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@smallvictory

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Katılım Şubat 2025
15 Takip Edilen2 Takipçiler
Sibylle
Sibylle@AHaschi·
When we had a normal family in the White House
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Thomas hier
Thomas hier@H58006478H·
🙋‍♂️✌️😜
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Paulo Nogueira Batista Jr.
Paulo Nogueira Batista Jr.@paulonbjr·
Dialogue with professor Laurence Kotlikoff, from Boston University, about the implications of Trump’s militarism. A lot depends, I told him, on the strength of the opposition in the US. open.substack.com/pub/larrykotli…
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Trans
Trans @trans·
What's up today?
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Trans @trans·
Salve
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Trans @trans·
Hello world!
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Michael Huseth
Michael Huseth@michaelhuseth·
Have a great hump day. 😊
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Henry
Henry@henry_elijah0·
I got the card already
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Hongyuan Mei
Hongyuan Mei@hongyuan_mei·
To understand the universe, we’ve doubled down on pushing Grok’s mathematical reasoning. It’s deeply rewarding to see that progress making a real impact—recognized by the math community. @ziangchen_math @haozhu_wang @ssydasheng @keirp1 @Yuhu_ai_
Paata Ivanisvili@PI010101

Disclaimer: I had given early access to internal beta version of Grok 4.20 It found a new Bellman function for one of the problems I’d been working on with my student N. Alpay. The problem reduces to identifying the pointwise maximal function U(p,q) under two constraints and understanding the behavior of U(p,0). In our paper arxiv.org/pdf/2502.16045 we proved U(p,0)\geq I(p), where I(p) is the Gaussian isoperimetric profile, I(p) ~ p\sqrt{log(1/p)} as p ~ 0. After ~5 minutes, Grok 4.20 produced an explicit formula U(p,q) = E \sqrt{q^2+\tau}, where \tau is the exit time of Brownian motion from (0,1) starting at p. This yields U(p,0)=E\sqrt{\tau} ~ p log(1/p) at p ~ 0, a square root improvement in the logarithmic factor. Any significance of this result? It will not tell you how to change the world tomorrow. Rather, it gives a small step toward understanding what is going on with averages of stochastic analogs of derivatives (quadratic variation) of Boolean functions: how small can they be?  More precisely, this gives a sharp lower bound on the L1 norm of the dyadic square function applied to indicator functions 1_A of sets A \subset [0,1]. In my previous tweet about Takagi function, we saw that the sharp lower bound on ||S_1(1_A)||_1 miraculously coincides with Takagi function of |A| which (surprisingly to me) is related to the Riemann hypothesis. Here, we obtain a sharp lower bound on ||S_2(1_A)||_1 given by E \sqrt{\tau}, where Brownian motion starts at |A|. This function belongs to the family of isoperimetric-type profiles, but unlike the fractal Takagi function, it is smooth and does not coincide with the Gaussian isoperimetric profile. Finally, in harmonic analysis it is known that the square function is not bounded in L^1. The question here was more about curiosity: how exactly does it blow up when tested on Boolean functions 1_A.  Previously, the best known lower bound was |A|(1-|A|) (Burkholder—Davis—Gandy). In our paper, we obtained |A| (1-|A|)\sqrt{log(1/(|A|(1-|A|)))}. This new Grok’s Bellman function gives |A| (1-|A|) \log(1/(|A|(1-|A|))) and this bound is actually sharp.

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