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Asking the Crowd: Question Analysis, Evaluation and Generation for Open Discussion on Online Forums

机译:向人群提问:在线论坛公开讨论的问题分析,评估和产生

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Teaching machines to ask questions is an important yet challenging task. Most prior work focused on generating questions with fixed answers. As contents are highly limited by given answers, these questions are often not worth discussing. In this paper, we take the first step on teaching machines to ask open-answered questions from real-world news for open discussion (openQG). To generate high-qualified questions, effective ways for question evaluation are required. We take the perspective that the more answers a question receives, the better it is for open discussion, and analyze how language use affects the number of answers. Compared with other factors, e.g. topic and post time, linguistic factors keep our evaluation from being domain-specific. We carefully perform variable control on 11.5M questions from online forums to get a dataset, OQRanD, and further perform question analysis. Based on these conclusions, several models are built for question evaluation. For openQG task, we construct OQGenD, the first dataset as far as we know, and propose a model based on conditional generative adversarial networks and our question evaluation model. Experiments show that our model can generate questions with higher quality compared with commonly-used text generation methods.
机译:教机器问问题是一项重要但具有挑战性的任务。先前的大多数工作都集中在生成具有固定答案的问题上。由于给出的答案严重限制了内容,因此这些问题通常不值得讨论。在本文中,我们迈出了第一步,在教学机器上从现实世界中的新闻中提出开放式问题,以进行公开讨论(openQG)。为了生成高质量的问题,需要有效的问题评估方法。我们认为,问题得到的答案越多,公开讨论的效果就越好,并分析语言的使用如何影响答案的数量。与其他因素相比,例如主题和发布时间,语言因素使我们的评估不因特定领域而异。我们仔细地对在线论坛中的1150万个问题进行变量控制,以获取数据集OQRanD,并进一步执行问题分析。基于这些结论,建立了几个用于问题评估的模型。对于openQG任务,我们构造了我们所知的第一个数据集OQGenD,并提出了基于条件生成对抗网络和问题评估模型的模型。实验表明,与常用的文本生成方法相比,我们的模型可以生成更高质量的问题。

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