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Counterfactual Language Model Adaptation for Suggesting Phrases

机译:建议词的反事实语言模型适应

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Mobile devices use language models to suggest words and phrases for use in text entry. Traditional language models are based on contextual word frequency in a static corpus of text. However, certain types of phrases, when offered to writers as suggestions, may be systematically chosen more often than their frequency would predict. In this paper, we propose the task of generating suggestions that writers accept, a related but distinct task to making accurate predictions. Although this task is fundamentally interactive, we propose a counter-factual setting that permits offline training and evaluation. We find that even a simple language model can capture text characteristics that improve acceptability.
机译:移动设备使用语言模型来建议用于文本输入的单词和短语。传统语言模型基于静态文本语料库中的上下文词频。但是,某些类型的短语在作为建议提供给作家时,可能会比其频率所预测的更频繁地被系统地选择。在本文中,我们提出了生成作者接受的建议的任务,这是做出准确预测的相关但截然不同的任务。尽管此任务从根本上讲是交互式的,但我们提出了一个反事实的设置,允许进行离线培训和评估。我们发现,即使是简单的语言模型也可以捕获可提高可接受性的文本特征。

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