2022
DOI: 10.48550/arxiv.2205.07496
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Efficient Knowledge Compilation Beyond Weighted Model Counting

Abstract: Quantitative extensions of logic programming often require the solution of so called second level inference tasks, i.e., problems that involve a third operation, such as maximization or normalization, on top of addition and multiplication, and thus go beyond the well-known weighted or algebraic model counting setting of probabilistic logic programming under the distribution semantics. We introduce Second Level Algebraic Model Counting (2AMC) as a generic framework for this kind of problems. As 2AMC is to (alge… Show more

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