EmoTwiCS:用于模拟 Twitter 上荷兰客户服务对话中情绪轨迹的语料库

IF 1.7 3区 计算机科学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Language Resources and Evaluation Pub Date : 2023-12-08 DOI:10.1007/s10579-023-09700-0
Sofie Labat, Thomas Demeester, Véronique Hoste
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引用次数: 3

摘要

由于用户生成内容的兴起,社交媒体越来越多地被用作提供客户服务的渠道。鉴于网络平台的公共性,情绪的自动检测在监控客户满意度和防止负面口碑方面有着重要的应用。本文介绍了 EmoTwiCS,这是一个由 Twitter 上 9489 条荷兰客户服务对话组成的语料库,其中标注了情感轨迹。在我们这个以商业为导向的语料库中,我们将情绪视为客户的动态属性,在对话的每一句话中都会发生变化。因此,"情绪轨迹 "一词不仅指客户体验到的细粒度情绪(标注有 28 个标签和情绪-唤醒-主导得分),还指对话之前发生的事件和人工操作员做出的回应(均标注有 8 个类别)。由此产生的数据集的注释者之间的一致性(IAA)得分很高,可与相关研究相媲美,这说明数据集的质量很高。鉴于各层注释信息之间的相互作用,我们进行了多项深入分析,以研究(i)孤立推文中的静态情绪,(ii)动态情绪及其轨迹变化,以及(iii)情绪轨迹中原因和应对策略的作用。最后,我们列举了数据集的优势和局限性,并就不同类型的预测建模任务和 EmoTwiCS 可应用的开放式研究问题提出了一些建议。该数据集可通过 https://lt3.ugent.be/resources/emotwics 公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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EmoTwiCS: a corpus for modelling emotion trajectories in Dutch customer service dialogues on Twitter

Due to the rise of user-generated content, social media is increasingly adopted as a channel to deliver customer service. Given the public character of online platforms, the automatic detection of emotions forms an important application in monitoring customer satisfaction and preventing negative word-of-mouth. This paper introduces EmoTwiCS, a corpus of 9489 Dutch customer service dialogues on Twitter that are annotated for emotion trajectories. In our business-oriented corpus, we view emotions as dynamic attributes of the customer that can change at each utterance of the conversation. The term ‘emotion trajectory’ refers therefore not only to the fine-grained emotions experienced by customers (annotated with 28 labels and valence-arousal-dominance scores), but also to the event happening prior to the conversation and the responses made by the human operator (both annotated with 8 categories). Inter-annotator agreement (IAA) scores on the resulting dataset are substantial and comparable with related research, underscoring its high quality. Given the interplay between the different layers of annotated information, we perform several in-depth analyses to investigate (i) static emotions in isolated tweets, (ii) dynamic emotions and their shifts in trajectory, and (iii) the role of causes and response strategies in emotion trajectories. We conclude by listing the advantages and limitations of our dataset, after which we give some suggestions on the different types of predictive modelling tasks and open research questions to which EmoTwiCS can be applied. The dataset is made publicly available at https://lt3.ugent.be/resources/emotwics.

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来源期刊
Language Resources and Evaluation
Language Resources and Evaluation 工程技术-计算机:跨学科应用
CiteScore
6.50
自引率
3.70%
发文量
55
审稿时长
>12 weeks
期刊介绍: Language Resources and Evaluation is the first publication devoted to the acquisition, creation, annotation, and use of language resources, together with methods for evaluation of resources, technologies, and applications. Language resources include language data and descriptions in machine readable form used to assist and augment language processing applications, such as written or spoken corpora and lexica, multimodal resources, grammars, terminology or domain specific databases and dictionaries, ontologies, multimedia databases, etc., as well as basic software tools for their acquisition, preparation, annotation, management, customization, and use. Evaluation of language resources concerns assessing the state-of-the-art for a given technology, comparing different approaches to a given problem, assessing the availability of resources and technologies for a given application, benchmarking, and assessing system usability and user satisfaction.
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