Generative AI is sowing the seeds of doubt in serious science | 生成式 AI 正在为严肃科学播下怀疑的种子 - FT中文网
登录×
电子邮件/用户名
密码
记住我
请输入邮箱和密码进行绑定操作:
请输入手机号码,通过短信验证(目前仅支持中国大陆地区的手机号):
请您阅读我们的用户注册协议隐私权保护政策,点击下方按钮即视为您接受。
FT英语电台

Generative AI is sowing the seeds of doubt in serious science
生成式 AI 正在为严肃科学播下怀疑的种子

Researchers have already developed a bot that could help tell the difference between synthetic and human-generated text
研究人员正在开发工具,以区分合成文本和人工生成的文本。
00:00

undefined

The writer is a science commentator

Large language models like ChatGPT are purveyors of plausibility. The chatbots, many based on so-called generative AI, are trained to respond to user questions by scraping the internet for relevant information and assembling coherent answers, churning out convincing student essays, authoritative legal documents and believable news stories.

But, because publicly available data contains misinformation and disinformation, some machine-generated texts might not be accurate or true. That has triggered a scramble to develop tools to identify whether text has been drafted by human or machine. Science is also struggling to adjust to this new era, with live discussions over whether chatbots should be allowed to write scientific papers or even generate new hypotheses.

The importance of distinguishing artificial from human intelligence is growing by the day. This month, UBS analysts revealed ChatGPT was the fastest-growing web app in history, garnering 100mn monthly active users in January. Some sectors have decided there is no point bolting the stable door: on Monday, the International Baccalaureate said pupils would be allowed to use ChatGPT to write essays, provided they referenced it.  

In fairness, the tech’s creator is upfront about its limitations. Sam Altman, OpenAI’s chief executive, warned in December that ChatGPT was “good enough at some things to create a misleading impression of greatness . . . we have lots of work to do on robustness and truthfulness.” The company is developing a cryptographic watermark for its output, a secret machine-readable sequence of punctuation, spellings and word order; and is honing a “classifier” to tell the difference between synthetic and human-generated text, using examples of both to train it.

Eric Mitchell, a graduate student at Stanford University, figured a classifier would take a lot of training data. Along with colleagues, he came up with DetectGPT, a “zero-shot” approach to spotting the difference, meaning the method requires no prior learning. Instead, the method turns a chatbot on itself, to sniff out its own output.

It works like this: DetectGPT asks a chatbot how much it “likes” a sample text, with the “liking” a shorthand for how similar the sample is to its own creations. DetectGPT then goes one step further — it “perturbs” the text, slightly altering the wording. The assumption is that a chatbot is more variable in its “likes” of altered human-generated text than altered machine text. In early tests, the researchers claim, the method correctly distinguished between human and machine authorship 95 per cent of the time.

There are caveats: the results are not yet peer-reviewed; the method, while better than random guessing, did not work equally reliably across all generative AI models. DetectGPT could be fooled by making human tweaks to synthetic text.

What does all this mean for science? Scientific publishing is the lifeblood of research, injecting ideas, hypotheses, arguments and evidence into the global scientific canon. Some have been quick to alight on ChatGPT as a research assistant, with a handful of papers controversially listing the AI as a co-author.

Meta even launched a science-specific text generator called Galactica. It was withdrawn three days later. Among the howlers it produced was a fictitious history of bears travelling in space.

Professor Michael Black of the Max Planck Institute for Intelligent Systems in Tübingen tweeted at the time that he was “troubled” by Galactica’s answers to multiple inquiries about his own research field, including attributing bogus papers to real researchers. “In all cases, [Galactica] was wrong or biased but sounded right and authoritative. I think it’s dangerous.” 

The peril comes from plausible text slipping into real scientific submissions, peppering the literature with fake citations and forever distorting the canon. The journal Science now bans generated text outright; Nature permits its use if declared but forbids crediting it as co-author.  

Then again, most people don’t consult high-end journals to guide their scientific thinking. Should the devious be so inclined, these chatbots can spew an on-demand stream of citation-heavy pseudoscience on why vaccination doesn’t work, or why global warming is a hoax. That misleading material, posted online, can then be swallowed by future generative AI to produce a new iteration of falsehoods that further pollutes public discourse.

The merchants of doubt must be rubbing their hands.

版权声明:本文版权归FT中文网所有,未经允许任何单位或个人不得转载,复制或以任何其他方式使用本文全部或部分,侵权必究。

你真的是人类吗?

人工智能的日益普及使得在数字世界中核实某人的身份变得更加困难。

生物计算机是如何“培育”的

澳大利亚初创公司Cortical Labs与英国的bit.bio共同打造了CL1,旨在创造“合成生物智能”。

工作中遇到问题?我的聊天机器人会给你发消息

大量由人工智能生成的投诉,意味着人力资源和客户服务部门将面临一种新的无端麻烦。

如何让孩子们重新开始阅读

如今,出于兴趣而阅读的年轻人比以往任何时候都少,这一趋势带来了广泛的经济和社会影响。我们能否扭转这一局面?

市值100亿美元的英国能源挑战者普拉克斯集团如何走向瓦解

林赛炼油厂所有者的倒闭是一个警示故事,说明一家缺乏足够财力来管理其庞大业务的公司所面临的风险。

与特朗普通话后俄罗斯对乌克兰发动创纪录空袭

美国停止交付关键拦截器后,克里姆林宫派出500多架伊朗设计的无人机。
设置字号×
最小
较小
默认
较大
最大
分享×