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EnriCo: Enriched Representation and Globally Constrained Inference for Entity and Relation Extraction

EnriCo improves joint entity and relation extraction through attention mechanisms for rich representation and decoding algorithms for coherent output structure, achieving competitive performance on Joint IE datasets.

Year
2024
Venue
arXiv 2024
Authors
5
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arxiv.org/abs/2404.12493ARXIV-DEFAULT
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Abstract

Joint entity and relation extraction plays a pivotal role in various applications, notably in the construction of knowledge graphs. Despite recent progress, existing approaches often fall short in two key aspects: richness of representation and coherence in output structure. These models often rely on handcrafted heuristics for computing entity and relation representations, potentially leading to loss of crucial information. Furthermore, they disregard task and/or dataset-specific constraints, resulting in output structures that lack coherence. In our work, we introduce EnriCo, which mitigates these shortcomings. Firstly, to foster rich and expressive representation, our model leverage attention mechanisms that allow both entities and relations to dynamically determine the pertinent information required for accurate extraction. Secondly, we introduce a series of decoding algorithms designed to infer the highest scoring solutions while adhering to task and dataset-specific constraints, thus promoting structured and coherent outputs. Our model demonstrates competitive performance compared to baselines when evaluated on Joint IE datasets.

Authors

5