Complex Systems Studies – Telegram
Complex Systems Studies
2.43K subscribers
1.55K photos
125 videos
116 files
4.54K links
What's up in Complexity Science?!
Check out here:

@ComplexSys

#complexity #complex_systems #networks #network_science

📨 Contact us: @carimi
Download Telegram
🎼 Emergence
http://radio.seti.org/episodes/Emergence

Your brain is made up of cells. Each one does its own, cell thing. But remarkable behavior emerges when lots of them join up in the grey matter club. You are a conscious being – a single neuron isn’t.

Find out about the counter-intuitive process known as emergence – when simple stuff develops complex forms and complex behavior – and all without a blueprint.

🔗 http://traffic.libsyn.com/arewealone/BiPiSci13-10-14.mp3

Guests:

👨🏻‍💼Randy Schekman - Professor of molecular and cell biology, University of California, Berkeley, 2013 Nobel Prize-winner
👨🏻‍💼Steve Potter - Neurobiologist, biomedical engineer, Georgia Institute of Technology
👨🏻‍💼 Terence Deacon - Biological anthropologist, University of California, Berkeley
👨🏻‍💼 Simon DeDeo - Research fellow at the Santa Fe Institute
👨🏻‍💼 Leslie Valiant - Computer scientist, Harvard University, author of Probably Approximately Correct: Nature's Algorithms for Learning and Prospering in a Complex World
Forwarded from Deleted AccountSCAM
Audio
BiPiSci13-10-14
🎞 Second-Order Phase Transitions: Beyond Landau-Ginzburg Theory
Zohar Komargodski (Weizmann)

http://media.physics.harvard.edu/video/html5/?id=COLLOQ_KOMARGODSKI_111416
🎞 Learning and Inference When There Is Little Data
Yasser Roudi (NTNU)

http://media.physics.harvard.edu/video/html5/?id=COLLOQ_ROUDI_050216
اولین #کارگاه #علم_داده:
"Big Data"

🗓 25آبان، 2 و 9 آذر 96
🕰 ساعت 9 الی 12:30
📍دانشكده فيزيك دانشگاه شهيد بهشتی

ثبت نام و اطلاعات تکمیلی:
http://sbuphysics.ir
http://rusherg.com

@sbu_physics
Percolation and cancer: The physics of network phase transitions can help illuminate the process of tumorigenesis
#سمینارهای_هفتگی گروه سیستم‌های پیچیده و علم شبکه دانشگاه شهید بهشتی

🔹دوشنبه، ۱۵ آبان ماه، ساعت ۴:۰۰ - کلاس۱ دانشکده فیزیک دانشگاه شهید بهشتی.

@carimi
#سمینار_عمومی این هفته
کوانتوم؛ مغز و هوش مصنوعی

-۳شنبه ۱۶ آبان؛ ساعت ۱۶
-تالار ابن هیثم، دانشکده فیزیک

کانال انجمن علمی دانشجویی فیزیک
@sbu_physics
🔖 Variational Inference: A Review for Statisticians

David M. Blei, Alp Kucukelbir, Jon D. McAuliffe

🔗 https://arxiv.org/pdf/1601.00670

📌 ABSTRACT
One of the core problems of modern statistics is to approximate difficult-to-compute probability densities. This problem is especially important in Bayesian statistics, which frames all inference about unknown quantities as a calculation involving the posterior density. In this paper, we review variational inference (VI), a method from machine learning that approximates probability densities through optimization. VI has been used in many applications and tends to be faster than classical methods, such as Markov chain Monte Carlo sampling. The idea behind VI is to first posit a family of densities and then to find the member of that family which is close to the target. Closeness is measured by Kullback-Leibler divergence. We review the ideas behind mean-field variational inference, discuss the special case of VI applied to exponential family models, present a full example with a Bayesian mixture of Gaussians, and derive a variant that uses stochastic optimization to scale up to massive data. We discuss modern research in VI and highlight important open problems. VI is powerful, but it is not yet well understood. Our hope in writing this paper is to catalyze statistical research on this class of algorithms
One of the best reviews on the computational nature of life: causality, adaptation and phase transitions 👇🏻👇👇🏼