Tutorials and Technical Briefings at ISEC 2025
Atul Kumar
ISEC 2025
This article presents a class of approximation algorithms that extend the idea of bounded-complexity inference, inspired by successful constraint propagation algorithms, to probabilistic inference and combinatorial optimization. The idea is to bound the dimensionality of dependencies created by inference algorithms. This yields a parameterized scheme, called mini-buckets, that offers adjustable trade-off between accuracy and efficiency. The mini-bucket approach to optimization problems, such as finding the most probable explanation (MPE) in Bayesian networks, generates both an approximate solution and bounds on the solution quality. We present empirical results demonstrating successful performance of the proposed approximation scheme for the MPE task, both on randomly generated problems and on realistic domains such as medical diagnosis and probabilistic decoding.
Atul Kumar
ISEC 2025
David Carmel, Haggai Roitman, et al.
ACM TIST
Erik Altman, Jovan Blanusa, et al.
NeurIPS 2023
Arnold L. Rosenberg
Journal of the ACM