Tetris-like falling sticky disks
https://mathoverflow.net/questions/101309/tetris-like-falling-sticky-disks
https://mathoverflow.net/questions/101309/tetris-like-falling-sticky-disks
🔖 Scale-free networks are rare
Anna D. Broido, Aaron Clauset
🔗 arxiv.org/pdf/1801.03400.pdf
📌 ABSTRACT
A central claim in modern network science is that real-world networks are typically "scale free," meaning that the fraction of nodes with degree k follows a power law, decaying like k−α, often with 2<α<3. However, empirical evidence for this belief derives from a relatively small number of real-world networks. We test the universality of scale-free structure by applying state-of-the-art statistical tools to a large corpus of nearly 1000 network data sets drawn from social, biological, technological, and informational sources. We fit the power-law model to each degree distribution, test its statistical plausibility, and compare it via a likelihood ratio test to alternative, non-scale-free models, e.g., the log-normal. Across domains, we find that scale-free networks are rare, with only 4% exhibiting the strongest-possible evidence of scale-free structure and 52% exhibiting the weakest-possible evidence. Furthermore, evidence of scale-free structure is not uniformly distributed across sources: social networks are at best weakly scale free, while a handful of technological and biological networks can be called strongly scale free. These results undermine the universality of scale-free networks and reveal that real-world networks exhibit a rich structural diversity that will likely require new ideas and mechanisms to explain.
Anna D. Broido, Aaron Clauset
🔗 arxiv.org/pdf/1801.03400.pdf
📌 ABSTRACT
A central claim in modern network science is that real-world networks are typically "scale free," meaning that the fraction of nodes with degree k follows a power law, decaying like k−α, often with 2<α<3. However, empirical evidence for this belief derives from a relatively small number of real-world networks. We test the universality of scale-free structure by applying state-of-the-art statistical tools to a large corpus of nearly 1000 network data sets drawn from social, biological, technological, and informational sources. We fit the power-law model to each degree distribution, test its statistical plausibility, and compare it via a likelihood ratio test to alternative, non-scale-free models, e.g., the log-normal. Across domains, we find that scale-free networks are rare, with only 4% exhibiting the strongest-possible evidence of scale-free structure and 52% exhibiting the weakest-possible evidence. Furthermore, evidence of scale-free structure is not uniformly distributed across sources: social networks are at best weakly scale free, while a handful of technological and biological networks can be called strongly scale free. These results undermine the universality of scale-free networks and reveal that real-world networks exhibit a rich structural diversity that will likely require new ideas and mechanisms to explain.
Complex Systems Studies
🔖 Scale-free networks are rare Anna D. Broido, Aaron Clauset 🔗 arxiv.org/pdf/1801.03400.pdf 📌 ABSTRACT A central claim in modern network science is that real-world networks are typically "scale free," meaning that the fraction of nodes with degree k follows…
Petter Holme
Power-laws and me
A day or two ago Anna Broido and Aaron Clauset arxived a paper about how rare scale-free networks really are. If network science was invented today, I think such a paper would not raise many eyebro…
#جلسه_دفاع_کارشناسی_ارشد
پوریا ترنج
یکشنبه ۲۴ دیماه، ساعت ۱۱:۳۰، کلاس ۴، دانشکده فیزیک دانشگاه شهیدبهشتی
پوریا ترنج
یکشنبه ۲۴ دیماه، ساعت ۱۱:۳۰، کلاس ۴، دانشکده فیزیک دانشگاه شهیدبهشتی
#جلسه_دفاع_کارشناسی_ارشد
مینا زمانی
یکشنبه ۲۴ دیماه، ساعت ۱۴، کلاس ۴، دانشکده فیزیک دانشگاه شهیدبهشتی
مینا زمانی
یکشنبه ۲۴ دیماه، ساعت ۱۴، کلاس ۴، دانشکده فیزیک دانشگاه شهیدبهشتی
Call for applicants of the Summer School of the Centre for Neural Dynamics
The summer school is intended for graduate students and undergraduate students in their third and fourth year of study in the physical sciences (e.g. physics, applied mathematics, engineering, computer science) and the life sciences (e.g. neuroscience, biology, physiology, human kinetics) who wish to develop their skills in neural data analysis and in mathematical modeling of neural activity. The topics will range from cellular to systems neuroscience, with applications in medicine. Individuals outside of academia may also participate.
Dates: May 20 - June 2, 2018.
Location: Ottawa, Canada.
Application Deadline: February 15, 2018.
Faculty
André Longtin (uOttawa)
Richard Naud (uOttawa)
Steve Prescott (Sick Kids)
Jonathan Rubin (UPitt)
Jean-Philippe Thivierge (uOttawa)
Majid Mohajerani (ULethbridge)
Greg Silasi (uOttawa)
Adam Sachs (uOttawa)
Jean-Claude Béïque (uOttawa)
Maurice Chacron (McGill)
Georg Northoff (uOttawa)
Detailed information can be found on the website of the Centre of Neural Dynamics.
Kind Regards,
André Longtin and Richard Naud
The summer school is intended for graduate students and undergraduate students in their third and fourth year of study in the physical sciences (e.g. physics, applied mathematics, engineering, computer science) and the life sciences (e.g. neuroscience, biology, physiology, human kinetics) who wish to develop their skills in neural data analysis and in mathematical modeling of neural activity. The topics will range from cellular to systems neuroscience, with applications in medicine. Individuals outside of academia may also participate.
Dates: May 20 - June 2, 2018.
Location: Ottawa, Canada.
Application Deadline: February 15, 2018.
Faculty
André Longtin (uOttawa)
Richard Naud (uOttawa)
Steve Prescott (Sick Kids)
Jonathan Rubin (UPitt)
Jean-Philippe Thivierge (uOttawa)
Majid Mohajerani (ULethbridge)
Greg Silasi (uOttawa)
Adam Sachs (uOttawa)
Jean-Claude Béïque (uOttawa)
Maurice Chacron (McGill)
Georg Northoff (uOttawa)
Detailed information can be found on the website of the Centre of Neural Dynamics.
Kind Regards,
André Longtin and Richard Naud
🦆 How may network analysis help to understand what happens in biological and ecological systems? Biologist Ferenc Jordán explained in detail the potentialities of the use of a complex network approach in Biology. Read our new blog post:
https://cns.ceu.edu/article/2018-01-15/ecological-networks-individuals-ecosystems
https://cns.ceu.edu/article/2018-01-15/ecological-networks-individuals-ecosystems
🔖 Gene regulatory network inference: an introductory survey
Vân Anh Huynh-Thu, Guido Sanguinetti
🔗 https://arxiv.org/pdf/1801.04087
📌 ABSTRACT
Gene regulatory networks are powerful abstractions of biological systems. Since the advent of high-throughput measurement technologies in biology in the late 90s, reconstructing the structure of such networks has been a central computational problem in systems biology. While the problem is certainly not solved in its entirety, considerable progress has been made in the last two decades, with mature tools now available. This chapter aims to provide an introduction to the basic concepts underpinning network inference tools, attempting a categorisation which highlights commonalities and relative strengths. While the chapter is meant to be self-contained, the material presented should provide a useful background to the later, more specialised chapters of this book.
Vân Anh Huynh-Thu, Guido Sanguinetti
🔗 https://arxiv.org/pdf/1801.04087
📌 ABSTRACT
Gene regulatory networks are powerful abstractions of biological systems. Since the advent of high-throughput measurement technologies in biology in the late 90s, reconstructing the structure of such networks has been a central computational problem in systems biology. While the problem is certainly not solved in its entirety, considerable progress has been made in the last two decades, with mature tools now available. This chapter aims to provide an introduction to the basic concepts underpinning network inference tools, attempting a categorisation which highlights commonalities and relative strengths. While the chapter is meant to be self-contained, the material presented should provide a useful background to the later, more specialised chapters of this book.
All teaching materials from the 2017 Summer Institute in Computational Social Science videos of lectures, slides & code are available open source:
🔗 https://compsocialscience.github.io/summer-institute/2017/#schedule
🔗 https://compsocialscience.github.io/summer-institute/2017/#schedule
💲 The #economy includes two flows—wages for work that people use to buy goods and services, and investing that leads to returns. Understanding how these two loops should be balanced can lead to sustained economic growth for all.
http://necsi.edu/research/economics/econuniversal?platform=hootsuite
http://necsi.edu/research/economics/econuniversal?platform=hootsuite