AND/OR Branch-and-Bound for Graphical Models
نویسندگان
چکیده
The paper presents and evaluates the power of a new framework for optimization in graphical models, based on AND/OR search spaces. The virtue of the AND/OR representation of the search space is that its size may be far smaller than that of a traditional OR representation. We develop our work on Constraint Optimization Problems (COP) and introduce a new generation of depth-first Branch-and-Bound algorithms that explore an AND/OR search space and use static and dynamic mini-bucket heuristics to guide the search. We focus on two optimization problems, solving Weighted CSPs (WCSP) and finding the Most Probable Explanation (MPE) in belief networks. We show that the new AND/OR approach improves considerably over the classic OR space, on a variety of benchmarks including random and real-world problems. We also demonstrate the impact of different lower bounding heuristics on Branch-and-Bound exploring AND/OR spaces.
منابع مشابه
Weighted anytime search: new schemes for optimization over graphical models
Weighted search (best-first or depth-first) refers to search with a heuristic function multiplied by a constant w [Pohl (1970)]. The paper shows for the first time that for graphical models optimization queries weighted best-first and weighted depth-first Branch and Bound search schemes are competitive energy-minimization anytime optimization algorithms. Weighted best-first schemes were investi...
متن کاملPreliminary Empirical Evaluation of Anytime Weighted AND/OR Best-First Search for MAP
We explore the potential of anytime best-first search schemes for combinatorial optimization tasks over graphical models (e.g., MAP/MPE). We show that recent advances in extending best-first search into an anytime scheme have a potential for optimization for graphical models. Importantly, these schemes come with upper bound guarantees and are sometime competitive with known effective anytime br...
متن کاملDynamic Orderings for AND/OR Branch-and-Bound Search in Graphical Models
AND/OR search spaces have recently been introduced as a unifying paradigm for advanced algorithmic schemes for graphical models. The main virtue of this representation is its sensitivity to the structure of the model, which can translate into exponential time savings for search algorithms. Since the variable selection can have a dramatic impact on search performance when solving optimization ta...
متن کاملAnytime AND/OR Best-First Search for Optimization in Graphical Models
Depth-first search schemes are known to be more cost-effective for solving graphical models tasks than Best-First Search schemes. In this paper we show however that anytime Best-First algorithms recently developed for path-finding problems, can fare well when applied to graphical models. Specifically, we augment best-first schemes designed for graphical models with such anytime capabilities and...
متن کاملSEARCHING FOR M BEST SOLUTIONS IN GRAPHICAL MODELS Searching For M Best Solutions In Graphical Models
The paper focuses on finding the m best solutions to combinatorial optimization problems using best-first or depth-first branch and bound search. Specifically, we present a new algorithm m-A*, extending the well-known A* to the m-best task, and for the first time prove that all its desirable properties, including soundness, completeness and optimal efficiency, are maintained. Since bestfirst al...
متن کاملSEARCHING FOR THE M BEST SOLUTIONS IN GRAPHICAL MODELS Searching For The M Best Solutions In Graphical Models
The paper focuses on finding the m best solutions to combinatorial optimization problems using best-first or depth-first branch and bound search. Specifically, we present a new algorithm mA*, extending the well-known A* to them-best task, and for the first time prove that all its desirable properties, including soundness, completeness and optimal efficiency, are maintained. Since bestfirst algo...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2005