Recent joint intent detection and slot tagging models have seen improved performance when compared to individual models. In many real-world datasets, the slot labels and values have a strong correlation with their intent labels. In such cases, the intent label information may act as a useful feature to the slot tagging model. In this paper, we examine the effect of leveraging intent label features through 3 techniques in the slot tagging task of joint intent and slot detection models. We evaluate our techniques on benchmark spoken language datasets SNIPS and ATIS, as well as over a large private Bixby dataset and observe an improved slot-tagging performance over state-of-the-art models.
翻译:与单个模型相比,最近联合意图探测和位置标记模型的性能有所改善,在许多真实世界数据集中,位置标签和价值与其意图标签密切相关,在这种情况下,意图标签信息可作为位置标记模型的有用特征。在本文中,我们通过联合意图和位置探测模型的位点标记任务中的3种技术,审查利用意图标签特征的影响。我们评估了我们关于通用口语数据库SNIPS和ATIS以及大型私营比克斯比数据集的基准技术,并观察了比最新模型更好的位置标记性能。