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Parallel Recursive Best-First AND/OR Search for Exact MAP Inference in Graphical Models

Neural Information Processing Systems

The paper presents and evaluates the power of parallel search for exact MAP inference in graphical models. We introduce a new parallel shared-memory recursive best-first AND/OR search algorithm, called SPRBFAOO, that explores the search space in a best-first manner while operating with restricted memory. Our experiments show that SPRBFAOO is often superior to the current state-of-the-art sequential AND/OR search approaches, leading to considerable speed-ups (up to 7-fold with 12 threads), especially on hard problem instances.



Export Reviews, Discussions, Author Feedback and Meta-Reviews

Neural Information Processing Systems

We thank the reviewers for the detailed comments and feedback. In the following we will address some of the issues that have been raised by the reviewers. Current state-of-the-art is represented by search based algorithms guided by either mini-bucket heuristics (daoopt, AOBB) or soft local consistency (toulbar). These algorithms were compared against each other in the past 2-4 UAI competitions and were shown to be both winning and overall both quite competitive. Since we compare with one of these schemes we believe we compare against state-of-the-art for exact MAP inference. For example, to the best of our knowledge, the type4/largeFam instances shown in Table 4 are solved only by RBFAOO/SPRBFAOO with the mini-bucket heuristics.


Parallel Recursive Best-First AND/OR Search for Exact MAP Inference in Graphical Models

Neural Information Processing Systems

The paper presents and evaluates the power of parallel search for exact MAP inference in graphical models. We introduce a new parallel shared-memory recursive best-first AND/OR search algorithm, called SPRBFAOO, that explores the search space in a best-first manner while operating with restricted memory. Our experiments show that SPRBFAOO is often superior to the current state-of-the-art sequential AND/OR search approaches, leading to considerable speed-ups (up to 7-fold with 12 threads), especially on hard problem instances.


Parallel Recursive Best-First AND/OR Search for Exact MAP Inference in Graphical Models

Neural Information Processing Systems

The paper presents and evaluates the power of parallel search for exact MAP inference in graphical models. We introduce a new parallel shared-memory recursive best-first AND/OR search algorithm, called SPRBFAOO, that explores the search space in a best-first manner while operating with restricted memory. Our experiments show that SPRBFAOO is often superior to the current state-of-the-art sequential AND/OR search approaches, leading to considerable speed-ups (up to 7-fold with 12 threads), especially on hard problem instances.


Parallel Recursive Best-First AND/OR Search for Exact MAP Inference in Graphical Models

Kishimoto, Akihiro, Marinescu, Radu, Botea, Adi

Neural Information Processing Systems

The paper presents and evaluates the power of parallel search for exact MAP inference in graphical models. We introduce a new parallel shared-memory recursive best-first AND/OR search algorithm, called SPRBFAOO, that explores the search space in a best-first manner while operating with restricted memory. Our experiments show that SPRBFAOO is often superior to the current state-of-the-art sequential AND/OR search approaches, leading to considerable speed-ups (up to 7-fold with 12 threads), especially on hard problem instances. Papers published at the Neural Information Processing Systems Conference.


Parallel Recursive Best-First AND/OR Search for Exact MAP Inference in Graphical Models

Kishimoto, Akihiro, Marinescu, Radu, Botea, Adi

Neural Information Processing Systems

The paper presents and evaluates the power of parallel search for exact MAP inference in graphical models. We introduce a new parallel shared-memory recursive best-first AND/OR search algorithm, called SPRBFAOO, that explores the search space in a best-first manner while operating with restricted memory. Our experiments show that SPRBFAOO is often superior to the current state-of-the-art sequential AND/OR search approaches, leading to considerable speed-ups (up to 7-fold with 12 threads), especially on hard problem instances.