Twitter Community Discovery & Analysis Using Topologies

Slides:



Advertisements
Similar presentations
Event detection in ecological sensor networks Owen Langman Center for Limnology University of Wisconsin - Madison GLEON 7 Sept. 29, 2008 Norrtälje, Sweden.
Advertisements

Complex Network Theory
Community Detection and Graph-based Clustering
Mining User Similarity Based on Location History Yu Zheng, Quannan Li, Xing Xie Microsoft Research Asia.
Influence and Passivity in Social Media Daniel M. Romero, Wojciech Galuba, Sitaram Asur, and Bernardo A. Huberman Social Computing Lab, HP Labs.
1 KSIDI June 9, 2010 Measuring User Influence in Twitter: The Million Follower Fallacy Meeyoung Cha Max Planck Institute for Software Systems (MPI-SWS)
Analysis and Modeling of Social Networks Foudalis Ilias.
Copyright © 2014 by The University of Kansas Collecting and Analyzing Data.
An Analysis of Social Network-Based Sybil Defenses Sybil Defender
Error Tolerant Address Configuration for Data Center Networks with Malfunctioning Devices Xingyu Ma, Chengchen Hu, Kai Chen, Che Zhang, Hongtao Zhang,
Funding Networks Abdullah Sevincer University of Nevada, Reno Department of Computer Science & Engineering.
UNDERSTANDING VISIBLE AND LATENT INTERACTIONS IN ONLINE SOCIAL NETWORK Presented by: Nisha Ranga Under guidance of : Prof. Augustin Chaintreau.
Report on Intrusion Detection and Data Fusion By Ganesh Godavari.
Surface Variation and Mating Surface Rotational Error in Assemblies Taylor Anderson UGS June 15, 2001.
Sampling from Large Graphs. Motivation Our purpose is to analyze and model social networks –An online social network graph is composed of millions of.
Tomer Sagi and Avigdor Gal Technion - Israel Institute of Technology Non-binary Evaluation for Schema Matching ER 2012 October 2012, Florence.
Models of Influence in Online Social Networks
Social Network Analysis via Factor Graph Model
Topic 13 Network Models Credits: C. Faloutsos and J. Leskovec Tutorial
Building and Analyzing Social Networks Case Studies of Semantic Social Network Analysis Dr. Bhavani Thuraisingham February 22, 2013.
SOCIAL NETWORKS AND THEIR IMPACTS ON BRANDS Edwin Dionel Molina Vásquez.
OSN Research As If Sociology Mattered Krishna P. Gummadi Networked Systems Research Group MPI-SWS.
The Effects of Ranging Noise on Multihop Localization: An Empirical Study from UC Berkeley Abon.
DIGITAL COMMUNITIES Chapter Copyright © 2013 Pearson Education, Inc. publishing as Prentice Hall.
CS 765 – Fall 2014 Paulo Alexandre Regis Reddit analysis.
Network Analysis Diffusion Networks. Social Network Philosophy Social structure is visible in an anthill Movements & contacts one sees are not random.
Principles of Social Network Analysis. Definition of Social Networks “A social network is a set of actors that may have relationships with one another”
Measures of Variability Variability: describes the spread or dispersion of scores for a set of data.
Topical Crawlers for Building Digital Library Collections Presenter: Qiaozhu Mei.
Report on Intrusion Detection and Data Fusion By Ganesh Godavari.
INTERACTIVE ANALYSIS OF COMPUTER CRIMES PRESENTED FOR CS-689 ON 10/12/2000 BY NAGAKALYANA ESKALA.
Understanding Crowds’ Migration on the Web Yong Wang Komal Pal Aleksandar Kuzmanovic Northwestern University
+ The Division or Classification Essay Catherine Wishart Senior Adjunct Instructor.
Self-Similarity of Complex Networks Maksim Kitsak Advisor: H. Eugene Stanley Collaborators: Shlomo Havlin Gerald Paul Zhenhua Wu Yiping Chen Guanliang.
Emergence of Scaling and Assortative Mixing by Altruism Li Ping The Hong Kong PolyU
Social Network Analysis Prof. Dr. Daning Hu Department of Informatics University of Zurich Mar 5th, 2013.
© Copyright 2008 STI INNSBRUCK August 2, 2012 – Carmen Brenner.
The Database and Info. Systems Lab. University of Illinois at Urbana-Champaign User Profiling in Ego-network: Co-profiling Attributes and Relationships.
Complex Network Theory – An Introduction Niloy Ganguly.
Local/Global Term Analysis for Discovering Community Differences in Social Networks David Fuhry, Yiye Ruan, and Srinivasan Parthasarathy Data Mining Research.
Complex Network Theory – An Introduction Niloy Ganguly.
Network Community Behavior to Infer Human Activities.
Measuring Behavioral Trust in Social Networks
Feature Point Detection and Curve Approximation for Early Processing of Free-Hand Sketches Tevfik Metin Sezgin and Randall Davis MIT AI Laboratory.
Du, Faloutsos, Wang, Akoglu Large Human Communication Networks Patterns and a Utility-Driven Generator Nan Du 1,2, Christos Faloutsos 2, Bai Wang 1, Leman.
Community-enhanced De-anonymization of Online Social Networks Shirin Nilizadeh, Apu Kapadia, Yong-Yeol Ahn Indiana University Bloomington CCS 2014.
KNN CF: A Temporal Social Network kNN CF: A Temporal Social Network Neal Lathia, Stephen Hailes, Licia Capra University College London RecSys ’ 08 Advisor:
An Effective Method to Improve the Resistance to Frangibility in Scale-free Networks Kaihua Xu HuaZhong Normal University.
Big Data Using Big Data for Cultures and Communities Jeremy Reffin Simon Wibberley CASM, University of Sussex Carl Miller CASM, Demos July 2014.
Networks are connections and interactions. Networks are present in every aspect of life. Examples include economics/social/political sciences. Networks.
Hypertext Categorization using Hyperlink Patterns and Meta Data Rayid Ghani Séan Slattery Yiming Yang Carnegie Mellon University.
Chapter 19 Properties of Atoms Periodic Table. Unit 1 Investigation III What do you know? In the 5 th century BCE a Greek philosopher named Leucippus.
Don’t Follow me : Spam Detection in Twitter January 12, 2011 In-seok An SNU Internet Database Lab. Alex Hai Wang The Pensylvania State University International.
黃福銘 (Angus F.M. Huang) ANTS Lab, IIS, Academia Sinica Exploring Spatial-Temporal Trajectory Model for Location.
Measuring User Influence in Twitter: The Million Follower Fallacy Meeyoung Cha Hamed Haddadi Fabricio Benevenuto Krishna P. Gummadi.
Twitter Community Discovery & Analysis Using Topologies Andrew McClain Karen Aguar.
Bennington’s Community Health Network. Study Objective Objective Describe the network of organizations that has emerged in each Blueprint HSA to support.
Ontology Engineering and Feature Construction for Predicting Friendship Links in the Live Journal Social Network Author:Vikas Bahirwani 、 Doina Caragea.
Springfield’s Community Health Network. Study Objective Objective Describe the network of organizations that has emerged in each Blueprint HSA to support.
The Scientific Method. Scientifically Solving a Problem Observe Define a Problem Review the Literature Observe some More Develop a Theoretical Framework.
GUILLOU Frederic. Outline Introduction Motivations The basic recommendation system First phase : semantic similarities Second phase : communities Application.
Chapter 12 Understanding Research Results: Description and Correlation
A Viewpoint-based Approach for Interaction Graph Analysis
Empirical analysis of Chinese airport network as a complex weighted network Methodology Section Presented by Di Li.
Dieudo Mulamba November 2017
By Charlie Fractal Mentor: Dr. Vignesh Subbian
Information Networks: State of the Art
Analyzing Two Participation Strategies in an Undergraduate Course Community Francisco Gutierrez Gustavo Zurita
 .
Discovering Important Nodes through Graph Entropy
Presentation transcript:

Twitter Community Discovery & Analysis Using Topologies Andrew McClain Karen Aguar

Outline Introduction Motivation Project Description Community Discovery Data Collection Analysis & Application Results Why, What, How?

Introduction Many people use services like twitter to stay in contact with groups in which they are members or to interact with other people with similar interests These groups are considered “communities”

Community? A network or group of nodes with greater ties internally than to the rest of the network There are various derivations of a community: Some communities are tightly bound together Others are loose associations of people

Motivation To classify these communities & find real world implications of their digital associations Project Description: Discovering communities & examining the properties of the graph to give us insight into the community itself. Ex: Find the organizers of a hobby group by the twitter activity

Our Project Our project is composed of 2 main sections Twitter community discovery Analysis of the community graphs & its correlation to the real world community structure

Community Discovery Collected data from a diverse number of individuals from known real-world communities Generated graphs of the communities Partitioned graphs based on in/out degrees to isolate the community

Community Discovery Communities: @CNN @AthensGroupRide @AthensChurch @UniversityOfGA @ChickFilA

Data Collection Relationships Modeled: Parameters Followed By/ Following Replies to Mentions Parameters 1.5 Levels Limit # of people included in network Most limited ~ 300

Analysis & Application Manually reconstructed the hierarchy of the real-world known communities Use Gephi to detect behavior patterns and structures in twitter communities Shape, interconnectivity, how the information flows through it Analyzed the relationships in the graphs against known community structures

Analysis via Gephi Gephi -- open source graph visualization platform We used Gephi to isolate the community from the noisy background

Analysis via Gephi After isolating the communities, labels were sized based on in-degree The assumption is that the people who are listened to are followed most in the community The spline on the right shows the scale of the labels At this time, the analysis of importance is done visually

Results What we found: An interesting dichotomy between primarily online & primarily offline communities “Celebrity” Noise Effect Once a celebrity is introduced to a community, everyone follows them and they become a center individual in the community structure

Results Online Community: Offline Community Athens Group ride --- Make predictions about who is / is not important (by looking at in-degree) Athens Church – Most significant members are represented in the graph A mega-church pastor introduces celebrity noise into the community Offline Community ChickFilA’s information distribution is largely a uni-directional relationship. It doesn’t receive much information. Semi-Online Communities (in between) CNN, UniversityofGa Their graphs reveal information about the community structure such as large organizations involved, but not much about the individuals in the network

Results Athens Group Ride Ty_Magner, Philgaimon, Joeyrosskopf are determined to be most influential

Results University of GA

Results Athens Church Andy Stanley -celebrity effect

Results Chick-Fil-A Offline Community

Results CNN Extremely small community once filters are applied

Thank You! Questions? References: Community Discovery in Social Networks: Applications, Methods and Emerging Trends S. Parthasarathy, Y. Ruan, V. Satuluri [2011] gephi.com nodexl.codeplex.com twitter.com