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Proceedings of the 4th Workshop of Narrative Understanding (WNU2022)最新文献

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How to be Helpful on Online Support Forums? 如何在在线支持论坛上提供帮助?
Pub Date : 1900-01-01 DOI: 10.18653/v1/2022.wnu-1.3
Zhiling Wang, Pablo E. Torres
Internet forums such as Reddit offer people a platform to ask for advice when they encounter various issues at work, school or in relationships. Telling helpful comments apart from unhelpful comments to these advice-seeking posts can help people and dialogue agents to become more helpful in offering advice. We propose a dataset that contains both helpful and unhelpful comments in response to such requests. We then relate helpfulness to the closely related construct of empathy. Finally, we analyze the language features that are associated with helpful and unhelpful comments.
当人们在工作、学习或恋爱中遇到各种问题时,Reddit等互联网论坛为他们提供了一个寻求建议的平台。将有用的评论与无用的评论区分开来,可以帮助人们和对话代理在提供建议方面变得更有帮助。我们提出了一个包含有用和无用评论的数据集来响应这些请求。然后,我们将帮助与密切相关的移情结构联系起来。最后,我们分析了与有用和无用注释相关的语言特性。
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引用次数: 1
Looking from the Inside: How Children Render Character’s Perspectives in Freely Told Fantasy Stories 从内部看:孩子们如何在自由讲述的幻想故事中呈现角色的视角
Pub Date : 1900-01-01 DOI: 10.18653/v1/2022.wnu-1.8
Max van Duijn, Bram van Dijk, Marco Spruit
Story characters not only perform actions, they typically also perceive, feel, think, and communicate. Here we are interested in how children render characters’ perspectives when freely telling a fantasy story. Drawing on a sample of 150 narratives elicited from Dutch children aged 4-12, we provide an inventory of 750 instances of character-perspective representation (CPR), distinguishing fourteen different types. Firstly, we observe that character perspectives are ubiquitous in freely told children’s stories and take more varied forms than traditional frameworks can accommodate. Secondly, we discuss variation in the use of different types of CPR across age groups, finding that character perspectives are being fleshed out in more advanced and diverse ways as children grow older. Thirdly, we explore whether such variation can be meaningfully linked to automatically extracted linguistic features, thereby probing the potential for using automated tools from NLP to extract and classify character perspectives in children’s stories.
故事角色不仅执行动作,他们通常还会感知、感觉、思考和交流。在这里,我们感兴趣的是孩子们在自由地讲述一个幻想故事时如何呈现角色的视角。从4-12岁的荷兰儿童中抽取了150个故事样本,我们提供了750个角色视角表现(CPR)实例的清单,区分了14种不同的类型。首先,我们观察到角色视角在自由讲述的儿童故事中无处不在,并且其形式比传统框架所能容纳的更加多样化。其次,我们讨论了不同年龄组使用不同类型CPR的差异,发现随着儿童年龄的增长,角色视角正在以更先进和多样化的方式充实。第三,我们探索这种变化是否可以与自动提取的语言特征有意义地联系起来,从而探索使用NLP自动化工具提取和分类儿童故事中的角色视角的潜力。
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引用次数: 0
Narrative Detection and Feature Analysis in Online Health Communities 在线健康社区的叙事检测与特征分析
Pub Date : 1900-01-01 DOI: 10.18653/v1/2022.wnu-1.7
Achyutarama Ganti, Steven R. Wilson, Zexin Ma, Xinyan Zhao, Rong Ma
Narratives have been shown to be an effective way to communicate health risks and promote health behavior change, and given the growing amount of health information being shared on social media, it is crucial to study health-related narratives in social media. However, expert identification of a large number of narrative texts is a time consuming process, and larger scale studies on the use of narratives may be enabled through automatic text classification approaches. Prior work has demonstrated that automatic narrative detection is possible, but modern deep learning approaches have not been used for this task in the domain of online health communities. Therefore, in this paper, we explore the use of deep learning methods to automatically classify the presence of narratives in social media posts, finding that they outperform previously proposed approaches. We also find that in many cases, these models generalize well across posts from different health organizations. Finally, in order to better understand the increase in performance achieved by deep learning models, we use feature analysis techniques to explore the features that most contribute to narrative detection for posts in online health communities.
叙述已被证明是传达健康风险和促进健康行为改变的有效方式,鉴于在社交媒体上分享的健康信息越来越多,研究社交媒体上与健康有关的叙述至关重要。然而,专家对大量叙事文本的识别是一个耗时的过程,通过自动文本分类方法可以实现对叙事使用的更大规模研究。先前的工作已经证明,自动叙事检测是可能的,但现代深度学习方法尚未用于在线健康社区领域的这项任务。因此,在本文中,我们探索使用深度学习方法来自动分类社交媒体帖子中叙述的存在,发现它们优于先前提出的方法。我们还发现,在许多情况下,这些模型可以很好地概括来自不同卫生组织的岗位。最后,为了更好地理解深度学习模型所实现的性能提升,我们使用特征分析技术来探索对在线健康社区帖子的叙事检测最有贡献的特征。
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引用次数: 1
Compositional Generalization for Kinship Prediction through Data Augmentation 基于数据扩充的亲属关系预测组合概化
Pub Date : 1900-01-01 DOI: 10.18653/v1/2022.wnu-1.2
Kangda Wei, Sayan Ghosh, Shashank Srivastava
Transformer-based models have shown promising performance in numerous NLP tasks. However, recent work has shown the limitation of such models in showing compositional generalization, which requires models to generalize to novel compositions of known concepts. In this work, we explore two strategies for compositional generalization on the task of kinship prediction from stories, (1) data augmentation and (2) predicting and using intermediate structured representation (in form of kinship graphs). Our experiments show that data augmentation boosts generalization performance by around 20% on average relative to a baseline model from prior work not using these strategies. However, predicting and using intermediate kinship graphs leads to a deterioration in the generalization of kinship prediction by around 50% on average relative to models that only leverage data augmentation.
基于变压器的模型在许多NLP任务中表现出了良好的性能。然而,最近的工作表明,这种模型在显示组合泛化方面的局限性,这需要模型泛化到已知概念的新组合。在这项工作中,我们探索了两种基于故事的亲属关系预测任务的组合泛化策略,(1)数据增强和(2)预测和使用中间结构化表示(以亲属关系图的形式)。我们的实验表明,相对于不使用这些策略的先前工作的基线模型,数据增强将泛化性能平均提高了约20%。然而,与仅利用数据增强的模型相比,预测和使用中间亲属关系图会导致亲属关系预测的泛化程度平均下降约50%。
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引用次数: 0
GPT-2-based Human-in-the-loop Theatre Play Script Generation 基于gpt -2的人在循环戏剧剧本生成
Pub Date : 1900-01-01 DOI: 10.18653/v1/2022.wnu-1.4
Rudolf Rosa, Patrícia Schmidtová, Ondrej Dusek, Tomáš Musil, D. Mareček, Saad Obaid, Marie Nováková, Klára Vosecká, Josef Doležal
We experiment with adapting generative language models for the generation of long coherent narratives in the form of theatre plays. Since fully automatic generation of whole plays is not currently feasible, we created an interactive tool that allows a human user to steer the generation somewhat while minimizing intervention. We pursue two approaches to long-text generation: a flat generation with summarization of context, and a hierarchical text-to-text two-stage approach, where a synopsis is generated first and then used to condition generation of the final script. Our preliminary results and discussions with theatre professionals show improvements over vanilla language model generation, but also identify important limitations of our approach.
我们尝试适应生成语言模型,以戏剧戏剧的形式生成长连贯的叙事。由于目前还无法实现全集的全自动生成,我们创建了一个交互式工具,允许人类用户在一定程度上控制生成,同时最大限度地减少干预。我们采用两种方法来生成长文本:一种是具有上下文摘要的平面生成,另一种是分层的文本到文本两阶段方法,其中首先生成摘要,然后用于最终脚本的条件生成。我们的初步结果和与戏剧专业人士的讨论表明,相比于普通语言模型生成,我们有所改进,但也发现了我们方法的重要局限性。
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引用次数: 1
Uncovering Surprising Event Boundaries in Narratives 揭示叙事中令人惊讶的事件边界
Pub Date : 1900-01-01 DOI: 10.18653/v1/2022.wnu-1.1
Zhiling Wang, A. Jafarpour, Maarten Sap
It is important to define meaningful and interpretable automatic evaluation metrics for open-domain dialog research. Standard language generation metrics have been shown to be ineffective for dialog. This paper introduces the FED metric (fine-grained evaluation of dialog), an automatic evaluation metric which uses DialoGPT, without any fine-tuning or supervision. It also introduces the FED dataset which is constructed by annotating a set of human-system and human-human conversations with eighteen fine-grained dialog qualities. The FED metric (1) does not rely on a ground-truth response, (2) does not require training data and (3) measures fine-grained dialog qualities at both the turn and whole dialog levels. FED attains moderate to strong correlation with human judgement at both levels.
在开放域对话研究中,定义有意义且可解释的自动评价指标是非常重要的。标准语言生成度量已被证明对对话是无效的。本文介绍了FED度量(细粒度的对话评估),这是一种使用DialoGPT的自动评估度量,不需要任何微调和监督。它还介绍了FED数据集,该数据集通过注释一组具有18个细粒度对话质量的人-系统和人-人对话来构建。FED度量(1)不依赖于真实的响应,(2)不需要训练数据,(3)在回合和整个对话级别测量细粒度的对话质量。FED与人的判断在这两个层面上都达到了中度到高度的相关性。
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引用次数: 4
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Proceedings of the 4th Workshop of Narrative Understanding (WNU2022)
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