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A First Step Towards Even More Sparse Encodings of Probability Distributions

About

Real world scenarios can be captured with lifted probability distributions. However, distributions are usually encoded in a table or list, requiring an exponential number of values. Hence, we propose a method for extracting first-order formulas from probability distributions that require significantly less values by reducing the number of values in a distribution and then extracting, for each value, a logical formula to be further minimized. This reduction and minimization allows for increasing the sparsity in the encoding while also generalizing a given distribution. Our evaluation shows that sparsity can increase immensely by extracting a small set of short formulas while preserving core information.

Florian Andreas Marwitz, Tanya Braun, Ralf M\"oller• 2026

Related benchmarks

TaskDatasetResultRank
Sparse Formula Extraction from Probability Distributionssmokers 1.0 (test)
Num Formulas per Parfactor2
1
Sparse Formula Extraction from Probability DistributionsSmokers2 1.0 (test)
Formula Count2
1
Sparse Formula Extraction from Probability Distributionsartificial Art1 1.0 (test)
Num Formulas per Parfactor1
1
Sparse Formula Extraction from Probability Distributionsartificial Art2 1.0 (test)
Formula Count1
1
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