Probabilistic Abduction in a Fuzzy Logic Framework
Abstract
We study the problem of explaining observations about the probabilities of events, such as "it rains of the time", "rain and snow are equally likely", etc. We explain these statements with a probability distribution or a statement about probabilities of (other) events that are consistent with our knowledge and entail the observation. We formalise this problem in a fuzzy probabilistic logic . We define and motivate the notions of abduction problems and their solutions. Our main technical contribution is a comprehensive study of the complexity of solution recognition and existence for a given abduction problem in for the case of full language and its disjunctive-clause fragments. We also obtain a translation of classical probabilistic abduction (finding the most likely explanation of a given event) to .
Cite
@article{arxiv.2604.22064,
title = {Probabilistic Abduction in a Fuzzy Logic Framework},
author = {Tommaso Flaminio and Katsumi Inoue and Daniil Kozhemiachenko},
journal= {arXiv preprint arXiv:2604.22064},
year = {2026}
}