George C. Linderman

903 posts

George C. Linderman banner
George C. Linderman

George C. Linderman

@GCLinderman

@MGHSurgery resident | MD/PhD, Applied Mathematics @YaleMed | Working on methods for denoising, analyzing, and visualizing high dimensional datasets.

New Haven, CT Katılım Haziran 2017
1K Takip Edilen1.2K Takipçiler
George C. Linderman retweetledi
dana_peer
dana_peer@dana_peer·
1. Thrilled and proud to announce our latest preprint: Spectra -Supervised discovery of interpretable gene programs from single-cell data. It is a factorization method that really works and is already in intensive use across projects in my own lab --> doi.org/10.1101/2022.1…
English
8
123
536
132.6K
George C. Linderman retweetledi
Amin Karbasi
Amin Karbasi@aminkarbasi·
As the tradition goes, here is the list of 22 papers I read, learned from, and wished I had been a co-author (in no particular order):
English
3
38
366
122.1K
George C. Linderman
George C. Linderman@GCLinderman·
The best way to make an algorithm outperform t-SNE in a benchmark has always been to compare against @scikit_learn's implementation. Glad that it is now being modernized. Great work and congratulations on a sweet bug fix by @hippopedoid and Weiyi!
Dmitry Kobak@hippopedoid

In @scikit_learn 1.2 (just out!), manifold.TSNE adopts modern parameter defaults, including O(n) learning rate and PCA init (as argued by @GCLinderman, @Anna_C_Belkina, @pavlinpolicar, @CellTypist, myself, and others). BTW, that crazy bug 🐞 fix in 1.0 deserves a thread! [1/n]

English
1
1
15
0
George C. Linderman retweetledi
Dmitry Kobak
Dmitry Kobak@hippopedoid·
A very long overdue thread: happy to share preprint led by Sebastian Damrich from @FredHamprecht's lab. *From t-SNE to UMAP with contrastive learning* arxiv.org/abs/2206.01816 I think we have finally understood the *real* difference between t-SNE and UMAP. It involves NCE! [1/n]
Dmitry Kobak tweet media
English
5
123
572
0
George C. Linderman retweetledi
Hugh Auchincloss
Hugh Auchincloss@Awesomecloss·
love making making surgical videos. here's a few of my favorites
English
3
8
43
0
George C. Linderman retweetledi
Nik Böhm
Nik Böhm@jnboehm·
Ever wondered what image datasets look like if they could be visualized? We have developed a new algorithm for visualization based on contrastive learning. Joint work with @hippopedoid and @CellTypist. The full details are available as a preprint arxiv.org/abs/2210.09879 🧵/16
Nik Böhm tweet media
English
4
62
249
0
George C. Linderman retweetledi
Pavlos Msaouel
Pavlos Msaouel@PavlosMsaouel·
1/4 New commentary on the big data paradox, i.e., the phenomenon whereby as the number of patients enrolled in a study *increases*, the probability that the confidence intervals from that study will include the truth *decreases* 👉 bit.ly/3xoEvP4
Pavlos Msaouel tweet media
English
10
116
402
0
George C. Linderman retweetledi
Livia Puljak
Livia Puljak@liviapuljak·
Our new study shows that data availability statements are not very useful; 1670 (93%) authors who indicated that data are available on request either did not respond or declined to share their data with us. Journal of Clinical Epidemiology: doi.org/10.1016/j.jcli…
Livia Puljak tweet media
English
201
3.6K
17.9K
0
George C. Linderman retweetledi
Krzakala Florent
Krzakala Florent@KrzakalaF·
Many theoretical works in ML & high-d stats focus on Gaussian data but why should we care? Real data are definitely not Gaussian, amiright? Well, it might not be such a bad assumption, see plot 👇! How is this possible? Turns out there are universality properties in high-d 1/2
Krzakala Florent tweet media
English
3
26
203
0
George C. Linderman retweetledi
Maggie Westfal
Maggie Westfal@MWestfalMDMPH·
A final GI rounds to thank IR legend Dr. Mueller. General surgery at MGH is so thankful for all of his help over the last 4 decades! @MGHSurgery @MGHIR1
Maggie Westfal tweet mediaMaggie Westfal tweet media
English
3
8
64
0
George C. Linderman retweetledi
Eric Topol
Eric Topol@EricTopol·
A big day for life science The Tabula Sapiens, like a Periodic Table of Human Cells, ~500,000 cells analyzed, 24 tissues / organs @ScienceMagazine "a broadly useful reference to deeply understand and explore human biology at cellular resolution" science.org/doi/10.1126/sc…
Eric Topol tweet mediaEric Topol tweet media
English
15
350
1K
0
George C. Linderman retweetledi
Gregor Sturm | grst@genomic.social
I’m happy to share our latest preprint introducing the Single Cell Lung Cancer Atlas (LuCA) integrating >1.2M cells from 223 NSCLC patients + 86 controls from 29 datasets. We used it (among other things) to study tissue-resident neutrophils in NSCLC.🧵⬇️ biorxiv.org/content/10.110…
English
7
29
116
0
George C. Linderman retweetledi
Cancer Cell
Cancer Cell@Cancer_Cell·
A phenotypic signature that identifies neoantigen-reactive T cells in fresh human lung cancers dlvr.it/SQ74b3
English
0
29
130
0