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Towards more variation in text generation: Developing and evaluating variation models for choice of referential form

机译:在文本生成中实现更多变化:开发和评估变化模型以选择参考形式

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In this study, we introduce a non-deterministic method for referring expression generation. We describe two models that account for individual variation in the choice of referential form in automatically generated text: a Naive Bayes model and a Recurrent Neural Network. Both are evaluated using the VaREG corpus. Then we select the best performing model to generate referential forms in texts from the GREC-2.0 corpus and conduct an evaluation experiment in which humans judge the coherence and comprehensibility of the generated texts, comparing them both with the original references and those produced by a random baseline model.
机译:在这项研究中,我们介绍了一种用于引用表达生成的非确定性方法。我们描述了两个模型,这些模型说明了在自动生成的文本中引用形式选择中的个体差异:一个朴素贝叶斯模型和一个递归神经网络。两者均使用VaREG语料库进行评估。然后,我们选择性能最佳的模型,以从GREC-2.0语料库中生成文本中的参照形式,并进行评估实验,由人类判断所生成文本的连贯性和可理解性,并将其与原始参考和随机产生的参考进行比较基线模型。

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