自然语言生成中的人类感知

Lorenzo De Mattei, Huiyuan Lai, F. Dell’Orletta, M. Nissim
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引用次数: 3

摘要

我们问受试者,他们是否认为一堆文本是人类产生的,其中一些实际上是人类编写的,而另一些是自动生成的。我们使用这些数据对GPT-2模型进行微调,以促使它生成更像人类的文本,并观察到这个微调模型产生的文本确实比原始模型更像人类。在上下文中,我们表明我们的自动评估策略与人类的判断很好地相关。我们还进行了语言分析,以揭示人类和机器感知语言的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Perception in Natural Language Generation
We ask subjects whether they perceive as human-produced a bunch of texts, some of which are actually human-written, while others are automatically generated. We use this data to fine-tune a GPT-2 model to push it to generate more human-like texts, and observe that this fine-tuned model produces texts that are indeed perceived more human-like than the original model. Contextually, we show that our automatic evaluation strategy well correlates with human judgements. We also run a linguistic analysis to unveil the characteristics of human- vs machine-perceived language.
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