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Concorde: Morphological Agreement in Conversational Models

机译:协和式:会话模型中的形态学协议

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Neural conversational models are widely used in applications such as personal assistants and chat bots. These models seem to give better performance when operating on the word level. However, for fusional languages such as French, Russian, or Polish, the vocabulary size can become infeasible since most of the words have multiple of word forms. To reduce vocabulary size, we propose a new pipeline for building conversational models: first generate words in a standard (lemmatized) form and then transform them into a grammatically correct sentence. In this work, we focus on the emph{morphological agreement} part of the pipeline, i.e., reconstructing proper word forms from lemmatized sentences. For this task, we propose a neural network architecture that outperforms character-level models while being twice faster in training and 20% faster in inference. The proposed pipeline yields better performance than character-level conversational models according to human assessor testing.
机译:神经对话模型广泛用于个人助理和聊天机器人等应用程序中。这些模型在字级上运行时似乎可以提供更好的性能。但是,对于诸如法语,俄语或波兰语这样的融合语言,由于大多数单词都具有多个单词形式,因此词汇量变得不可行。为了减少词汇量,我们提出了一条建立会话模型的新管道:首先以标准(词义化)形式生成单词,然后将其转换为语法正确的句子。在这项工作中,我们着重研究管道的 emph {morphological protocol}部分,即从残化的句子中重建适当的词形。为此,我们提出了一种神经网络架构,其性能优于字符级模型,同时训练速度快两倍,推理速度快20%。根据人工评估人员的测试,拟议的管道比字符级别的对话模型产生更好的性能。

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