LEARNING OF STRUCTURALLY UNAMBIGUOUS PROBABILISTIC GRAMMARS

Research output: Contribution to journalArticlepeer-review

Abstract

The problem of identifying a probabilistic context free grammar has two aspects: the first is determining the grammar’s topology (the rules of the grammar) and the second is estimating probabilistic weights for each rule. Given the hardness results for learning context-free grammars in general, and probabilistic grammars in particular, most of the literature has concentrated on the second problem. In this work we address the first problem. We restrict attention to structurally unambiguous weighted context-free grammars (SUWCFG) and provide a query learning algorithm for structurally unambiguous probabilistic context-free grammars (SUPCFG). We show that SUWCFG can be represented using co-linear multiplicity tree automata (CMTA), and provide a polynomial learning algorithm that learns CMTAs. We show that the learned CMTA can be converted into a probabilistic grammar, thus providing a complete algorithm for learning a structurally unambiguous probabilistic context free grammar (both the grammar topology and the probabilistic weights) using structured membership queries and structured equivalence queries. A summarized version of this work was published at AAAI 21 [NFZ21].

Original languageAmerican English
Pages (from-to)10:1–10:33
Number of pages33
JournalLogical Methods in Computer Science
Volume19
Issue number1
DOIs
StatePublished - 8 Feb 2023

Keywords

  • Active Learning
  • Grammatical Inference
  • Interpretability & Analysis of NLP Models
  • Learning Theory
  • Multiplicity Automata

All Science Journal Classification (ASJC) codes

  • Theoretical Computer Science
  • General Computer Science

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