基于bert的学术文章提取摘要:一种新颖的架构

Sheher Bano, Shah Khalid
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引用次数: 3

摘要

目前,有多种提取摘要方法可用,每种方法都有自己的一套优点和缺点。然而,没有一个是理想的,这意味着在这个自动化领域仍有进步的空间。BERT是一种多层变压器网络,已经为各种自监督应用进行了预训练。然而,由于其输入长度的限制,它只适用于短文本。因此,我们相信使用BERT进行长文档摘要将是一项具有挑战性的任务。我们提出了一种新颖的方法,通过该方法可以利用BERT来总结长文档。我们使用了将整个文档分成多个块的方法,每个块包含一个句子。其基本思想是从BERT中获取句子嵌入,然后在BERT之上应用一个编码器-解码器模型。实验是用两个学术数据集(arXiv和PubMed)进行的。结果表明,我们的技术始终优于几个最先进的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BERT-based Extractive Text Summarization of Scholarly Articles: A Novel Architecture
Currently, there are a variety of extractive summarization approaches available, each with its own set of advantages and disadvantages. However, none of them are ideal, which means there is still room for advancement in this field of automation. BERT is a multilayer transformer network that has been pre-trained for a variety of self-supervised applications. However, because of its input length restriction, it is only appropriate for short text. As a result, we believe that using BERT for long document summarization will be a challenging task. We suggest a novel approach through which BERT can be utilized to summarize long documents. We used the method of dividing a whole document into multiple chunks and each chunk contains one sentence. The basic idea is to get sentence embeddings from BERT and then apply an encoder-decoder model on top of BERT. Experiments are conducted with two scholarly datasets (arXiv and PubMed). The results show that our technique consistently outperform several state-of-the-art models.
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