面向行为变化的跨内容会话代理:研究领域独立性和书面语言中词汇特征在变化中的作用

Selina Meyer, David Elsweiler
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引用次数: 0

摘要

通过分析他们使用的语言,可以获得对个人当前关于行为改变的想法和立场的有价值的见解,这可以使用动机性访谈概念概念化。训练会话代理(ca)检测和使用这些概念可以帮助它们提供更个性化和更有效的帮助。本研究调查了跨越不同会话和社会背景以及改变目标的书面语言在行为改变方面的相似性。借鉴先前将MI概念应用于有关健康行为改变的文本的研究,我们评估了现有分类器在来自不同上下文的六个新构建数据集上的性能。为了深入了解识别变化语言时的决定因素,我们探讨了词汇特征对分类的影响。结果表明,变化语言的模式在不同的语境和领域中保持稳定,这使我们得出结论,点对点在线数据可能足以训练ca理解与行为变化相关的用户话语。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Cross-Content Conversational Agents for Behaviour Change: Investigating Domain Independence and the Role of Lexical Features in Written Language Around Change
Valuable insights into an individual’s current thoughts and stance regarding behaviour change can be obtained by analysing the language they use, which can be conceptualized using Motivational Interviewing concepts. Training conversational agents (CAs) to detect and employ these concepts could help them provide more personalized and effective assistance. This study investigates the similarity of written language around behaviour change spanning diverse conversational and social contexts and change objectives. Drawing on previous research that applied MI concepts to texts about health behaviour change, we evaluate the performance of existing classifiers on six newly constructed datasets from diverse contexts. To gain insights in determining factors when identifying change language, we explore the impact of lexical features on classification. The results suggest that patterns of change language remain stable across contexts and domains, leading us to conclude that peer-to-peer online data may be sufficient to train CAs to understand user utterances related to behaviour change.
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