Propagators and Solvers for the Algebra of Modular Systems
June 27, 2016 Β· Declared Dead Β· π Logic Programming and Automated Reasoning
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Authors
Bart Bogaerts, Eugenia Ternovska, David Mitchell
arXiv ID
1606.08130
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LO
Citations
2
Venue
Logic Programming and Automated Reasoning
Last Checked
4 months ago
Abstract
To appear in the proceedings of LPAR 21. Solving complex problems can involve non-trivial combinations of distinct knowledge bases and problem solvers. The Algebra of Modular Systems is a knowledge representation framework that provides a method for formally specifying such systems in purely semantic terms. Formally, an expression of the algebra defines a class of structures. Many expressive formalism used in practice solve the model expansion task, where a structure is given on the input and an expansion of this structure in the defined class of structures is searched (this practice overcomes the common undecidability problem for expressive logics). In this paper, we construct a solver for the model expansion task for a complex modular systems from an expression in the algebra and black-box propagators or solvers for the primitive modules. To this end, we define a general notion of propagators equipped with an explanation mechanism, an extension of the alge- bra to propagators, and a lazy conflict-driven learning algorithm. The result is a framework for seamlessly combining solving technology from different domains to produce a solver for a combined system.
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