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Using Paraphrasing and Memory-Augmented Models to Combat Data Sparsity in Question Interpretation with a Virtual Patient Dialogue System

机译:使用释义和记忆增强模型在虚拟患者对话系统的问题解释中与数据稀疏性作斗争

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摘要

When interpreting questions in a virtual patient dialogue system, one must inevitably tackle the challenge of a long tail of relatively infrequently asked questions. To make progress on this challenge, we investigate the use of paraphrasing for data augmentation and neural memory-based classification, finding that the two methods work best in combination. In particular, we find that the neural memory-based approach not only outperforms a straight CNN classifier on low frequency questions, but also takes better advantage of the augmented data created by paraphrasing, together yielding a nearly 10% absolute improvement in accuracy on the least frequently asked questions.
机译:在虚拟的患者对话系统中解释问题时,必须不可避免地应对相对不常见的问题长尾的挑战。为了在这一挑战上取得进展,我们研究了释义方法在数据增强和基于神经记忆的分类中的使用,发现这两种方法结合使用效果最佳。尤其是,我们发现基于神经记忆的方法不仅在低频问题上优于直接的CNN分类器,而且还更好地利用了释义所产生的增强数据,并在最低程度上将准确度提高了近10%。经常问的问题。

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