用框架语义丰富深度学习在医学叙事文章共情分类中的应用

Priyanka Dey, Roxana Girju
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引用次数: 3

摘要

同理心是医疗保健的重要组成部分,在培训未来的医生中起着关键作用。关注医学生与患者互动的自我反思故事,可以促进同理心,形成体现正直和尊重等理想价值观的职业认同。我们提出了一种计算方法和移情语言的语言分析,这些移情语言是由医学预科学生写的440篇论文的大型语料库,作为模拟病人-医生互动的叙述。我们分析了三种共情的话语:认知、情感和亲社会,并强调了专家注释者。我们还提出了使用最先进的递归神经网络和变压器模型对这些形式的共情进行分类的各种实验。为了进一步改进这些结果,我们开发了一种新的系统架构,该架构利用框架语义来丰富我们最先进的模型。我们表明,这种新框架显著改善了该数据集的移情分类任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enriching Deep Learning with Frame Semantics for Empathy Classification in Medical Narrative Essays
Empathy is a vital component of health care and plays a key role in the training of future doctors. Paying attention to medical students’ self-reflective stories of their interactions with patients can encourage empathy and the formation of professional identities that embody desirable values such as integrity and respect. We present a computational approach and linguistic analysis of empathic language in a large corpus of 440 essays written by pre-med students as narrated simulated patient – doctor interactions. We analyze the discourse of three kinds of empathy: cognitive, affective, and prosocial as highlighted by expert annotators. We also present various experiments with state-of-the-art recurrent neural networks and transformer models for classifying these forms of empathy. To further improve over these results, we develop a novel system architecture that makes use of frame semantics to enrich our state-of-the-art models. We show that this novel framework leads to significant improvement on the empathy classification task for this dataset.
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