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Learning Attribute Selections for Non-Pronominal Expressions

机译:非代词表达式的学习属性选择

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摘要

A fundamental function of any task-oriented dialogue system is the ability to generate nominal expressions that describe objects in the task domain. In this paper, we report results from using machine learning to train and test a nominal-expression generator on a set of 393 nominal descriptions from the COCONUT corpus of task-oriented design dialogues. Results show that we can achieve a 50% match to human performance as opposed to a 16% baseline for just guessing the most frequent type of nominal expression in the COCONUT corpus. To our surprise our results indicate that many of the central features of previously proposed selection models did not improve the performance of the learned nominal-expression generator.
机译:任何面向任务的对话系统的基本功能是生成描述任务域中对象的名义表达的能力。在本文中,我们报告了使用面向对象的设计对话的COCONUT语料库中的393个名义描述集上的机器学习训练和测试名义表达生成器的结果。结果表明,仅凭猜测COCONUT语料库中最常见的名义表达类型,我们就可以实现与人类绩效的50%的匹配,而与基线的16%的基线相对。令我们惊讶的是,我们的结果表明,先前提出的选择模型的许多主要特征并未改善学习的标称表达式生成器的性能。

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