Bert模型与跨句语境在方面提取中的有效结合

A. Le, Truong-Son Nguyen
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引用次数: 2

摘要

面向抽取(AE)领域研究的是在句子和文档中收集情感面向的词语。尽管疫情蔓延,但网上购买的产品数量仍在增长,这意味着产品评论和评论的数量也在迅速增加,因此任务的作用逐渐变得至关重要。提取文本中的各个方面是一项艰巨的任务,这需要能够深度捕获文本语义的算法。在这项工作中,我们结合了两个研究组的两个模型,第一个使用具有多个连接层的BERT算法,第二个使用策略在训练或测试阶段自行丰富数据集。源代码可以在github.com上找到,研究人员可以通过脚本运行它,也可以为进一步的研究修改它。https://github.com/leanhkhoi/AE_BERT_CROSS_SENTENCES
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Combination of Bert Model and Cross-Sentence Contexts in Aspect Extraction
The Aspect Extraction (AE) field investigates in collecting words which are sentiment aspects in sentences and documents. Despite the pandemic, the number of products purchased online is still growing, which means that the number of product reviews and comments is also increasing rapidly, so the role of the task is gradually crucial. Extract aspects in the text is a difficult task, that requires algorithms capable of deep capturing the semantics of the text. In this work, we combine two models of the two research groups, with the first using the BERT algorithm with multiple concatenated layers and the second using the strategies to enrich the dataset by itself in the training or testing phase. The source code is available on github.com, researchers can run it through scripts, modify it for further research also. https://github.com/leanhkhoi/AE_BERT_CROSS_SENTENCES
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