Magolego sna 2015 — различия между версиями

Материал из Wiki - Факультет компьютерных наук
Перейти к: навигация, поиск
(Seminars)
м (Откат правок Seosky (обсуждение) к версии Ashestakoff)
 
(не показано 13 промежуточных версии 3 участников)
Строка 1: Строка 1:
 
__TOC__ [[Файл:FB-donation degree.png|мини]]
 
__TOC__ [[Файл:FB-donation degree.png|мини]]
 
== About the course ==
 
== About the course ==
 +
 +
'''THE FINAL EXAM''' will be held on ''26.06.2015'' at 18:10, room 501
 +
 
Course web-page: http://www.leonidzhukov.net/hse/2015/sna/
 
Course web-page: http://www.leonidzhukov.net/hse/2015/sna/
  
 
'''Instructors:''' Prof. Leonid Zhukov, Dr. Ilya Makarov <br/>
 
'''Instructors:''' Prof. Leonid Zhukov, Dr. Ilya Makarov <br/>
'''Teaching assistants:''' Andrey Shestakov, Dmitry Petrov, Julia Dodonova, Mikhail Dubov, Eugeniy Kolbey, Tanya Makhalova, Pavel Perevedencev, Daniil Gizdatullin, Eugeniy Tsymbalov  
+
'''Teaching assistants:''' [[Участник:Ashestakoff |Andrey Shestakov]], Dmitry Petrov, Julia Dodonova, Mikhail Dubov, Eugeniy Kolbey, Tanya Makhalova, Pavel Perevedencev, Daniil Gizdatullin, Eugeniy Tsymbalov, Sergei Korolev.
  
 
Please, send your questions and home assignments to [mailto:hse.ntwks@gmail.com hse.ntwks@gmail.com] with prefix ''[MAGOLEGO SNA 2015]'' in message topic
 
Please, send your questions and home assignments to [mailto:hse.ntwks@gmail.com hse.ntwks@gmail.com] with prefix ''[MAGOLEGO SNA 2015]'' in message topic
Строка 16: Строка 19:
 
''' 22 May 2015:''' Graph Patterns, Assortativity Mixing [''Lab Script'' ([https://www.dropbox.com/s/kdtybdl8m2ckzbc/lab6.Rmd?dl=0 .Rmd]), ([http://rpubs.com/shestakoff/sna_lab6 .html])]<br/>
 
''' 22 May 2015:''' Graph Patterns, Assortativity Mixing [''Lab Script'' ([https://www.dropbox.com/s/kdtybdl8m2ckzbc/lab6.Rmd?dl=0 .Rmd]), ([http://rpubs.com/shestakoff/sna_lab6 .html])]<br/>
 
''' 29 May 2015:''' Epidemic Models [''Lab Script'' ([https://www.dropbox.com/s/g25z7qt87k8icl0/lab7.rmd?dl=0 .Rmd]), ([http://rpubs.com/shestakoff/sna_lab7 .html])]<br/>
 
''' 29 May 2015:''' Epidemic Models [''Lab Script'' ([https://www.dropbox.com/s/g25z7qt87k8icl0/lab7.rmd?dl=0 .Rmd]), ([http://rpubs.com/shestakoff/sna_lab7 .html])]<br/>
 +
''' 5 June 2015:''' Information Propagation Models [''Lab Script'' ([https://www.dropbox.com/s/qq9mvznerdq9955/sna_lab8.rmd?dl=0 .Rmd]), ([http://rpubs.com/shestakoff/sna_lab8 .html])], [''Graph'' ([https://www.dropbox.com/s/pqwzwokpdjhoblr/graph.txt?dl=0 .txt])]<br/>
  
http://rpubs.com/shestakoff/sna_lab7
 
 
[https://docs.google.com/spreadsheets/d/1s4d4foqhunVOmLDv2XFd3kgit8MhUXLvJHvSKjY4HpI/edit#gid=0 Please, put your email here]
 
[https://docs.google.com/spreadsheets/d/1s4d4foqhunVOmLDv2XFd3kgit8MhUXLvJHvSKjY4HpI/edit#gid=0 Please, put your email here]
  
Строка 24: Строка 27:
 
'''2. Graph models. Centrality metrics ''' -- [due date - 15.05.2015 23:59] -- [([https://www.dropbox.com/s/uw16lr7h70n1tp9/sna_ha2.Rmd?dl=0| .Rmd]), ([http://rpubs.com/shestakoff/sna_ha2 .html])], [https://drive.google.com/file/d/0B0QWEJMlsxfRWUtVX1dlOVN1eEk/view?usp=sharing| NodeXL Tutorial] <br/>
 
'''2. Graph models. Centrality metrics ''' -- [due date - 15.05.2015 23:59] -- [([https://www.dropbox.com/s/uw16lr7h70n1tp9/sna_ha2.Rmd?dl=0| .Rmd]), ([http://rpubs.com/shestakoff/sna_ha2 .html])], [https://drive.google.com/file/d/0B0QWEJMlsxfRWUtVX1dlOVN1eEk/view?usp=sharing| NodeXL Tutorial] <br/>
 
'''3. Network preprocessing. Community detection ''' -- [due date - 05.06.2015 23:59] -- [([https://www.dropbox.com/s/x4x6nmf8p6069qb/sna_ha3.rmd?dl=0| .Rmd]), ([http://rpubs.com/shestakoff/sna_ha3 .html])] <br/>
 
'''3. Network preprocessing. Community detection ''' -- [due date - 05.06.2015 23:59] -- [([https://www.dropbox.com/s/x4x6nmf8p6069qb/sna_ha3.rmd?dl=0| .Rmd]), ([http://rpubs.com/shestakoff/sna_ha3 .html])] <br/>
 +
'''4. Network Epidemics ''' -- [due date - 19.06.2015 23:59] -- [([https://www.dropbox.com/s/xmamo7quxm94enp/sna_ha4.rmd?dl=0 .Rmd]), ([http://rpubs.com/shestakoff/sna_ha4 .html])] <br/>
  
 
<br/>
 
<br/>
 
<br/>
 
<br/>
'''[https://docs.google.com/spreadsheets/d/1MM2OxXqnWjp5zU_T1cYfYmPdoThYueAUnMe4jk7WvZM/edit?usp=sharing Results] (Update 13.05.2015)'''
+
'''[https://docs.google.com/spreadsheets/d/1MM2OxXqnWjp5zU_T1cYfYmPdoThYueAUnMe4jk7WvZM/edit?usp=sharing Results] (Update 25.06.2015)'''
  
 
== Usefull Links\Docs ==
 
== Usefull Links\Docs ==

Текущая версия на 09:36, 26 августа 2022

FB-donation degree.png

About the course

THE FINAL EXAM will be held on 26.06.2015 at 18:10, room 501

Course web-page: http://www.leonidzhukov.net/hse/2015/sna/

Instructors: Prof. Leonid Zhukov, Dr. Ilya Makarov
Teaching assistants: Andrey Shestakov, Dmitry Petrov, Julia Dodonova, Mikhail Dubov, Eugeniy Kolbey, Tanya Makhalova, Pavel Perevedencev, Daniil Gizdatullin, Eugeniy Tsymbalov, Sergei Korolev.

Please, send your questions and home assignments to hse.ntwks@gmail.com with prefix [MAGOLEGO SNA 2015] in message topic

Seminars

3 April 2015: Basic concepts and pre-requisites for the course. Introduction to R and igraph [R tutorial (.pdf)], [igraph tutorial (.Rmd), (.html)]
10 April 2015: Graph file-formats. Power law. Network descriptive statistics [Lab Script (.Rmd), (.html)], [Network data (.zip)]
17 April 2015: Graph models [Lab Script (.Rmd), (.html)]
24 April 2015: Centrality metrics [Lab Script (.Rmd), (.html)]
15 May 2015: Dense subgraphs and communities [Lab Script (.Rmd), (.html)]
22 May 2015: Graph Patterns, Assortativity Mixing [Lab Script (.Rmd), (.html)]
29 May 2015: Epidemic Models [Lab Script (.Rmd), (.html)]
5 June 2015: Information Propagation Models [Lab Script (.Rmd), (.html)], [Graph (.txt)]

Please, put your email here

Home Assignments

1. Power law. Descriptive network analysis -- [due date - 24.04.2015 23:59] -- [(.Rmd), (.html)]
2. Graph models. Centrality metrics -- [due date - 15.05.2015 23:59] -- [(.Rmd), (.html)], NodeXL Tutorial
3. Network preprocessing. Community detection -- [due date - 05.06.2015 23:59] -- [(.Rmd), (.html)]
4. Network Epidemics -- [due date - 19.06.2015 23:59] -- [(.Rmd), (.html)]



Results (Update 25.06.2015)

Usefull Links\Docs

  1. R Markdown Cheat-Sheet
  2. R Short Introduction
  3. Learning R with SWIRL