Many real-world decision problems have multiple objectives. For example, when choosing a medical treatment plan, we want to maximize the efficacy of the treatment, but also minimize …
Graphical models (eg, Bayesian and constraint networks, influence diagrams, and Markov decision processes) have become a central paradigm for knowledge representation and …
In this article, we propose new algorithms for multi-objective coordination graphs (MO- CoGs). Key to the efficiency of these algorithms is that they compute a convex coverage set …
Inspired by the recently introduced framework of AND/OR search spaces for graphical models, we propose to augment Multi-Valued Decision Diagrams (MDD) with AND nodes, in …
Many real-world decision problems require making tradeoffs among multiple objectives. However, in some cases, the relative importance of these objectives is not known when the …
A Friesen, P Domingos - International Conference on …, 2016 - proceedings.mlr.press
Inference in expressive probabilistic models is generally intractable, which makes them difficult to learn and limits their applicability. Sum-product networks are a class of deep …
T Sato, Y Kameya - Probabilistic Inductive Logic Programming: Theory …, 2008 - Springer
We review a logic-based modeling language PRISM and report recent developments including belief propagation by the generalized inside-outside algorithm and generative …
Decision making is hard. It often requires reasoning about uncertain environments, partial observability and action spaces that are too large to enumerate. In such tasks decision …
R Mateescu, R Dechter - Annals of mathematics and artificial intelligence, 2008 - Springer
The paper introduces mixed networks, a new graphical model framework for expressing and reasoning with probabilistic and deterministic information. The motivation to develop mixed …