iMETRE: Incorporating Markers of Entity Types for Relation Extraction

06/30/2023
by   N Harsha Vardhan, et al.
0

Sentence-level relation extraction (RE) aims to identify the relationship between 2 entities given a contextual sentence. While there have been many attempts to solve this problem, the current solutions have a lot of room to improve. In this paper, we approach the task of relationship extraction in the financial dataset REFinD. Our approach incorporates typed entity markers representations and various models finetuned on the dataset, which has allowed us to achieve an F1 score of 69.65 we discuss various approaches and possible limitations.

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