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Rationally Reappraising ATIS-based Dialogue Systems

机译:理性地重新评估基于ATIS的对话系统

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The Air Travel Information Service (ATIS) corpus has been the most common benchmark for evaluating Spoken Language Understanding (SLU) tasks for more than three decades since it was released. Recent state-of-the-art neural models have obtained F1-scores near 98% on the task of slot filling. We developed a rule-based grammar for the ATIS domain that achieves a 95.82% F1-score on our evaluation set. In the process, we furthermore discovered numerous shortcomings in the ATIS corpus annotation, which we have fixed. This paper presents a detailed account of these shortcomings, our proposed repairs, our rule-based grammar and the neural slot-filling architectures associated with ATIS. We also rationally reappraise the motivations for choosing a neural architecture in view of this account. Fixing the annotation errors results in a relative error reduction of between 19.4 and 52% across all architectures. We nevertheless argue that neural models must play a different role in ATIS dialogues because of the latter's lack of variety.
机译:空中旅行信息服务(ATIS)语料库是评估出口语言理解(SLU)任务的最常见基准,因为它被释放以来三十多年。最近的最先进的神经模型已经获得了槽填充任务的F1分数接近98%。我们为ATIS领域开发了一种基于规则的语法,可以在评估集上实现95.82%的F1分数。在此过程中,我们还发现了我们固定的ATIS语料库注释中的许多缺点。本文介绍了这些缺点的详细说明,我们提出的维修,我们的规则的语法和与ATIS相关的神经插槽填充架构。考虑到此账户,我们还可重新评估选择神经结构的动机。修复注释错误导致所有架构中的相对误差减少19.4和52%。然而,由于后者缺乏各种各样,我们仍然认为神经模型必须在atis对话中发挥不同的作用。

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