Litcius/Paper detail

Idiomatic Expression Identification using Semantic Compatibility

Ziheng Zeng, Suma Bhat

2021Transactions of the Association for Computational Linguistics28 citationsDOIOpen Access PDF

Abstract

Abstract Idiomatic expressions are an integral part of natural language and constantly being added to a language. Owing to their non-compositionality and their ability to take on a figurative or literal meaning depending on the sentential context, they have been a classical challenge for NLP systems. To address this challenge, we study the task of detecting whether a sentence has an idiomatic expression and localizing it when it occurs in a figurative sense. Prior research for this task has studied specific classes of idiomatic expressions offering limited views of their generalizability to new idioms. We propose a multi-stage neural architecture with attention flow as a solution. The network effectively fuses contextual and lexical information at different levels using word and sub-word representations. Empirical evaluations on three of the largest benchmark datasets with idiomatic expressions of varied syntactic patterns and degrees of non-compositionality show that our proposed model achieves new state-of-the-art results. A salient feature of the model is its ability to identify idioms unseen during training with gains from 1.4% to 30.8% over competitive baselines on the largest dataset.

Topics & Concepts

Computer sciencePrinciple of compositionalityNatural language processingArtificial intelligenceTreebankSentenceGeneralizability theoryLiteral and figurative languageSalientWordNetNatural language understandingDistributional semanticsContext (archaeology)CoreferenceTask (project management)Expression (computer science)Feature (linguistics)Natural languageLinguisticsSemantic similarityResolution (logic)ParsingPsychologyBiologyDevelopmental psychologyPaleontologyProgramming languagePhilosophyManagementEconomicsNatural Language Processing TechniquesLanguage, Metaphor, and CognitionTopic Modeling