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Transformer Grammars: Augmenting Transformer Language Models with Syntactic Inductive Biases at Scale

Laurent Sartran, Samuel Barrett, Adhiguna Kuncoro, Miloš Stanojević, Phil Blunsom, Chris Dyer

2022Transactions of the Association for Computational Linguistics28 citationsDOIOpen Access PDF

Abstract

Abstract We introduce Transformer Grammars (TGs), a novel class of Transformer language models that combine (i) the expressive power, scalability, and strong performance of Transformers and (ii) recursive syntactic compositions, which here are implemented through a special attention mask and deterministic transformation of the linearized tree. We find that TGs outperform various strong baselines on sentence-level language modeling perplexity, as well as on multiple syntax-sensitive language modeling evaluation metrics. Additionally, we find that the recursive syntactic composition bottleneck which represents each sentence as a single vector harms perplexity on document-level language modeling, providing evidence that a different kind of memory mechanism—one that is independent of composed syntactic representations—plays an important role in current successful models of long text.

Topics & Concepts

PerplexityComputer scienceLanguage modelTransformerArtificial intelligenceNatural language processingSentenceRule-based machine translationSyntaxVoltagePhysicsQuantum mechanicsTopic ModelingNatural Language Processing TechniquesText Readability and Simplification