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dc.contributor.authorSame, Fahime
dc.date.accessioned2024-09-19T05:36:27Z
dc.date.available2024-09-19T05:36:27Z
dc.date.issued2024
dc.identifier.urihttps://library.oapen.org/handle/20.500.12657/93390
dc.description.abstractReference production, often termed Referring Expression Generation (REG) in computational linguistics, encompasses two distinct tasks: (1) one-shot REG, and (2) REG-in-context. One-shot REG explores which properties of a referent offer a unique description of it. In contrast, REG-in-context asks which (anaphoric) referring expressions are optimal at various points in discourse. This book offers a series of in-depth studies of the REG-in-context task. It thoroughly explores various aspects of the task such as corpus selection, computational methods, feature analysis, and evaluation techniques. The comparative study of different corpora highlights the pivotal role of corpus choice in REG-in-context research, emphasizing its influence on all subsequent model development steps. An experimental analysis of various feature-based machine learning models reveals that those with a concise set of linguistically-informed features can rival models with more features. Furthermore, this work highlights the importance of paragraph-related concepts, an area underexplored in Natural Language Generation (NLG). The book offers a thorough evaluation of different approaches to the REG-in-context task (rule-based, feature-based, and neural end-to-end), and demonstrates that well-crafted, non-neural models are capable of matching or surpassing the performance of neural REG-in-context models. In addition, the book delves into post-hoc experiments, aimed at improving the explainability of both neural and classical REG-in-context models. It also addresses other critical topics, such as the limitations of accuracy-based evaluation metrics and the essential role of human evaluation in NLG research. These studies collectively advance our understanding of REG-in-context. They highlight the importance of selecting appropriate corpora and targeted features. They show the need for context-aware modeling and the value of a comprehensive approach to model evaluation and interpretation. This detailed analysis of REG-in-context paves the way for developing more sophisticated, linguistically-informed, and contextually appropriate NLG systems.
dc.languageEnglish
dc.subject.classificationbic Book Industry Communication::C Language::CF linguistics
dc.subject.otherLanguage Arts & Disciplines
dc.subject.otherLinguistics
dc.titleReferring expression generation in context
dc.title.alternativeCombining linguistic and computational approaches
dc.typebook
oapen.identifier.doihttps://doi.org/10.5281/zenodo.11058114
oapen.relation.isPublishedBy0bad921f-3055-43b9-a9f1-ea5b2d949173
oapen.relation.isFundedByb818ba9d-2dd9-4fd7-a364-7f305aef7ee9
oapen.collectionKnowledge Unlatched (KU)
oapen.imprintLanguage Science Press
oapen.identifierhttps://openresearchlibrary.org/viewer/4f692b42-b68c-40f4-8785-737ed91dc4dc
oapen.identifier.isbn9783961104710
grantor.number4f692b42-b68c-40f4-8785-737ed91dc4dc


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