Much recent work in task-oriented parsing has focused on finding a middle ground between flat slots and intents, which are inexpressive but easy to annotate, and powerful representations such as the lambda calculus, which are expressive but costly to annotate. This paper continues the exploration of task-oriented parsing by introducing a new dataset for parsing pizza and drink orders, whose semantics cannot be captured by flat slots and intents. We perform an extensive evaluation of deep-learning techniques for task-oriented parsing on this dataset, including different flavors of seq2seq systems and RNNGs. The dataset comes in two main versions, one in a recently introduced utterance-level hierarchical notation that we call TOP, and one whose targets are executable representations (EXR). We demonstrate empirically that training the parser to directly generate EXR notation not only solves the problem of entity resolution in one fell swoop and overcomes a number of expressive limitations of TOP notation, but also results in significantly greater parsing accuracy.
翻译:最近在以任务为导向的分析中所做的大量工作都集中在寻找平板槽和意图之间的中间点,平板槽和意图虽然表达不清晰,但易于说明,以及诸如羊羔微积分等强有力的表达方式,这些缩略语表露出表情,但对于注释来说却花费很大。本文继续探索以任务为导向的分解,为切除披萨和饮料订单引入新的数据集,其语义不能被平板槽和意图所捕捉。我们广泛评估了以任务为导向的分解方法的深层次技术,包括后方2当量系统和RNNG的不同口味。 数据集以两种主要版本出现,一种是最近引入的口头层次分级说明(我们称之为TOP),另一种是其目标可以执行的分级说明(EXR)。我们从经验上表明,在直接产生EXR注时,对分析师进行的培训不仅解决了实体解决问题的问题,而且克服了托普(TOP)的诸多明确限制,而且还导致了更大的精确性。