; Computational biology; Convex relaxation; Dual decomposition; GraphicaL model; Natural language understanding; Real-world problem; Running time; State-of-the-art approach; Bioinformatics; Computer vision; Learning systems; Relaxatio
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Source
Proceedings of International Conference on Machine Learning (ICML 2010)
Type
Conference paper
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Restricted until
2037-12-31
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