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#math#models#chatgpt#better#why#training#more#answer#right#human

Discussion (31 Comments)Read Original on HackerNews

bgirardabout 1 hour ago
Last week I got together with my math alumni friend. We cracked some beers, we chatted with voice mode ChatGPT and toyed around with Collatz Conjecture and we sent some prompt to a coding agent to build visualizations and simulation. It was a lot of fun directing these agents while we bounced off ideas and the models could explore them.

I think with the right problem and the right agentic loop it’s clear to me improvements will speed up.

drakenot29 minutes ago
I think voice mode uses weaker models, just an FYI relative to the SOTA
sm0ss117about 1 hour ago
Mathematics seems like the ideal candidate for AIs to achieve absurd results. It's a purely abstract grammar with true auto-verifiability. Even SWE has the requirement of interacting with real physical things. In math there's no external feedback required, you're solely bounded by the rate and quality of token generation.
drivebyhooting41 minutes ago
This misses the mark on at least two accounts: 1. Proofs without human understanding have less value for mathematicians 2. At least for now, interestingness depends on human judgment. It is subjective and not as verifiable.
dyauspitr26 minutes ago
Every new mathematician that comes along doesn’t know everything that has come before him. He needs to go learn all the math that his predecessors did. I don’t see how an LLM coming up with these proofs changes that.
dogscatstreesabout 2 hours ago
> As they did so, they also learned how to improve the prompts they gave AlphaEvolve. One key takeaway: The model seemed to benefit from encouragement. It worked better “when we were prompting with some positive reinforcement to the LLM,” Gómez-Serrano said. “Like saying ‘You can do this’ — this seemed to help. This is interesting. We don’t know why.”

Four top logical people in the world are acknowledging this. It is mind-blowing and we don't know why.

dataviz1000about 2 hours ago
I know why.

Several people had problems with Sonnet burning through all their credits grinding on a problem it can't solve. Opus fixes this — it has a confidence threshold below which it exits the task instead of grinding.

"I spent ~$100 last week testing both against multiplication. Sonnet at 37-digit × 37-digit (~10³⁷) never quits — 15+ minutes, 211KB of output, still actively decomposing numbers when I stopped it. Opus will genuinely attempt up to ~50 digits (112K tokens on a real try), starts doubting around 55 digits, and by 80-digit × 80-digit surrenders in 330 tokens / 9 seconds with an empty answer." -- Opus, helping me with the data

The "I don't think this is worth attempting" heuristic is the difference. Sonnet doesn't have it, or has it set much higher. In order to get Opus and some other models to work on harder problems that it assumes it is not worth attempting, it requires an increase of confidence level.

I'll finish writing this up this week. I'm making flashy data visual animations to make the point right now.

zarzavatabout 2 hours ago
It makes sense to me.

Originally LLMs would get stuck in infinite loops generating tokens forever. This is bad, so we trained them to strongly prefer to stop once they reached the end of their answer.

However, training models to stop also gave them "laziness", because they might prefer a shorter answer over a meandering answer that actually answered the user's question.

Mathematics is unusual because it has an external source of truth (the proof assistant), and also because it requires long meandering thinking that explores many dead ends. This is in tension with what models have been trained to do. So giving them some encouragement keeps them in the right state to actually attempt to solve the problem.

brookstabout 2 hours ago
Do we know why it works for humans?

Models are trained on human outputs. It’s not super surprising to me that inputs following encouraging patterns product better results outputs; much of the training material reflects that.

latentseaabout 2 hours ago
> Do we know why it works for humans?

Try to figure it out. You can do it.

gxsabout 2 hours ago
If I had to wager a lazy, armchair guess, I think it forces it to think harder/longer

The answer is probably more straightforward than we think, e.g. “the user thinks I can do this so I better make sure I didn’t miss anything”

CivBaseabout 2 hours ago
This seems pretty obvious, no?

It's pattern matching on training material. There is almost certainly an overlap between positivity and success in the training material. Positive prompts cause the pattern matching to weight towards positivity and therefor more successful material.

lamaseryabout 1 hour ago
The training or system prompts have shoved the probabilities toward a space that tends to select “halt” sooner. You need to drag the probability weights around until they are less likely to reach “halt” so soon.

Nice language often sorta does this for whatever model(s) they looked at, and is also something people are likely to try. Probably lots and lots of nonsense token combos would work even better, but who’s gonna try sticking “gerontocratic green giant giraffes” on the end of their prompts to see if it helps?

Positive or negative language likely also prevents pulling the probabilities away from the correct topic, being so generic a thing. The above suggestion might only be ultra-effective if the topic is catalytic converters, for some reason, and push the thing into generating tokens about giraffes otherwise. How would you ever discover the dozens or thousands of more-effective but only-sometimes nonsense token combos? You’d need automation and a lot of brute force, or some better way to analyze the LLM’s database.

yabutlivnWoodsabout 1 hour ago
We can define a Dyson Sphere in math.

We cannot build one.

AI outputting axiomatically valid syntax isn't going to be all that useful. It's possible to generate all axiomatically correct math with a for loop until the machine OOMs

Physics is not math and math is not physics.

djsjajah30 minutes ago
You just failed the Turing test.
claysmithrabout 3 hours ago
I wonder when AI will be able to discern the passage of time
1970-01-01about 3 hours ago
It already does time in prompt-blocks. It knows time is linear and what just happened, what happened before that, and what happened before that.
claysmithrabout 2 hours ago
When I tried to use it as an AI CEO and Life Coach, it never was able to discern time passing, what I've already done, what needed to be done. It just said the same stuff over and over, stuff I've already done. That and it's kind of stuck in the era it was trained in. If it felt time passing like a human maybe it would be conscious?

Nevertheless not having a sense of time makes it really bad at planning anything. I used Gemini Pro.

Buttons840about 2 hours ago
Can't you just give it the time in each prompt? Would that work?

I've seen this mentioned a few times though, so I think maybe it's more complicated than this?

maplethorpeabout 3 hours ago
Altman has estimated one year until ChatGPT is capable of measuring time passed.

https://tech.yahoo.com/ai/chatgpt/articles/chatgpt-fails-mis...

ambicapterabout 2 hours ago
Sounds like Musk setting deadlines for Mars landings.
viccis22 minutes ago
There's no need to "estimate" it. "Time" is not something built into training and sampling a generative distribution. He might as well have told you your Naive Bayes email filters will measure time passed.
VladVladikoffabout 2 hours ago
Can’t tell if you are being sarcastic but Altman’s whole job is to make bullshit near future predictions about rapid development of AI in the public.
random__duckabout 2 hours ago
Thankyou for stating the obvious, for some reason we need to repeat this. ^^;
norejisaceabout 2 hours ago
Interesting development. It feels like AI is getting much better at symbolic reasoning, not just pattern recognition.
themafiaabout 2 hours ago
There are several high value prizes for mathematical research. Let me know when an "AI" has earned one of them. Otherwise:

> When Ryu asked ChatGPT, “it kept giving me incorrect proofs,” [...] he would check its answers, keep the correct parts, and feed them back into the model

So you had a conversational calculator being operated by an actual domain expert.

> With ChatGPT, I felt like I was covering a lot of ground very rapidly

There's no way to convert that feeling into a measurement of any actual value and we happen to know that domain experts are surprisingly easy to fool when outside of their own domains.

gxsabout 2 hours ago
Wow that was your takeaway?

> “2025 was the year when AI really started being useful for many different tasks,” said Terence Tao

I think I’ll go out on a limb and agree with Terrence Tao, I think the dude is well known in the math community, or something

themafiaabout 1 hour ago
> go out on a limb and agree with Terrence Tao

Is AI his specialty?

> I think the dude is well known in the math community, or something

I believe this is called "appeal to authority." Which is why, instead of disagreeing with him, I suggested a more cogent endpoint that could be used to establish the facts the article's title suggests.

p1ddaabout 1 hour ago
I think he means useful for mathematicians getting paid shilling for AI models
nooberminabout 2 hours ago
If anything his simping for AI models makes me more suspect of him than I ever was because my own eyes show me their limits.
jryle70about 1 hour ago
Any chance your eyes are wrong? Or only people who disagree with you are.