REFinD: Relation Extraction Financial Dataset
Kaur, Simerjot, Smiley, Charese, Gupta, Akshat, Sain, Joy, Wang, Dongsheng, Siddagangappa, Suchetha, Aguda, Toyin, Shah, Sameena
–arXiv.org Artificial Intelligence
A number of datasets for Relation Extraction (RE) have been created The exponential progress of AI across multiple domains can largely to aide downstream tasks such as information retrieval, semantic be attributed to the availability of large datasets coupled with an search, question answering and textual entailment. However, increase in available compute power. Relation extraction (RE) from these datasets fail to capture financial-domain specific challenges text is a fundamental problem in NLP and information retrieval, since most of these datasets are compiled using general knowledge which facilitates various tasks like knowledge graph construction, sources, hindering real-life progress and adoption within the financial question answering and semantic search. It has seen significant world. To address this limitation, we propose REFinD, the progress in recent years, thanks to advanced machine learning techniques first large-scale annotated dataset of relations, with 29K instances and the availability of large-scale relation extraction datasets.
arXiv.org Artificial Intelligence
May-22-2023
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