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A Taxonomy of Ambiguity Types for NLP

Authors :
Li, Margaret Y.
Liu, Alisa
Wu, Zhaofeng
Smith, Noah A.
Li, Margaret Y.
Liu, Alisa
Wu, Zhaofeng
Smith, Noah A.
Publication Year :
2024

Abstract

Ambiguity is an critical component of language that allows for more effective communication between speakers, but is often ignored in NLP. Recent work suggests that NLP systems may struggle to grasp certain elements of human language understanding because they may not handle ambiguities at the level that humans naturally do in communication. Additionally, different types of ambiguity may serve different purposes and require different approaches for resolution, and we aim to investigate how language models' abilities vary across types. We propose a taxonomy of ambiguity types as seen in English to facilitate NLP analysis. Our taxonomy can help make meaningful splits in language ambiguity data, allowing for more fine-grained assessments of both datasets and model performance.<br />Comment: To appear at the UnImplicit workshop at EACL 2024

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438538693
Document Type :
Electronic Resource