AI RESEARCH

Variance Computation for Weighted Model Counting with Knowledge Compilation Approach

arXiv CS.AI

ArXi:2601.03523v2 Announce Type: replace One of the most important queries in knowledge compilation is weighted model counting (WMC), which has been applied to probabilistic inference on various models, such as Bayesian networks. In practical situations on inference tasks, the model's parameters have uncertainty because they are often learned from data, and thus we want to compute the degree of uncertainty in the inference outcome. One possible approach is to regard the inference outcome as a random variable by.