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These bans are not merely the actions of academics who are worried they won’t be able to catch cheaters. This is not just about catching students who copied a source without attribution. Rather, the severity of these actions reflects a question, one that is not getting enough attention in the endless coverage of OpenAI’s ChatGPT chatbot: Why should we trust anything that it outputs?
This is a vitally important question, as ChatGPT and programmes like it can easily be used, with or without acknowledgement, in the information sources that comprise the foundation of our society, especially academia and the news media.
Based on my work on the political economy of knowledge governance, academic bans on ChatGPT’s use are a proportionate reaction to the threat ChatGPT poses to our entire information ecosystem. Journalists and academics should be wary of using ChatGPT.
Based on its output, ChatGPT might seem like just another information source or tool. However, in reality, ChatGPT – or, rather the means by which ChatGPT produces its output – is a dagger aimed directly at their very credibility as authoritative sources of knowledge. It should not be taken lightly.
Trust And Information
Think about why we see some information sources or types of knowledge as more trusted than others. Since the European Enlightenment, we’ve tended to equate scientific knowledge with knowledge in general.
Science is more than laboratory research: it’s a way of thinking that prioritises empirically based evidence and the pursuit of transparent methods regarding evidence collection and evaluation. And it tends to be the gold standard by which all knowledge is judged. For example, journalists have credibility because they investigate information, cite sources and provide evidence. Even though sometimes the reporting may contain errors or omissions, that doesn’t change the profession’s authority.
The same goes for opinion editorial writers, especially academics and other experts because they – we – draw our authority from our status as experts in a subject. Expertise involves a command of the sources that are recognised as comprising legitimate knowledge in our fields.
Most op-eds aren’t citation-heavy, but responsible academics will be able to point you to the thinkers and the work they’re drawing on. And those sources themselves are built on verifiable sources that a reader should be able to verify for themselves.
Truth And Outputs
Because human writers and ChatGPT seem to be producing the same output – sentences and paragraphs – it’s understandable that some people may mistakenly confer this scientifically sourced authority onto ChatGPT’s output.
That both ChatGPT and reporters produce sentences is where the similarity ends. What’s most important – the source of authority – is not what they produce, but how they produce it.
ChatGPT doesn’t produce sentences in the same way a reporter does. ChatGPT, and other machine-learning, large language models, may seem sophisticated, but they’re basically just complex autocomplete machines.
Only instead of suggesting the next word in an email, they produce the most statistically likely words in much longer packages.
These programmes repackage others’ work as if it were something new. It does not “understand” what it produces.
The justification for these outputs can never be truth. Its truth is the truth of the correlation, that the word “sentence” should always complete the phrase “We finish each other’s …” because it is the most common occurrence, not because it is expressing anything that has been observed.
Because ChatGPT’s truth is only a statistical truth, output produced by this programme cannot ever be trusted in the same way that we can trust a reporter or an academic’s output.
It cannot be verified because it has been constructed to create output in a different way than what we usually think of as being “scientific.”
You can’t check ChatGPT’s sources because the source is the statistical fact that most of the time, a set of words tend to follow each other.
No matter how coherent ChatGPT’s output may seem, simply publishing what it produces is still the equivalent of letting autocomplete run wild. It’s an irresponsible practice because it pretends that these statistical tricks are equivalent to well-sourced and verified knowledge.
Similarly, academics and others who incorporate ChatGPT into their workflow run the existential risk of kicking the entire edifice of scientific knowledge out from underneath themselves.
Because ChatGPT’s output is correlation-based, how does the writer know that it is accurate? Did they verify it against actual sources, or does the output simply conform to their personal prejudices? And if they’re experts in their field, why are they using ChatGPT in the first place? (The Conversation)
(The article has been shared by PTI via The Conversation)
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