Incorporating Type Information into Zero-Shot Relation Extraction

Publikation: Beiträge in SammelwerkenKonferenzbeitragbegutachtet

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The task of zero-shot relation extraction focuses on the extraction of relations not seen during training time. Commonly, additional information about the relation such as the relation name or a description of the relation is utilised. In this work, we analyze whether a relation extractor can benefit from the inclusion of fine-grained type information about the involved entities. This is based on the intuition that relation descriptions might contain ontological information on the domain and range of the entity types that are usually put into relation. For that, we follow a cross-encoding setup where we encode both, the entity information and relation information, as one sequence and learn to score the representation. We examine this method on several datasets and show that the inclusion of the fine-grained type information leads to an improvement in performance.

OriginalspracheEnglisch
Titel TEXT2KG 2024 and DQMLKG 2024 : 3rd International workshop one knowledge graph generation from text. Data Quality meets Machine Learning and Knowledge Graphs 2024
HerausgeberSanju Tiwari, Nandana Mihindukulasooriya, Francesco Osborne, Dimitris Kontokostas, Jennifer D'Souza, Mayank Kejriwal, Maria Angela Pellegrino, Anisa Rula, Jose Emilio Labra Gayo, Michael Cochez, Mehwish Alam
Anzahl der Seiten10
Band3747
VerlagSun Site Central Europe (RWTH Aachen University)
Erscheinungsdatum2024
PublikationsstatusErschienen - 2024
Veranstaltung3rd International Workshop One Knowledge Graph Generation from Text and Data Quality Meets Machine Learning and Knowledge Graphs, TEXT2KG 2024 and DQMLKG 2024 - Hersonissos, Griechenland
Dauer: 26.05.202430.05.2024

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