Asymptotic elimination of partially continuous aggregation functions in directed graphical models
Vera Koponen, Felix Weitk\"amper

TL;DR
This paper proves that in statistical relational AI, formulas with certain aggregation functions become equivalent to simpler formulas without them as the domain size grows large, improving computational efficiency.
Contribution
It establishes the asymptotic equivalence of formulas with aggregation functions to simpler formulas without them in large domains, addressing efficiency issues.
Findings
Aggregation functions are asymptotically eliminable in large domains.
Formulas with admissible aggregation functions converge to equivalent formulas without aggregation.
Results improve the computational feasibility of statistical relational models.
Abstract
In Statistical Relational Artificial Intelligence, a branch of AI and machine learning which combines the logical and statistical schools of AI, one uses the concept {\em para\-metrized probabilistic graphical model (PPGM)} to model (conditional) dependencies between random variables and to make probabilistic inferences about events on a space of "possible worlds". The set of possible worlds with underlying domain (a set of objects) can be represented by the set of all first-order structures (for a suitable signature) with domain . Using a formal logic we can describe events on . By combining a logic and a PPGM we can also define a probability distribution on and use it to compute the probability of an event. We consider a logic, denoted , with truth values in the unit interval, which uses aggregation functions, such…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Data Management and Algorithms · Rough Sets and Fuzzy Logic
