Social Network Analysis #sna
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Social Network Analysis
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Social network analysis of Twitter hashtag usage during protests in Russia

Alexander Semenov's slides from ASNA2012 with some findings from dataset I've gathered from Twitter during protest meetings in Moscow on 24th of December 2011

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Visual Business Intelligence - From Giant Hairballs to Clear Patterns in Networks

Visual Business Intelligence - From Giant Hairballs to Clear Patterns in Networks | Social Network Analysis #sna | Scoop.it
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Collective Consciousness in the Age of Networks: Dr. Guillaume Dumas (@introspection)

Collective Consciousness in the Age of Networks: Dr. Guillaume Dumas (@introspection) | Social Network Analysis #sna | Scoop.it
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Revenue vs. Value | Danielle Morrill

How can we identify these pre-revenue startups with significant upside and get involved in them before this happens? I believe there are many publicly available signals that indicate how a company is doing, and I am building tools to track, measure and organize this information.

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Mapping the global Twitter heartbeat: The geography of Twitter

Mapping the global Twitter heartbeat: The geography of Twitter | Social Network Analysis #sna | Scoop.it
Mapping the global Twitter heartbeat: The geography of Twitter
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Exploring the Use of Social Network Analysis in Identifying Physician Engagement in Quality Improvement in the Hospital Setting.

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Social Network Analysis Interactive Dataset Library - Dynamics Lab @ UCD

ukituki's insight:

This interactive library provides researchers with an accessible overview of the different type of open social network datasets available. It was initially developed as part of a research project to outline the different types of social network datasets at the Dynamics lab in University College Dublin. As of our launch data (April 2013) some datasets have had their features extensively catalogued, while others have just the bare minimumdetails.

luiy's curator insight, May 3, 9:46 AM

About the Social Network Analysis Interactive Dataset Library

This site contains an accessible library of many of the 'open' social network analysis datasets . This library of datasets is open to all, and anyone can add datasets - as a consequence the quantity and quality of the library is growing pretty quickly.

 

This interactive library provides researchers with an accessible overview of the different type of open social network datasets available. It was initially developed as part of a research project to outline the different types of social network datasets at the Dynamics lab in University College Dublin. As of our launch data (April 2013) some datasets have had their features extensively catalogued, while others have just the bare minimum details.

In total there are currently 173 Networks in the library. New datasets can be added by anyone (beginning here) and existing datasets can be edited on their overview page (for an example, see here).

 

There is a tabular view (summary), an interactive visualisation, or you can simply download all the library data. Note that this is an ongoing effort, and there are many publicly available network datasets not yet captured here, and some of the datasets captured within have not had their details populated yet.

 

Our objective is to create a open resource that contains information about available social network datasets, including the key features (e.g. are the networks multimodal, bipartite, multiplex, dynamic etc.) and size (number of nodes, number of edges). This resource will prove useful to both those beginning to think about social networks and those who may be seeking a dataset of very specific structure / size (e.g. in order to test an algorithm).

BESegal's curator insight, May 4, 9:40 AM

If you do social network analysis #SNA here's a source of free data sets.

 

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Stephen Wolfram Blog : Data Science of the Facebook World

Stephen Wolfram Blog : Data Science of the Facebook World | Social Network Analysis #sna | Scoop.it
Stephen Wolfram shares interesting Facebook data analysis finds from the Data Donor program of Wolfram|Alpha Personal Analytics for Facebook.
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How to become internet famous for $68

How to become internet famous for $68 | Social Network Analysis #sna | Scoop.it
Santiago Swallow may be one of the most famous people no one has heard of. His eyes fume from his Twitter profile: he is Hollywood-handsome with high cheekbones and dirty blond, collar-length hair.
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Popularity Prediction in Microblogging Network: A Case Study on Sina Weibo

ukituki's insight:

Predicting the popularity of content is important for both the host and users of social media sites. The challenge of this problem comes from the inequality of the popularity of con- tent. Existing methods for popularity prediction are mainly based on the quality of content, the interface of social media site to highlight contents, and the collective behavior of user- s. However, little attention is paid to the structural charac- teristics of the networks spanned by early adopters, i.e., the users who view or forward the content in the early stage of content dissemination.

 

In this paper, taking the Sina Weibo as a case, we empirically study whether structural character- istics can provide clues for the popularity of short messages. We find that the popularity of content is well reflected by the structural diversity of the early adopters. Experimental results demonstrate that the prediction accuracy is signif- icantly improved by incorporating the factor of structural diversity into existing methods

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Understanding Conflict of Interest Networks

The Edmond J. Safra Center for Ethics stands at the core of what is now a well-established movement at Harvard that is giving ethics a prominent place in the curriculum and on the agenda of research.
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Learning from Visualizations of Social Media Networks

Learning from Visualizations of Social Media Networks | Social Network Analysis #sna | Scoop.it
ukituki's insight:

Sociologists distinguish between “bridging” versus “binding forms of social connections. The MLA Twitter network suggests it is used for bonding existing groups more than bridging to new connections. If the purpose of the backchannel conversation had been to strengthen existing ties, then the next step might be reaching out to connect to less-well-connected people, thereby extending the conversation to a larger community

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SNA Course - Google+

SNA Course - Google+ | Social Network Analysis #sna | Scoop.it
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2013 NodeXL Social Media Network Analysis

2013 NodeXL Social Media Network Analysis | Social Network Analysis #sna | Scoop.it
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Basketball and Biology: A Tale of Two Social Networks - IEEE Spectrum

A systems biologist looks at basketball games through the prism of graph theory
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A Social Network Analysis of Occupational Segregation

Abstract: This paper proposes a simple social network model of occupational segregation
ukituki's insight:
This paper proposes a simple social network model of occupational segregation, generated by the existence of inbreeding bias among individuals of the same social group. If network referrals are important in getting a job, then expected inbreeding bias in the social structure results in different career choices for individuals from different social groups, which further translates into stable occupational segregation equilibria within the labour market. Our framework can be regarded as complementary to existing discrimination or rational bias theories used to explain persistent observed occupational disparities between various social groups.
luiy's curator insight, May 16, 2:07 PM

We develop a social network model of occupational segregation between different social groups, generated by the existence of positive inbreeding bias among individuals from the same group. If network referrals are important in getting a job, then expected inbreeding bias in the
contact network structure induces different career choices for individuals
from different social groups. This further translates into stable occupational segregation equilibria in the labour market. We derive the conditions for persistent wage and unemployment inequality in the segregation
equilibria. Our framework is proposed as complementary to existing theories used to explain labour market inequalities between groups divided by race, ethnicity or gender.

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Major Players in the MOOC Universe

Major Players in the MOOC Universe | Social Network Analysis #sna | Scoop.it
Explore connections among the industry's major players.
ukituki's insight:

Put your money where your mouth is - online education revolution edition

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Preso on social network analysis for rtp analytics unconference

Selected highlights of Coursera Social Networking course, taught by Prof. Lada Adamic of the Univ. of Michigan. Presented at the annual Annual RTP Analytics Un
ukituki's insight:

Selected highlights of Coursera Social Networking course, taught by Prof. Lada Adamic of the Univ. of Michigan.

Alexis Brantes's curator insight, May 6, 9:14 PM

Un muy interesante artículo sobre el Análisis de Redes

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Hedonometer: Twitter Happiness Measure - What does it say

Hedonometer: Twitter Happiness Measure - What does it say | Social Network Analysis #sna | Scoop.it
We examine the daily happiness on Twitter, as measured by Hedonometer, and look at Happiest and unhappiest days of the year and of the week.
ukituki's insight:

The word with the highest standard deviation in happiness (std 2.92, avg 4.64) was "f**king", probably reflecting the very different happiness levels implied by its direct and metaphorical meanings.

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Social network analysis for journalists using the Twitter API | School of Data - Evidence is Power

Social network analysis for journalists using the Twitter API | School of Data - Evidence is Power | Social Network Analysis #sna | Scoop.it
Evidence is Power
luiy's curator insight, April 27, 2:29 PM

Social Network analysis allows us to identify players in a social network and how they are related to each other. For example: I want to identify people who are involved in a certain topic - either to interview or to understand what different groups are engaging in debate.

 

What you’ll Need:

Gephi (http://gephi.org)OpenRefine (http://openrefine.org)The Sample SpreadsheetAnother sample DatasetBonus: The twitter search to graph tool

 

Step 1: Basic Social Networks

Throughout this exercise we will use Gephi for graph analysis and visualization. Let’s start by getting a small graph into gephi.

 

Take a look at the sample spreadsheet - this is data from a fictional case you are investigating.

In your country the minister of health (Mark Illinger) recently bought 500,000 respiration masks from a company (Clearsky-Health) during a flu-scare that turned out non substantial. The masks were never used and rot away in the basement of the ministry. During your investigation you found that during the period of this deal Clearsky-Health was consulted by Flowingwater Consulting and paid them a large sum for their services. A consulting company owned by Adele Meral-Poisson. Adele Meral-Poisson is a well known lobbyist and the wife of Mark Illinger.

 

While we don’t need to apply network analysis to understand this fictional case - it helps understanding the sample spreadsheet. Gephi is able to import spreadsheets like this through it’s “import csv” section. Let’s do this.

 

Walkthrough Importing CSV into GephiSave the Sample Spreadsheet as csv (or click download as → comma seperated values if using google spreadsheet)Start GephiSelect File → OpenSelect the csv file safed from the sample spreadsheet.You will get a import report - check whether the number of nodes and edges seem correct and there are no errors reported
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UC Berkeley Course Lectures: Analyzing Big Data With Twitter | Analyzing Big Data with Twitter

UC Berkeley Course Lectures: Analyzing Big Data With Twitter | Analyzing Big Data with Twitter | Social Network Analysis #sna | Scoop.it
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Are You Following a Bot?

Are You Following a Bot? | Social Network Analysis #sna | Scoop.it
How to manipulate social movements by hacking Twitter
luiy's curator insight, May 3, 6:35 AM

JamesMTitus was manufactured by cyber-security specialists in New Zealand participating in a two-week social-engineering experiment organized by the Web Ecology Project. Based in Boston, the group had conducted demographic analyses of Chatroulette and studies of Twitter networks during the recent Middle East protests. It was now interested in a question of particular concern to social-media experts and marketers: Is it possible not only to infiltrate social networks, but also to influence them on a large scale?

 

The group invited three teams to program “social bots”—fake identities—that could mimic human conversation on Twitter, and then picked 500 real users on the social network, the core of whom shared a fondness for cats. The Kiwis armed JamesMTitus with a database of generic responses (“Oh, that’s very interesting, tell me more about that”) and designed it to systematically test parts of the network for what tweets generated the most responses, and then to talk to the most responsive people.

After the first week, the teams were allowed to tweak their bot’s code and to launch secondary identities designed to sabotage their competitors’ bots. One team unleashed @botcops, which alerted users, “You might want to be suspicious about JamesMTitus.” In one exchange, a British user confronted the alleged bot: “What do you say @JamesMTitus?” The robot replied obliquely, “Yeah, so true!” The Brit pressed: “Yeah so true! You mean I should be suspicious of you? Or that @botcops should be challenged?” JamesMTitus evaded detection with a vague tweet back—“Right on bro”—and acquired 109 followers over two weeks. Network graphs subsequently showed that the three teams’ bots had insinuated themselves into the center of the target network.

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How researchers are fighting lung cancer using PageRank #sna

How researchers are fighting lung cancer using PageRank #sna | Social Network Analysis #sna | Scoop.it
Medical researchers are using a mathematical process similar to Google PageRank in order to identify organs most likely to spread lung cancer throughout the human body.
ukituki's insight:
Article highlights many applications of graph theory and graph database
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Estimated Follower Accession Charts for Twitter

Estimated Follower Accession Charts for Twitter | Social Network Analysis #sna | Scoop.it
The idea is that we provide each entrant into a conversation or group with an accession number: the first person has accession number 1, the second person accession number 2 and so on. The accession number is plotted in rank order on the vertical y-axis, with ranked/time ordered “events” along the horizontal x-axis: utterances in a conversation for example, or posts to a forum

 

ukituki's insight:

Check also related link: http://research.microsoft.com/en-us/um/people/jchayes/papers/timestamps.pdf

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How Programmers Relate based on Google Searches | Exploring Data

How Programmers Relate based on Google Searches | Exploring Data | Social Network Analysis #sna | Scoop.it
The programmers search relations visualization shows a network graph of programmers related by Google searches with results containing knowledge graph information.
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How Do We Find Early Adopters Who Will Guide a Resource Constrained Network Towards a Desired Distribution of Behaviors?

luiy's curator insight, March 27, 5:41 AM

We identify influential early adopters that achieve a target behavior distribution for a resource constrained social network with multiple costly behaviors. This problem is important for applications ranging from collective behavior change to corporate viral marketing campaigns. In this paper, we propose a model of diffusion of multiple behaviors when individual participants have resource constraints. Individuals adopt the set of behaviors that maximize their utility subject to available resources. We show that the problem of influence maximization for multiple behaviors is NP-complete. Thus we propose heuristics, which are based on node degree and expected immediate adoption, to select early adopters. We evaluate the effectiveness under three metrics: unique number of participants, total number of active behaviors and network resource utilization. We also propose heuristics to distribute the behaviors amongst the early adopters to achieve a target distribution in the population. We test our approach on synthetic and real-world topologies with excellent results. Our heuristics produce 15-51\% increase in resource utilization over the na\"ive approach.