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Pay Attention to the Ending: Strong Neural Baselines for the ROC Story Cloze Task

机译:注意结束:Roc Story Toze Task的强神经基线

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We consider the ROC story cloze task (Mostafazadeh et al., 2016) and present several findings. We develop a model that uses hierarchical recurrent networks with attention to encode the sentences in the story and score candidate endings. By discarding the large training set and only training on the validation set, we achieve an accuracy of 74.7%. Even when we discard the story plots (sentences before the ending) and only train to choose the better of two endings, we can still reach 72.5%. We then analyze this "ending-only" task setting. We estimate human accuracy to be 78% and find several types of clues that lead to this high accuracy, including those related to sentiment, negation, and general ending likelihood regardless of the story context.
机译:我们考虑Roc Story Cloze任务(Mostafazadeh等,2016)并呈现了几种调查结果。我们开发了一种模型,它使用分层经常性网络,注意编码故事中的句子并得分候选人结束。通过丢弃大型训练集和验证集的培训,我们可以获得74.7%的准确性。即使我们丢弃故事情节(结束前的句子),只有火车选择两个结局的更好,我们仍然可以达到72.5%。然后,我们分析此“仅限”任务设置。我们估计人工准确性为78%,并找到几种类型的线索,导致这种高精度,包括与情感,否定和普遍结束似然有关的那些,无论故事背景如何。

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