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arxiv: cs/0108013 · v2 · submitted 2001-08-22 · 💻 cs.LO · cs.AI

Convergent Approximate Solving of First-Order Constraints by Approximate Quantifiers

classification 💻 cs.LO cs.AI
keywords first-orderapproximatequantifierslanguagetheyadditionalallowingconstraints
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Exactly solving first-order constraints (i.e., first-order formulas over a certain predefined structure) can be a very hard, or even undecidable problem. In continuous structures like the real numbers it is promising to compute approximate solutions instead of exact ones. However, the quantifiers of the first-order predicate language are an obstacle to allowing approximations to arbitrary small error bounds. In this paper we solve the problem by modifying the first-order language and replacing the classical quantifiers with approximate quantifiers. These also have two additional advantages: First, they are tunable, in the sense that they allow the user to decide on the trade-off between precision and efficiency. Second, they introduce additional expressivity into the first-order language by allowing reasoning over the size of solution sets.

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