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Asking the Right Question: Inferring Advice-Seeking Intentions from Personal Narratives

机译:询问正确的问题:推断出咨询的咨询意图来自个人叙述

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People often share personal narratives in order to seek advice from others. To properly infer the narrator's intention, one needs to apply a certain degree of common sense and social intuition. To test the capabilities of NLP systems to recover such intuition, we introduce the new task of inferring what is the advice-seeking goal behind a personal narrative. We formulate this as a cloze test, where the goal is to identify which of two advice-seeking questions was removed from a given narrative. The main challenge in constructing this task is finding pairs of semantically plausible advice-seeking questions for given narratives. To address this challenge, we devise a method that exploits commonalities in experiences people share online to automatically extract pairs of questions that are appropriate candidates for the cloze task. This results in a dataset of over 20,000 personal narratives, each matched with a pair of related advice-seeking questions: one actually intended by the narrator, and the other one not. The dataset covers a very broad array of human experiences, from dating, to career options, to stolen iPads. We use human annotation to determine the degree to which the task relies on common sense and social intuition in addition to a semantic understanding of the narrative. By introducing several baselines for this new task we demonstrate its feasibility and identify avenues for better modeling the intention of the narrator.
机译:人们经常分享个人叙述,以寻求其他人的建议。正确推断叙述者的意图,人们需要施加一定程度的常识和社会直觉。为了测试NLP系统的能力来恢复这种直觉,我们介绍了推断出个人叙述背后的建议目标的新任务。我们将其制定为一个强化测试,目标是确定从特定的叙述中删除了两项建议问题中的哪一项。构建这项任务的主要挑战是为特定叙述寻找关于寻求关于叙事的语义合理的建议问题。为了解决这一挑战,我们设计了一种方法,该方法利用体验人们分享的经验分享,自动提取对ILOZE任务的适当候选人的对问题。这导致超过20,000个个人叙述的数据集,每个叙述都与一对相关的建议问题:一个实际打算由叙述者进行的,另一个不存在。 DataSet涵盖了一系列非常广泛的人类体验,从约会到职业选项,以窃取iPad。除了对叙述的语义理解之外,我们使用人类注释来确定任务依赖于常识和社会直觉的程度。通过为这项新任务引入几个基线,我们展示了其可行性,并确定了更好地建模叙述者的意图的途径。

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