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Multi-Task Learning for Spoken Language Understanding with Shared Slots

机译:多任务学习,可通过共享插槽了解口语

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This paper addresses the problem of learning multiple spoken language understanding (SLU) tasks that have overlapping sets of slots. In such a scenario, it is possible to achieve better slot filling performance by learning multiple tasks simultaneously, as opposed to learning them independently. We focus on presenting a number of simple multi-task learning algorithms for slot filling systems based on semi-Markov CRFs, assuming the knowledge of shared slots. Furthermore, we discuss an intra-domain clustering method that automatically discovers shared slots from training data. The effectiveness of our proposed approaches is demonstrated in an SLU application that involves three different yet related tasks.
机译:本文解决了学习具有重叠时隙集合的多种口语理解(SLU)任务的问题。在这种情况下,与同时学习多个任务相比,可以通过同时学习多个任务来获得更好的插槽填充性能。假设了解共享插槽,我们将重点介绍一些基于半马尔可夫CRF的插槽填充系统的简单多任务学习算法。此外,我们讨论了一种域内聚类方法,该方法可自动从训练数据中发现共享时隙。我们提出的方法的有效性在涉及三个不同但相关任务的SLU应用程序中得到了证明。

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