LOAIApr 21, 2025

On the Boolean Network Theory of Datalog$^\neg$

arXiv:2504.15417v21 citationsh-index: 13
Originality Incremental advance
AI Analysis

This work provides incremental theoretical insights for researchers in logic programming and formal methods, connecting two established frameworks.

The paper tackles the problem of linking Datalog$^\neg$ to Boolean network theory, establishing that under certain cycle conditions, regular models coincide with stable models, leading to new upper bounds on model counts based on feedback vertex sets.

Datalog$^\neg$ is a central formalism used in a variety of domains ranging from deductive databases and abstract argumentation frameworks to answer set programming. Its model theory is the finite counterpart of the logical semantics developed for normal logic programs, mainly based on the notions of Clark's completion and two-valued or three-valued canonical models including supported, stable, regular and well-founded models. In this paper we establish a formal link between Datalog$^\neg$ and Boolean network theory first introduced for gene regulatory networks. We show that in the absence of odd cycles in a Datalog$^\neg$ program, the regular models coincide with the stable models, which entails the existence of stable models, and in the absence of even cycles, we prove the uniqueness of stable partial models and regular models. This connection also gives new upper bounds on the numbers of stable partial, regular, and stable models of a Datalog$^\neg$ program using the cardinality of a feedback vertex set in its atom dependency graph. Interestingly, our connection to Boolean network theory also points us to the notion of trap spaces. In particular we show the equivalence between subset-minimal stable trap spaces and regular models.

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