Semantic role labeling for knowledge graph extraction from text

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Date
2021
Volume
10
Issue
Journal
Series Titel
Book Title
Publisher
Berlin ; Heidelberg : Springer
Abstract

This paper introduces TakeFive, a new semantic role labeling method that transforms a text into a frame-oriented knowledge graph. It performs dependency parsing, identifies the words that evoke lexical frames, locates the roles and fillers for each frame, runs coercion techniques, and formalizes the results as a knowledge graph. This formal representation complies with the frame semantics used in Framester, a factual-linguistic linked data resource. We tested our method on the WSJ section of the Peen Treebank annotated with VerbNet and PropBank labels and on the Brown corpus. The evaluation has been performed according to the CoNLL Shared Task on Joint Parsing of Syntactic and Semantic Dependencies. The obtained precision, recall, and F1 values indicate that TakeFive is competitive with other existing methods such as SEMAFOR, Pikes, PathLSTM, and FRED. We finally discuss how to combine TakeFive and FRED, obtaining higher values of precision, recall, and F1 measure.

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Keywords
Semantic role labeling, Frame semantics, Framester, Dependency parsing, Role oriented knowledge graphs
Citation
Alam, M., Gangemi, A., Pressutti, V., & Reforgiato Recupero, D. (2021). Semantic role labeling for knowledge graph extraction from text. 10. https://doi.org//10.1007/s13748-021-00241-7
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License
CC BY 4.0 Unported