ONENET: Joint domain, intent, slot prediction for spoken language understanding

Young-Bum Kim, Sungjin Lee, K. Stratos
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引用次数: 71

Abstract

In practice, most spoken language understanding systems process user input in a pipelined manner; first domain is predicted, then intent and semantic slots are inferred according to the semantic frames of the predicted domain. The pipeline approach, however, has some disadvantages: error propagation and lack of information sharing. To address these issues, we present a unified neural network that jointly performs domain, intent, and slot predictions. Our approach adopts a principled architecture for multitask learning to fold in the state-of-the-art models for each task. With a few more ingredients, e.g. orthography-sensitive input encoding and curriculum training, our model delivered significant improvements in all three tasks across all domains over strong baselines, including one using oracle prediction for domain detection, on real user data of a commercial personal assistant.
面向口语理解的联合域、意图、槽预测
在实践中,大多数口语理解系统以流水线的方式处理用户输入;首先预测领域,然后根据预测领域的语义框架推断意图和语义槽。然而,管道方法有一些缺点:错误传播和缺乏信息共享。为了解决这些问题,我们提出了一个统一的神经网络,联合执行域、意图和槽预测。我们的方法采用多任务学习的原则架构,为每个任务折叠最先进的模型。再加上一些成分,例如,对拼写敏感的输入编码和课程训练,我们的模型在所有领域的三个任务上都有了显著的改进,在强大的基线上,包括使用oracle预测进行领域检测,在一个商业个人助理的真实用户数据上。
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