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Conversation Model Fine-Tuning for Classifying Client Utterances in Counseling Dialogues

机译:对话模型中对客户话语分类的对话模型微调

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The recent surge of text-based online counseling applications enables us to collect and analyze interactions between counselors and clients. A dataset of those interactions can be used to learn to automatically classify the client utterances into categories that help counselors in diagnosing client status and predicting counseling outcome. With proper anonymization. we collect counselor-client dialogues, define meaningful categories of client utterances with professional counselors, and develop a novel neural network model for classifying the client utterances. The central idea of our model, ConvMFiT, is a pre-trained conversation model which consists of a general language model built from an out-of-domain corpus and two role-specific language models built from unlabeled in-domain dialogues. The classification result shows that ConvMFiT outperforms state-of-the-art comparison models. Further, the attention weights in the learned model confirm that the model finds expected linguistic patterns for each category.
机译:最近基于文本的在线咨询应用程序的激增使我们能够在辅导员和客户之间收集和分析互动。这些交互的数据集可用于学习自动将客户话语分类为帮助辅导员在诊断客户状态和预测咨询结果方面的类别。正确匿名化。我们收集顾问 - 客户对话,定义与专业辅导员的有意义的客户话语类别,并开发一个用于对客户话语进行分类的新型神经网络模型。我们模型的核心思想ConvmFit是一个预先训练的对话模型,它包括由域名语料库内构建的一般语言模型以及从未标记的域对话中构建的两种角色特定语言模型。分类结果表明,Convmmfit优于最先进的比较模型。此外,学习模型中的注意重量证实了该模型为每个类别找到了预期的语言模式。

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