综合覆盖、注意和指针网络提高口语理解槽填充

Yaping Wang, Huiqin Shao, Zhen Li, Yan Zhu, Zhe Liu
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引用次数: 0

摘要

序列到序列(Seq2Seq)模型和指针网络(Ptr-Net)最近在只有句子级注释可用的情况下,在槽填充任务中显示出有希望的结果,而模型的预测包含槽值的重复。在本文中,我们增加了一种覆盖机制来缓解补槽任务中重复预测的问题。我们使用覆盖向量来记录注意力历史,然后添加到注意力的计算中,这可以迫使模型更多地考虑不可预测的槽值。实验表明,与基准DSTC2(对话状态跟踪挑战2)数据集上的基线模型相比,该模型显著提高了槽值预测F1,相对提高了8.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combined Coverage, Attention and Pointer Networks for Improving Slot Filling in Spoken Language Understanding
Sequence to sequence (Seq2Seq) model together with pointer network (Ptr-Net) has recently show promising results in slot filling task, in the situation where only sentence-level annotations are available, while the model's prediction contains repetition of slot values. In this paper, we add a coverage mechanism to alleviate issues of repeating prediction in slot filling task. We use a coverage vector to record attention history, and then add to the computation of attention, which can force model to consider more about un-predicted slot values. Experiments show that the proposed model significantly improves slot value prediction F1 with 8.5% relative improvement compare to the baseline models on benchmark DSTC2 (Dialog State Tracking Challenge 2) datasets.
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