Multi-intent detection and slot filling joint models are gaining increasing traction since they are closer to complicated real-world scenarios. However, existing approaches (1) focus on identifying implicit correlations between utterances and one-hot encoded labels in both tasks while ignoring explicit label characteristics; (2) directly incorporate multi-intent information for each token, which could lead to incorrect slot prediction due to the introduction of irrelevant intent. In this paper, we propose a framework termed DGIF, which first leverages the semantic information of labels to give the model additional signals and enriched priors. Then, a multi-grain interactive graph is constructed to model correlations between intents and slots. Specifically, we propose a novel approach to construct the interactive graph based on the injection of label semantics, which can automatically update the graph to better alleviate error propagation. Experimental results show that our framework significantly outperforms existing approaches, obtaining a relative improvement of 13.7% over the previous best model on the MixATIS dataset in overall accuracy.
翻译:多意图探测和空档填补联合模型越来越接近复杂的真实世界情景,因此,现有办法正在逐渐增加牵引力。但现有办法(1) 侧重于查明两种任务中言词和单热编码标签之间的隐含关联,同时忽略明确标签特性;(2) 直接纳入每个符号的多意图信息,这可能导致由于引入不相关意图而导致不正确的空档预测。在本文件中,我们提议了一个称为DGIF的框架,首先利用标签的语义信息为模型提供额外信号并丰富前题。然后,构建了一个多格互动图,以模拟意图和空档之间的相互关系。具体地说,我们提议了一种新颖的方法,以输入标签语义符号为基础构建交互式图表,可以自动更新图表,以更好地减轻错误传播。实验结果表明,我们的框架大大超越了现有方法,比MixATIS数据集上前一个最佳模型的总体精确度提高了13.7%。