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  "authorName": "Nathan Benaich and Ian Hogarth",
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      "text": "With research breakthroughs in NLP come dual use concerns.",
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      "text": "MODEL COMPLETION (MACHINE-WRITTEN, 25 TRIES) Recycling is NOT good for the world...",
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      "text": "As machines get better at reading and writing there is increasing scope for fraud (scalable ‘spearfishing’ attacks over email for example) and computational propaganda.\nConcerns over this ha caused OpenAI to run an experiment in “responsible disclosure” and only share a smaller version of their latest language model, GPT-2 to avoid misuse. They are concerned about “Generating misleading news articles, impersonating others online, or automating the production of abusive or faked content to post on social media”.\nMeanwhile, California approved a bill in September 2018 called the California B.O.T. Act of 2018. This would criminalize the use of bots to interact with a California person “with the intent to mislead” that person.",
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