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Challenging Reading Comprehension on Daily Conversation: Passage Completion on Multiparty Dialog

机译:挑战日常会话的阅读理解能力:多方对话中的段落完成

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This paper presents a new corpus and a robust deep learning architecture for a task in reading comprehension, passage completion, on multiparty dialog. Given a dialog in text and a passage containing factual descriptions about the dialog where mentions of the characters are replaced by blanks, the task is to fill the blanks with the most appropriate character names that reflect the contexts in the dialog. Since there is no dataset that challenges the task of passage completion in this genre, we create a corpus by selecting transcripts from a TV show that comprise 1,681 dialogs, generating passages for each dialog through crowdsourcing, and annotating mentions of characters in both the dialog and the passages. Given this dataset, we build a deep neural model that integrates rich feature extraction from convolutional neural networks into sequence modeling in recurrent neural networks, optimized by utterance and dialog level attentions. Our model outperforms the previous state-of-the-art model on this task in a different genre using bidirectional LSTM, showing a 13.0+% improvement for longer dialogs. Our analysis shows the effectiveness of the attention mechanisms and suggests a direction to machine comprehension on multiparty dialog.
机译:本文提出了一种新的语料库和强大的深度学习体系结构,用于在多方对话中阅读理解,段落完成的任务。给定文本对话框和一段包含该对话框的事实描述的段落,其中用空格替换提到的字符,任务是用最合适的字符名称填充空白,以反映对话框中的上下文。由于在该类型中没有数据集会挑战段落完成的任务,因此我们通过从电视节目中选择包含1,681个对话框的字幕记录,通过众包生成每个对话框的段落,并在对话框和段落。给定该数据集,我们将构建一个深度神经模型,该模型将从卷积神经网络中提取的丰富特征集成到递归神经网络中的序列建模中,并通过话语和对话级别的关注进行了优化。使用双向LSTM,我们的模型在不同类型上的表现优于以前在该任务上的最新模型,对于较长的对话框显示了13.0 +%的改进。我们的分析显示了注意机制的有效性,并提出了在多方对话中进行机器理解的方向。

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