Lifted Model Construction without Normalisation: A Vectorised Approach to Exploit Symmetries in Factor Graphs
Lifted probabilistic inference exploits symmetries in a probabilistic model to allow for tractable probabilistic inference with respect to domain sizes of logical variables. We found that the current state-of-the-art algorithm to construct a lifted representation in form of a parametric factor graph...
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Zusammenfassung: | Lifted probabilistic inference exploits symmetries in a probabilistic model
to allow for tractable probabilistic inference with respect to domain sizes of
logical variables. We found that the current state-of-the-art algorithm to
construct a lifted representation in form of a parametric factor graph misses
symmetries between factors that are exchangeable but scaled differently,
thereby leading to a less compact representation. In this paper, we propose a
generalisation of the advanced colour passing (ACP) algorithm, which is the
state of the art to construct a parametric factor graph. Our proposed algorithm
allows for potentials of factors to be scaled arbitrarily and efficiently
detects more symmetries than the original ACP algorithm. By detecting strictly
more symmetries than ACP, our algorithm significantly reduces online query
times for probabilistic inference when the resulting model is applied, which we
also confirm in our experiments. |
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DOI: | 10.48550/arxiv.2411.11730 |