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A Neural Model for Regular Grammar Induction

2022-09-23 14:53:23
Peter Belcák, David Hofer, Roger Wattenhofer

Abstract

Grammatical inference is a classical problem in computational learning theory and a topic of wider influence in natural language processing. We treat grammars as a model of computation and propose a novel neural approach to induction of regular grammars from positive and negative examples. Our model is fully explainable, its intermediate results are directly interpretable as partial parses, and it can be used to learn arbitrary regular grammars when provided with sufficient data. Our method consistently attains high recall and precision scores across a range of tests of varying complexity. We make the detailed results and code readily available.

Abstract (translated)

URL

https://arxiv.org/abs/2209.11628

PDF

https://arxiv.org/pdf/2209.11628.pdf


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