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arxiv 2306.03736 v1 pith:D47UO6OF submitted 2023-06-06 cs.CL

FinRED: A Dataset for Relation Extraction in Financial Domain

classification cs.CL
keywords relationextractiondomaindatasetfinredfinancialmodelsfinance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Relation extraction models trained on a source domain cannot be applied on a different target domain due to the mismatch between relation sets. In the current literature, there is no extensive open-source relation extraction dataset specific to the finance domain. In this paper, we release FinRED, a relation extraction dataset curated from financial news and earning call transcripts containing relations from the finance domain. FinRED has been created by mapping Wikidata triplets using distance supervision method. We manually annotate the test data to ensure proper evaluation. We also experiment with various state-of-the-art relation extraction models on this dataset to create the benchmark. We see a significant drop in their performance on FinRED compared to the general relation extraction datasets which tells that we need better models for financial relation extraction.

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