I agree with some parts, but not all.
I see it as an overfitting problem. Fundamentally, the topic here seems to be that citation indices and similar metrics are actually flawed indicators, and obsessing over them is just Goodhart's law in action. Ultimately, the argument is that the entire design of those metrics is wrong.
To be precise, it was a good metric at first, but now that the scale has changed, it's become bad. This is common in programming too—things that are correct in the beginning but become problematic as they grow larger.
From an individual researcher's perspective, it's rational. You get more citations, your career accelerates. Everyone knows this. Paper counts aren't everything. Citation counts aren't everything. Journal impact factors aren't everything. You shouldn't only play it safe. But everything is tied to those metrics anyway.
Most researchers who give me work are fully aware of these facts. But are they going to change anything? Funding is still distributed based on those metrics.
Max Planck said, 'Science advances one funeral at a time.' Science doesn't progress purely through reasoned argument. The authority of the older generation, research funding networks, journals, and school-specific evaluation criteria all move together.
And honestly, I think discoveries will keep happening—probably quite rapidly. Because AI doesn't have the factional conflicts or interpersonal issues that humans do. It's very good at connecting papers across schools of thought without bias. In other words, the current human system is flawed at consolidating research, but I think AI is actually strong in this area. I expect AI-driven discoveries will continue for some time. The people who ride this wave will clearly be the winners.
Everyone knows things are broken, but no one is trying to fix them. I always think human society is inefficient. I read this post, but I'm more curious about who will actually lead the improvement effort.
nathan_compton
today at 3:00 PM
"Science advances one funeral at a time"
Well, these AI are never going to die in any real sense, so expect them to make orthodoxy more sticky, not less.
AIs get replaced with newer models.
nathan_compton
today at 3:49 PM
Which are still aggressively trained to reproduce the orthodoxy. They have to, to be viable products, since most people want to know what the orthodoxy is when they pose a question to an LLM and because not even experts can consistently agree on what elements of the fringe are genuinely useful to consider and which are bullshit, so that doesn't get into the training data. This will get even more pronounced in later models, for which the training data is much more curated.
I presume you are an expert in some field. Think carefully about the boundary of the field and all the subtlety and complexity of that boundary and all the oversimplification you do to communicate that stuff to lay people. AI is, in some large sense, directed at all lay people, not experts, and even if we wanted to direct it at experts, at the edges of knowledge, there really isn't a lot of training data for that. Mathematics is a sort of exception because it has very clear validation criteria which makes RF particularly easy for it.
I agree. AI will likely reinforce mainstream schools of thought through literature. I think I used the wrong example in this case—I should have framed it as the system itself rather than specific schools of thought. Thanks for the correction
> Because AI doesn't have the factional conflicts or interpersonal issues that humans do.
All the factional conflicts are in there, and there are also plenty of reports of people getting weird / toxic / passive aggressive responses from AI.
Because the model is trained with everything, you can in principle get anything out of it. You want to get an answer based on all the right things, while keeping all the wrong things suppressed. But it's easy to get something less than ideal, due to the specifics of training, harnesses, context, prompts etc.
I was too hasty in drawing my conclusion.I didn't think it through thoroughly enough.you're right
pocksuppet
today at 4:29 PM
> And honestly, ... [emdash]
AI-written comment?
Sometimes I wish I were an AI, but sorry, I'm not. English is the lingua franca for properly accessing programming and science, but since I'm a non-native speaker, I end up relying on machine translation for some difficult words, or I just speak using only the limited vocabulary I know. It's really hard as a non-native speaker. Every time I do something, people call it AI.