Previously proposed variational techniques for approximate MMAP inference in complex graphical models of high-order factors relax a dual variational objective function to obtain its tractable approximation, and further perform MMAP inference in the resulting simplified graphical model, where the sub-graph with decision variables is assumed to be a disconnected forest. In contrast, we developed novel variational MMAP inference algorithms and proximal convergent solvers, where we can improve the approximation accuracy while better preserving the original MMAP query by designing such a dual variational objective function that an upper bound approximation is applied only to the entropy of decision variables. We evaluate the proposed algorithms ...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
As a promising alternative to using standard (often intractable) planning techniques with Bellman eq...
Markov Decision Processes (MDPs) are extremely useful for modeling and solv-ing sequential decision ...
Probabilistic graphical models such as Markov random fields, Bayesian networks and decision networks...
We propose a cutting-plane style algorithm for finding the maximum a posteriori (MAP) state and appr...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
ABSTRACT While most current work in POMDP planning focus on the development of scalable approximate ...
We introduce an algorithm, based on the Frank-Wolfe technique (conditional gra-dient), for performin...
The marginal maximum a posteriori probability (MAP) estimation problem, which cal-culates the mode o...
We present a heuristic strategy for marginal MAP (MMAP) queries in graphical models. The algorithm i...
The marginal maximum a posteriori probability (MAP) estimation problem, which calculates the mode of...
In this thesis, we give a new class of outer bounds on the marginal polytope, and propose a cutting-...
Many real-world problems, such as Markov Logic Networks (MLNs) with evidence, can be represented as ...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Graphical models are a general-purpose tool for modeling complex distributions in a way which facili...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
As a promising alternative to using standard (often intractable) planning techniques with Bellman eq...
Markov Decision Processes (MDPs) are extremely useful for modeling and solv-ing sequential decision ...
Probabilistic graphical models such as Markov random fields, Bayesian networks and decision networks...
We propose a cutting-plane style algorithm for finding the maximum a posteriori (MAP) state and appr...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
ABSTRACT While most current work in POMDP planning focus on the development of scalable approximate ...
We introduce an algorithm, based on the Frank-Wolfe technique (conditional gra-dient), for performin...
The marginal maximum a posteriori probability (MAP) estimation problem, which cal-culates the mode o...
We present a heuristic strategy for marginal MAP (MMAP) queries in graphical models. The algorithm i...
The marginal maximum a posteriori probability (MAP) estimation problem, which calculates the mode of...
In this thesis, we give a new class of outer bounds on the marginal polytope, and propose a cutting-...
Many real-world problems, such as Markov Logic Networks (MLNs) with evidence, can be represented as ...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Graphical models are a general-purpose tool for modeling complex distributions in a way which facili...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
As a promising alternative to using standard (often intractable) planning techniques with Bellman eq...
Markov Decision Processes (MDPs) are extremely useful for modeling and solv-ing sequential decision ...