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Learning to Ask Good Questions: Ranking Clarification Questions using Neural Expected Value of Perfect Information

机译:学会提出好的问题:使用完美信息的神经期望值对澄清问题进行排名

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Inquiry is fundamental to communication, and machines cannot effectively collaborate with humans unless they can ask questions. In this work, we build a neural network model for the task of ranking clarification questions. Our model is inspired by the idea of expected value of perfect information: a good question is one whose expected answer will be useful. We study this problem using data from StackExchange, a plentiful online resource in which people routinely ask clarifying questions to posts so that they can better offer assistance to the original poster. We create a dataset of clarification questions consisting of ~77K posts paired with a clarification question (and answer) from three domains of StackExchange: askubuntu, unix and superuser. We evaluate our model on 500 samples of this dataset against expert human judgments and demonstrate significant improvements over controlled baselines.
机译:查询是沟通的基础,机器无法与人类有效协作,除非他们可以提出问题。在这项工作中,我们建立了一个神经网络模型,用于对澄清问题进行排名。我们的模型受完美信息的预期价值这一思想的启发:一个好的问题是其预期答案将是有用的。我们使用来自StackExchange的数据来研究此问题,StackExchange是一个丰富的在线资源,人们可以在其中定期询问帖子的澄清问题,以便他们可以更好地为原始海报提供帮助。我们创建了一个包含约77K个帖子的澄清问题数据集,并与来自StackExchange三个域的一个澄清问题(和答案)配对:askubuntu,unix和superuser。我们根据专家的判断在该数据集的500个样本上评估了我们的模型,并证明了在受控基线之上的重大改进。

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