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Bootstrapping incremental dialogue systems from minimal data: the generalisation power of dialogue grammars

机译:从最小数据引导增量对话系统:对话语法的泛化力量

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We investigate an end-to-end method for automatically inducing task-based dialogue systems from small amounts of unannotated dialogue data. It combines an incremental semantic grammar - Dynamic Syntax and Type Theory with Records (DS-TTR) - with Reinforcement Learning (RL), where language generation and dialogue management are a joint decision problem. The systems thus produced are incremental: dialogues are processed word-by-word, shown previously to be essential in supporting natural, spontaneous dialogue. We hypothesised that the rich linguistic knowledge within the grammar should enable a combinatorially large number of dialogue variations to be processed, even when trained on very few dialogues. Our experiments show that our model can process 74% of the Facebook AI b Abl dataset even when trained on only 0.13% of the data (5 dialogues). It can in addition process 65% of bAbI+, a corpus1 we created by systematically adding incremental dialogue phenomena such as restarts and self-corrections to bAbl. We compare our model with a state-of-the-art retrieval model, memn2n (Bordes et al., 2017). We find that, in terms of semantic accuracy, memn2n shows very poor robustness to the bAbI+ transformations even when trained on the full bAbI dataset.
机译:我们研究了从少量未经发布的对话数据自动诱导基于任务的对话系统的端到端的方法。它结合了增量语义语法 - 动态语法和类型理论与记录(DS-TTR) - 具有钢筋学习(RL),其中语言生成和对话管理是联合决策问题。由此产生的系统是增量的:对话是处理的字词,以前在支持自然,自发对话方面是必不可少的。我们假设语法内的丰富语言知识应该能够在很少的对话训练时能够处理要处理的组合大量对话变化。我们的实验表明,即使在仅在数据的0.13%的数据(5个对话)上培训,我们的模型也可以处理74%的Facebook AI B ABL数据集。它还可以另外的过程65%的Babi +,通过系统地添加增量对话现象(例如重启和自我校正)来创建的CORPUS1。我们将我们的模型与最先进的检索模型Memn2N进行比较(Bordes等,2017)。我们发现,在语义准确性方面,即使在完整的BABI数据集上培训,MEMN2N也显示出对BABI +变换的稳健性非常差。

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