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Viable Threat on News Reading: Generating Biased News Using Natural Language Models

机译:关于新闻阅读的可行威胁:使用自然语言模型产生偏见的新闻

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Recent advancements in natural language generation has raised serious concerns. High-performance language models are widely used for language generation tasks because they are able to produce fluent and meaningful sentences. These models are already being used to create fake news. They can also be exploited to generate biased news, which can then be used to attack news aggregators to change their reader's behavior and influence their bias. In this paper, we use a threat model to demonstrate that the publicly available language models can reliably generate biased news content based on an input original news. We also show that a large number of high-quality biased news articles can be generated using controllable text generation. A subjective evaluation with 80 participants demonstrated that the generated biased news is generally fluent, and a bias evaluation with 24 participants demonstrated that the bias (left or right) is usually evident in the generated articles and can be easily identified.
机译:自然语言生成的最新进步提出了严重的担忧。高性能语言模型广泛用于语言生成任务,因为它们能够产生流利和有意义的句子。这些模型已被用于创建假新闻。他们也可以被利用以产生偏见的新闻,然后可以用来攻击新闻聚合器来改变读者的行为并影响他们的偏见。在本文中,我们使用威胁模型来证明公共可用的语言模型可以基于输入原始新闻可靠地生成偏置新闻内容。我们还表明,可以使用可控文本生成产生大量高质量的偏见新闻文章。具有80名参与者的主观评估表明,产生的偏置新闻通常流畅,与24名参与者的偏见评估表明偏差(左或右)通常在所生成的物品中明显明显,并且可以容易地识别。

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