Open AccessProceedings Article
On Lifting the Gibbs Sampling Algorithm
Deepak Venugopal,Vibhav Gogate +1 more
- 03 Dec 2012
- Vol. 25, pp 1655-1663
TL;DR: This paper considers blocked Gibbs sampling, an advanced MCMC scheme, and proposes to achieve this by partitioning the first-order atoms in the model into a set of disjoint clusters such that exact lifting is polynomial in each cluster given an assignment to all other atoms not in the cluster.
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Abstract: First-order probabilistic models combine the power of first-order logic, the de facto tool for handling relational structure, with probabilistic graphical models, the de facto tool for handling uncertainty. Lifted probabilistic inference algorithms for them have been the subject of much recent research. The main idea in these algorithms is to improve the accuracy and scalability of existing graphical models' inference algorithms by exploiting symmetry in the first-order representation. In this paper, we consider blocked Gibbs sampling, an advanced MCMC scheme, and lift it to the first-order level. We propose to achieve this by partitioning the first-order atoms in the model into a set of disjoint clusters such that exact lifted inference is polynomial in each cluster given an assignment to all other atoms not in the cluster. We propose an approach for constructing the clusters and show how it can be used to trade accuracy with computational complexity in a principled manner. Our experimental evaluation shows that lifted Gibbs sampling is superior to the propositional algorithm in terms of accuracy, scalability and convergence.
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Citations
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Hinge-Loss Markov Random Fields and Probabilistic Soft Logic
TL;DR: In this paper, hinge-loss Markov random fields (HL-MRFs) and probabilistic soft logic (PSL) are proposed to model rich, structured data at scales not previously possible.
250
Lifted graphical models: a survey
TL;DR: A general form for a lifted graphical model, a par-factor graph, is reviewed and a number of existing statistical relational representations map to this formalism, and inference algorithms that efficiently compute the answers to probabilistic queries over such models are discussed.
•Proceedings Article
RockIt: exploiting parallelism and symmetry for MAP inference in statistical relational models
Jan Noessner,Mathias Niepert,Heiner Stuckenschmidt +2 more
- 14 Jul 2013
TL;DR: Extensive experiments with Markov logic network (MLN) benchmarks showing that ROCKIT outperforms the state-of-the-art systems ALCHEMY, MARKOV THEBEAST, and TUFFY both in terms of efficiency and quality of results.
•Posted Content
RockIt: Exploiting Parallelism and Symmetry for MAP Inference in Statistical Relational Models
TL;DR: In this article, the authors present a maximum a-posteriori (MAP) query engine for statistical relational models, which can be compiled to integer linear programs (ILP).
97
Programming with personalized pagerank: a locally groundable first-order probabilistic logic
William Yang Wang,Kathryn Mazaitis,William W. Cohen +2 more
- 27 Oct 2013
TL;DR: A first-order probabilistic language which is well-suited to approximate "local" grounding: in particular, every query can be approximately grounded with a small graph.
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