Generative Biomedical Event Extraction With Constrained Decoding Strategy | IEEE Journals & Magazine | IEEE Xplore

Generative Biomedical Event Extraction With Constrained Decoding Strategy


Abstract:

Currently, biomedical event extraction has received considerable attention in various fields, including natural language processing, bioinformatics, and computational bio...Show More

Abstract:

Currently, biomedical event extraction has received considerable attention in various fields, including natural language processing, bioinformatics, and computational biomedicine. This has led to the emergence of numerous machine learning and deep learning models that have been proposed and applied to tackle this complex task. While existing models typically adopt an extraction-based approach, which requires breaking down the extraction of biomedical events into multiple subtasks for sequential processing, making it prone to cascading errors. This paper presents a novel approach by constructing a biomedical event generation model based on the framework of the pre-trained language model T5. We employ a sequence-to-sequence generation paradigm to obtain events, the model utilizes constrained decoding algorithm to guide sequence generation, and a curriculum learning algorithm for efficient model learning. To demonstrate the effectiveness of our model, we evaluate it on two public benchmark datasets, Genia 2011 and Genia 2013. Our model achieves superior performance, illustrating the effectiveness of generative modeling of biomedical events.
Page(s): 2471 - 2484
Date of Publication: 14 October 2024

ISSN Information:

PubMed ID: 39401115

Funding Agency:


I. Introduction

Biomedical event extraction aims to extract complex interactions between fine-grained entities from unstructured text and present them in a structured form [1]. It plays a crucial role in facilitating knowledge acquisition, making it a highly significant research area that has attracted considerable attention from researchers.

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References

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