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'where is this relationship going?': Understanding Relationship Trajectories in Narrative Text

机译:“这种关系在哪里?':了解叙事文本中的关系轨迹

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We examine a new commonsense reasoning task: given a narrative describing a social interaction that centers on two protagonists, systems make inferences about the underlying relationship trajectory. Specifically, we propose two evaluation tasks: Relationship Outlook Prediction MCQ and Resolution Prediction MCQ. In Relationship Outlook Prediction, a system maps an interaction to a relationship outlook that captures how the interaction is expected to change the relationship. In Resolution Prediction, a system attributes a given relationship outlook to a particular resolution that explains the outcome. These two tasks parallel two real-life questions that people frequently ponder upon as they navigate different social situations: "where is this relationship going?" and "how did we end up here?". To facilitate the investigation of human social relationships through these two tasks, we construct a new dataset, Social Narrative Tree, which consists of 1250 stories documenting a variety of daily social interactions. The narratives encode a multitude of social elements that interweave to give rise to rich commonsense knowledge of how relationships evolve with respect to social interactions. We establish baseline performances using language models and the accuracies are significantly lower than human performance. The results demonstrate that models need to look beyond syntactic and semantic signals to comprehend complex human relationships.
机译:我们审查了一个新的勤义推理任务:给出了一个叙述,描述了两个主角的社会互动,系统对底层关系轨迹进行推论。具体而言,我们提出了两个评估任务:关系前景预测MCQ和分辨率预测MCQ。在关系外观预测中,系统将交互映射到关系Outlook的交互,捕获预期如何改变关系的关系。在分辨率预测中,系统将给定的关系前景属性属于解释结果的特定分辨率。这两个任务平行了两个现实生活问题,即人们经常思考他们导航不同的社交场合:“这种关系在哪里?”和“我们是如何在这里结束的?”为了促进通过这两个任务的人类社会关系调查,我们构建了一个新的数据集,社会叙事树,由1250个故事组成,记录了各种日常社交互动。叙述编码了一些众多社会元素,以引起对关系如何发展的富有致辞知识,了解社会互动。我们使用语言模型建立基线性能,精度低于人类性能。结果表明,模型需要超越句法和语义信号来理解复杂的人际关系。

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