Publication | Open Access
Multiword Expression Processing: A Survey
245
Citations
163
References
2017
Year
Syntactic ParsingEngineeringPart-of-speech TaggingSemanticsCorpus LinguisticsLanguage ProcessingText MiningNatural Language ProcessingSyntaxComputational LinguisticsGrammarCorpus AnalysisMwe HandlingLanguage StudiesMultiword Expression ProcessingMachine TranslationMwe DiscoveryNlp TaskLanguage TechnologyTerminology ExtractionSemantic ParsingParsingMultiword ExpressionsCross-lingual Natural Language ProcessingLinguisticsChunking
Multiword expressions are idiosyncratic linguistic units that cross word boundaries, requiring a rethinking of traditional word‑phrase distinctions and posing significant challenges for NLP applications. This survey reviews MWE processing techniques and clarifies how they interact with downstream NLP tasks. The authors present a conceptual framework that categorizes MWE discovery and identification subtasks, examines their integration with parsing and machine translation, and outlines open research directions.
Multiword expressions (MWEs) are a class of linguistic forms spanning conventional word boundaries that are both idiosyncratic and pervasive across different languages. The structure of linguistic processing that depends on the clear distinction between words and phrases has to be re-thought to accommodate MWEs. The issue of MWE handling is crucial for NLP applications, where it raises a number of challenges. The emergence of solutions in the absence of guiding principles motivates this survey, whose aim is not only to provide a focused review of MWE processing, but also to clarify the nature of interactions between MWE processing and downstream applications. We propose a conceptual framework within which challenges and research contributions can be positioned. It offers a shared understanding of what is meant by “MWE processing,” distinguishing the subtasks of MWE discovery and identification. It also elucidates the interactions between MWE processing and two use cases: Parsing and machine translation. Many of the approaches in the literature can be differentiated according to how MWE processing is timed with respect to underlying use cases. We discuss how such orchestration choices affect the scope of MWE-aware systems. For each of the two MWE processing subtasks and for each of the two use cases, we conclude on open issues and research perspectives.
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