临床语言模型领域自适应预训练的词汇修饰

Anastasios Lamproudis, Aron Henriksson, H. Dalianis
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引用次数: 4

摘要

研究表明,由于语言使用和词汇的领域差异,在特定领域使用通用语言模型(特别是BERT模型)可能不是最优的。有几种技术可用于开发利用现有通用语言模型的领域特定语言模型,包括使用领域内数据的持续和领域自适应预训练。在这里,我们研究一种基于使用特定于领域的词汇表的策略,同时利用通用语言模型进行初始化。结果表明,领域自适应预训练与特定领域词汇(而不是通用领域词汇)相结合,可以改善瑞典语的两个下游临床NLP任务。研究结果强调了领域自适应预训练在开发专门语言模型时的价值,并表明在继续进行通用语言模型的领域自适应预训练之前,将语言模型的词汇适应目标领域是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vocabulary Modifications for Domain-adaptive Pretraining of Clinical Language Models
: Research has shown that using generic language models – specifically, BERT models – in specialized domains may be sub-optimal due to domain differences in language use and vocabulary. There are several techniques for developing domain-specific language models that leverage the use of existing generic language models, including continued and domain-adaptive pretraining with in-domain data. Here, we investigate a strategy based on using a domain-specific vocabulary, while leveraging a generic language model for initialization. The results demonstrate that domain-adaptive pretraining, in combination with a domain-specific vocabulary – as opposed to a general-domain vocabulary – yields improvements on two downstream clinical NLP tasks for Swedish. The results highlight the value of domain-adaptive pretraining when developing specialized language models and indicate that it is beneficial to adapt the vocabulary of the language model to the target domain prior to continued, domain-adaptive pretraining of a generic language model.
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