探讨对话框输入格式对无监督临床问卷填写的影响

Farnaz Ghassemi Toudeshki, Anna A. Liednikova, Ph. Jolivet, Claire Gardent
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引用次数: 0

摘要

在医疗领域,我们已经看到了健康机器人的出现,它们与患者互动,收集数据并跟踪他们的状态。其中一个下游应用程序是自动填写问卷,其中使用对话框的内容自动填写预定义的医疗问卷。先前的研究表明,回答对话上下文中的问题可以成功地作为自然语言推理(NLI)任务,因此受益于当前预训练的NLI模型。然而,NLI模型大多是在文本而不是对话上训练的,这可能会影响它们的表现。本文研究了内容转换和内容选择对问卷填写任务的影响。我们的研究结果表明,对话预处理可以显著提高以健康机器人对话为输入的零采样问卷填充模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the Influence of Dialog Input Format for Unsupervised Clinical Questionnaire Filling
In the medical field, we have seen the emergence of health-bots that interact with patients to gather data and track their state. One of the downstream application is automatic questionnaire filling, where the content of the dialog is used to automatically fill a pre-defined medical questionnaire. Previous work has shown that answering questions from the dialog context can successfully be cast as a Natural Language Inference (NLI) task and therefore benefit from current pre-trained NLI models. However, NLI models have mostly been trained on text rather than dialogs, which may have an influence on their performance. In this paper, we study the influence of content transformation and content selection on the questionnaire filling task. Our results demonstrate that dialog pre-processing can significantly improve the performance of zero-shot questionnaire filling models which take health-bots dialogs as input.
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