在预训练的语言模型中包含语言外语境的挑战

Ionut-Teodor Sorodoc, Laura Aina, Gemma Boleda
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引用次数: 0

摘要

为了成功地解释语言,计算模型需要同时考虑语言上下文(话语的内容)和语言外上下文(例如,对话中的参与者)。我们专注于一个参考任务,该任务要求模型将电视节目中的实体提及与相应的角色联系起来,并设计一个试图解释这两种上下文的体系结构。特别是,我们的架构结合了先前提出的用于字符表示的专门模块(“实体库”)和从预训练的语言模型迁移学习。我们发现,尽管该模型确实改善了语言语境化,但它未能成功地整合对话参与者的语言外信息。我们的工作表明,将语言外的信息纳入预训练的语言模型是非常具有挑战性的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Challenges in including extra-linguistic context in pre-trained language models
To successfully account for language, computational models need to take into account both the linguistic context (the content of the utterances) and the extra-linguistic context (for instance, the participants in a dialogue). We focus on a referential task that asks models to link entity mentions in a TV show to the corresponding characters, and design an architecture that attempts to account for both kinds of context. In particular, our architecture combines a previously proposed specialized module (an “entity library”) for character representation with transfer learning from a pre-trained language model. We find that, although the model does improve linguistic contextualization, it fails to successfully integrate extra-linguistic information about the participants in the dialogue. Our work shows that it is very challenging to incorporate extra-linguistic information into pre-trained language models.
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