SlideShare une entreprise Scribd logo
1  sur  49
Social Networks:
New Paradigms for Modeling, Applications,
Computations, and Visualization
Anna Nagurney
John F. Smith Memorial Professor and
Director of the Virtual Center for Supernetworks
and
Tina Wakolbinger
Isenberg School of Management
University of Massachusetts at Amherst

UMASS Amherst Student Chapter of INFORMS
Operations Research / Management Science Seminar Series
November 19, 2004
Support
Support for this research has been provided by the
National Science Foundation under Grant No.:
IIS-0002647 under the Management of
Knowledge Intensive Dynamic Systems
(MKIDS) program. This support is gratefully
acknowledged.
This project involves also researchers from
Carnegie Mellon University, University of
Michigan, Stanford, and the University of
California at Irvine.
Support
This grant has provided support for students,
travel, books, supplies, computers, as well as
for the Supernetworks Laboratory for
Computation and Visualization in the Isenberg
School of Management.
The support is acknowledged with gratefulness.
The Supernetworks Lab
The Supernetworks Lab
A Story About How Social
Networks Evolve
• During the Spring/Summer of 2002 Professor
Nagurney held the Distinguished Chaired
Fulbright/University of Innsbruck Professorship at
the Institute of Economic Theory at the Business
School, SOWI, at the University of Innsbruck,
Austria, where Tina was studying…
Outline of Presentation
• Introduction to social networks
– History of social network theory
– Applications
– Dynamic social network theory

• The framework of supernetworks
• Supernetworks consisting of social
networks and economic networks
Definition of Social Networks
• “A social network is a set of actors that may
have relationships with one another.
Networks can have few or many actors
(nodes), and one or more kinds of relations
(edges) between pairs of actors.”
(Hannemann, 2001)
History (based on Freeman, 2000)
• 17th century: Spinoza developed first model
• 1937: J.L. Moreno introduced sociometry; he
also invented the sociogram
• 1948: A. Bavelas founded the group
networks laboratory at MIT; he also
specified centrality
History (based on Freeman, 2000)
• 1949: A. Rapaport developed a probability
based model of information flow
• 50s and 60s: Distinct research by individual
researchers
• 70s: Field of social network analysis emerged.
– New features in graph theory – more general
structural models
– Better computer power – analysis of complex
relational data sets
Representation of Social Networks
• Matrices
Ann
Rob
Sue
Nick

Ann Rob Sue Nick
--1
0
0
1
--1
0
1
1
--1
0
0
1
---

• Graphs

Ann
Nick

Sue

Rob
Graphs - Sociograms
(based on Hanneman, 2001)

• Labeled circles represent actors
• Line segments represent ties
• Graph may represent one or more types of
relations
• Each tie can be directed or show cooccurrence
– Arrows represent directed ties
Graphs – Sociograms
(based on Hanneman, 2001)

• Strength of ties:
–
–
–
–

Nominal
Signed
Ordinal
Valued
Visualization Software: Krackplot

Sources: http://www.andrew.cmu.edu/user/krack/krackplot/mitch-circle.html
http://www.andrew.cmu.edu/user/krack/krackplot/mitch-anneal.html
Connections (based on Hanneman, 2001)
• Size  
– Number of nodes

• Density
– Number of ties that are present the amount of
ties that could be present

• Out-degree
– Sum of connections from an actor to others

• In-degree
– Sum of connections to an actor
Distance (based on Hanneman, 2001)
• Walk
– A sequence of actors and relations that begins
and ends with actors

• Geodesic distance
– The number of relations in the shortest possible
walk from one actor to another

• Maximum flow
– The amount of different actors in the
neighborhood of a source that lead to pathways
to a target
Some Measures of Power
(based on Hanneman, 2001)

• Degree
– Sum of connections from or to an actor

• Closeness centrality
– Distance of one actor to all others in the
network

• Betweenness centrality
– Number that represents how frequently an actor
is between other actors’ geodesic paths
Cliques and Social Roles
(based on Hanneman, 2001)

• Cliques
– Sub-set of actors
• More closely tied to each other than to actors who
are not part of the sub-set

• Social roles
– Defined by regularities in the patterns of
relations among actors
Examples of Applications
(based on Freeman, 2000)

• Visualizing networks
• Studying differences of cultures and how
they can be changed
• Intra- and interorganizational studies
• Spread of illness, especially HIV
Commercial Application

Source: http://www.orgnet.com/sna.html
Dynamic Networks

(based on Carley, 2003)

• Limitations to traditional social network
analysis
– Focused on small bounded networks
• With 2-3 types of links among one type of nodes

– At one point of time
– Close to perfect information
Dynamic Networks

(based on Carley, 2003)

• Dynamic networks
– Meta matrix
– Treating ties as probabilistic
– Combining social networks with cognitive
science and multi-agent systems
– Networks and agents co-evolve
Applications of Dynamic Network
Analysis (DNA) (based on Carley, 2003)
• The possible effects of biological attacks on
cities (BioWar, Carley et al, 2002)
• Evaluation of information security within
organizations (ThreatFinder, Carley, 2001)
• Evaluation of how to build stable adaptive
networks with high performance and how to
destabilize networks (DyNet, Carley et al,
2002)
Dynet

Source: http://www.casos.cs.cmu.edu/projects/DyNet/dynet_info.html
Roles of Social Networks in
Economic Transactions
• Examples from Sociology
– Embeddedness theory
• Granovetter (1985)
• Uzzi (1996)

• Examples from Economics
–
–
–
–
–

Williamson (1983)
Joskow (1988)
Crawford (1990)
Vickers and Waterson (1991)
Muthoo (1998)
Roles of Social Networks in
Economic Transactions
• Examples from Marketing
– Relationship marketing
• Ganesan (1994)
• Bagozzi (1995)
Novelty of Our Research
• Supernetworks show the dynamic co-evolution
of economic (product, price and even
informational) flows and the social network
structure
• Economic flows and social network structure
are interrelated
• Network of relations has a measurable
economic value
Supernetworks
A Multidisciplinary Approach
Computer Science

Engineering

Supernetworks

Management
Science

Economics
and Finance
Tools That We Have Been Using
• Network theory
• Optimization theory
• Game theory
• Variational inequality theory
• Projected dynamical systems theory (which
we have been instrumental in developing)
• Network visualization tools
Applications of Supernetworks
• Telecommuting/Commuting Decision-Making
• Teleshopping/Shopping Decision-Making
• Supply Chain Networks with Electronic
Commerce
• Financial Networks with Electronic Transactions
• Reverse Supply Chains with E-Cycling
• Energy Networks/Power Grids
• Knowledge Networks
The Supernetwork Team
Supernetworks Integrating Social
Networks with Other Networks
• We have formulated and analyzed
supernetworks consisting of:
–
–
–
–

Supply chain and social networks
Financial and social networks
International supply chain and social networks
International financial and social networks
Supernetworks Integrating Social
Networks with Other Networks
• Decision-makers in the network can decide
about the relationship levels [0,1] that they
want to establish.
• Establishing relationship levels incurs some
costs.
• Higher relationship levels
– Reduce transaction costs
– Reduce risk
– Have some additional value (“relationship value”)
Supernetworks Integrating Social
Networks with Other Networks
Dynamic evolution of
• Product transactions/financial flows and
associated prices on the supply chain
network/financial network with
intermediation
• Relationship levels on the social network
Supernetwork Structure: Integrated
Supply Chain/Social Network System
Multicriteria Decision-Makers
• Manufacturers and Retailers try to
–
–
–
–

Maximize profit
Minimize risk
Maximize relationship value
Individual weights assigned to the different
criteria
Supernetwork Structure: Integrated
Financial/Social Network System
Supernetwork Structure:
Integrated Global Supply Chain/
Social Network System
Supernetwork Structure:
Integrated Global Financial/
Social Network System
Types of Simulations
• We can simulate
– Changes in production, transaction, handling, and
relationship production cost functions
– Changes in demand and risk functions
– Changes in weights for relationship value and risk
– Addition and removal of actors
– Addition and removal of multiple transaction
modes
– Addition and removal of countries and currencies
The Virtual Center for Supernetworks Webpage
Summary
• We model the behavior of the decision-makers, their
interactions, and the dynamic evolution of the
associated variables.
• We study the problems qualitatively as well as
computationally.
• We develop algorithms, implement them, and
establish conditions for convergence.
• We have studied to-date "good behavior." Fascinating
questions arise when there may be situations of
instability, multiple equilibria, chaos, cycles, etc.
References
•
•

•
•

•

•

Bagozzi, R. P. (1995). “Reflections on Relationship Marketing in Consumer
Markets,” Journal of the Academy of Marketing Science 23, 272-277.
Carley K.M. (2003). "Dynamic Network Analysis," in Dynamic Social Network
Modeling and Analysis: Workshop Summary and Papers, Ronald Breiger,
Kathleen Carley, and Philippa Pattison, (Eds.) Committee on Human Factors,
National Research Council, National Research Council. 133-145.
Crawford, V. P. (1990). “Relationship-Specific Investment,” The Quarterly
Journal of Economics 105, 561-574.
Cruz, J. M., Nagurney, A., and Wakolbinger. T. (2004), “Financial Engineering
of the Integration of Global Supply Chain Networks and Social Networks with
Risk Management,” see: http://supernet.som.umass.edu
Freeman L.C. (2000) "Social Network Analysis: Definition and History", In A.
E. Kazdan, ed. Encyclopedia of Psychology. New York: Oxford University
Press, Vol. 6, 350-351.
Ganesan, S. (1994). “Determinants of Long-Term Orientation in Buyer-Seller
Relationships,” Journal of Marketing 58, 1-19.
References
•
•
•

•
•

Granovetter, M. (1985). “Economic Action and Social Structure: The Problem
of Embeddedness,”American Journal of Sociology 91, 481-510.
Hannemann R.A. (2001) “Introduction to Social Network Methods”
http://faculty.ucr.edu/%7Ehanneman/SOC157/TEXT/TextIndex.html
Joskow, P. L. (1988). “Asset Specificity and the Structure of Vertical
Relationships: Empirical Evidence,” Journal of Law, Economics, and
Organization 4, 95-117.
Muthoo, A. (1998). “Sunk Costs and the Inefficiency of Relationship-Specific
Investment,”Economica 65, 97-106.
Nagurney. A., Wakolbinger, T., and Zhao, L. (2004), “The Evolution and
Emergence of Integrated Social and Financial Networks with Electronic
Transactions: A Dynamic Supernetwork Theory for the Modeling,
Analysis,and Computation of Financial Flows and Relationship Levels,” see:
http://supernet.som.umass.edu
References
•

•

•
•

•

Nagurney, A., Cruz, J., and Wakolbinger, T. (2004), “The Co-Evolution and
Emergence of Integrated International Financial Networks and Social
Networks: Theory, Analysis, and Computations,” to appear in a Springer
volume on Globalization and Regional Economic Modeling
Uzzi, B. (1998). “Embeddedness in the Making of Financial Capital: How
Social Relations and Networks Benefit Firms Seeking Financing,” American
Sociological Review 64, 481-505.
Vickers, J. and M. Waterson. (1991). “Vertical Relationships: An
Introduction,” The Journal of Industrial Economics 39, 445-450.
Wakolbinger, T., and Nagurney, A. (2004), “Dynamic Supernetworks for the
Integration of Social Networks and Supply Chains with Electronic Commerce:
Modeling and Analysis of Buyer-Seller Relationships with Computations,” to
appear in Netnomics
Williamson, O. E. (1983). “Credible Commitments: Using Hostages to
Support Exchange,” The American Economic Review 73, 519-540.
The full text of the papers can be found
under Downloadable Articles at:
http://supernet.som.umass.edu

Virtual Center for
Supernetworks
Thank you!

The Virtual Center
for Supernetworks

Contenu connexe

Tendances

CS6010 Social Network Analysis Unit V
CS6010 Social Network Analysis Unit VCS6010 Social Network Analysis Unit V
CS6010 Social Network Analysis Unit Vpkaviya
 
Social Network Analysis Workshop
Social Network Analysis WorkshopSocial Network Analysis Workshop
Social Network Analysis WorkshopData Works MD
 
Social Network Analysis (SNA) 2018
Social Network Analysis  (SNA) 2018Social Network Analysis  (SNA) 2018
Social Network Analysis (SNA) 2018Arsalan Khan
 
Data mining based social network
Data mining based social networkData mining based social network
Data mining based social networkFiras Husseini
 
Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012CameliaN
 
Social Media Mining - Chapter 3 (Network Measures)
Social Media Mining - Chapter 3 (Network Measures)Social Media Mining - Chapter 3 (Network Measures)
Social Media Mining - Chapter 3 (Network Measures)SocialMediaMining
 
12 Network Experiments and Interventions: Studying Information Diffusion and ...
12 Network Experiments and Interventions: Studying Information Diffusion and ...12 Network Experiments and Interventions: Studying Information Diffusion and ...
12 Network Experiments and Interventions: Studying Information Diffusion and ...dnac
 
Making the invisible visible through SNA
Making the invisible visible through SNAMaking the invisible visible through SNA
Making the invisible visible through SNAMYRA School of Business
 
Social Network Analysis power point presentation
Social Network Analysis power point presentation Social Network Analysis power point presentation
Social Network Analysis power point presentation Ratnesh Shah
 
Social Network Analysis: An Overview
Social Network Analysis: An OverviewSocial Network Analysis: An Overview
Social Network Analysis: An OverviewPenn State University
 
Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...
Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...
Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...BAINIDA
 
Tepl webinar 20032013
Tepl webinar   20032013Tepl webinar   20032013
Tepl webinar 20032013Nina Pataraia
 
Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)SocialMediaMining
 
01 Introduction to Networks Methods and Measures
01 Introduction to Networks Methods and Measures01 Introduction to Networks Methods and Measures
01 Introduction to Networks Methods and Measuresdnac
 
Socialnetworkanalysis 100225055227-phpapp02
Socialnetworkanalysis 100225055227-phpapp02Socialnetworkanalysis 100225055227-phpapp02
Socialnetworkanalysis 100225055227-phpapp02Adil Alpkoçak
 
Social Media Mining - Chapter 4 (Network Models)
Social Media Mining - Chapter 4 (Network Models)Social Media Mining - Chapter 4 (Network Models)
Social Media Mining - Chapter 4 (Network Models)SocialMediaMining
 

Tendances (20)

CS6010 Social Network Analysis Unit V
CS6010 Social Network Analysis Unit VCS6010 Social Network Analysis Unit V
CS6010 Social Network Analysis Unit V
 
Social Network Analysis Workshop
Social Network Analysis WorkshopSocial Network Analysis Workshop
Social Network Analysis Workshop
 
Social Network Analysis (SNA) 2018
Social Network Analysis  (SNA) 2018Social Network Analysis  (SNA) 2018
Social Network Analysis (SNA) 2018
 
02 Descriptive Statistics (2017)
02 Descriptive Statistics (2017)02 Descriptive Statistics (2017)
02 Descriptive Statistics (2017)
 
Data mining based social network
Data mining based social networkData mining based social network
Data mining based social network
 
Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012
 
01 Network Data Collection (2017)
01 Network Data Collection (2017)01 Network Data Collection (2017)
01 Network Data Collection (2017)
 
Social Network Analysis
Social Network AnalysisSocial Network Analysis
Social Network Analysis
 
Social Media Mining - Chapter 3 (Network Measures)
Social Media Mining - Chapter 3 (Network Measures)Social Media Mining - Chapter 3 (Network Measures)
Social Media Mining - Chapter 3 (Network Measures)
 
12 Network Experiments and Interventions: Studying Information Diffusion and ...
12 Network Experiments and Interventions: Studying Information Diffusion and ...12 Network Experiments and Interventions: Studying Information Diffusion and ...
12 Network Experiments and Interventions: Studying Information Diffusion and ...
 
Making the invisible visible through SNA
Making the invisible visible through SNAMaking the invisible visible through SNA
Making the invisible visible through SNA
 
Social Network Analysis power point presentation
Social Network Analysis power point presentation Social Network Analysis power point presentation
Social Network Analysis power point presentation
 
Social Network Analysis: An Overview
Social Network Analysis: An OverviewSocial Network Analysis: An Overview
Social Network Analysis: An Overview
 
Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...
Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...
Subscriber Churn Prediction Model using Social Network Analysis In Telecommun...
 
Tepl webinar 20032013
Tepl webinar   20032013Tepl webinar   20032013
Tepl webinar 20032013
 
Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)
 
DREaM Event 2: Louise Cooke
DREaM Event 2: Louise CookeDREaM Event 2: Louise Cooke
DREaM Event 2: Louise Cooke
 
01 Introduction to Networks Methods and Measures
01 Introduction to Networks Methods and Measures01 Introduction to Networks Methods and Measures
01 Introduction to Networks Methods and Measures
 
Socialnetworkanalysis 100225055227-phpapp02
Socialnetworkanalysis 100225055227-phpapp02Socialnetworkanalysis 100225055227-phpapp02
Socialnetworkanalysis 100225055227-phpapp02
 
Social Media Mining - Chapter 4 (Network Models)
Social Media Mining - Chapter 4 (Network Models)Social Media Mining - Chapter 4 (Network Models)
Social Media Mining - Chapter 4 (Network Models)
 

En vedette

Jewei Hans & Kamber Capter 7
Jewei Hans & Kamber Capter 7Jewei Hans & Kamber Capter 7
Jewei Hans & Kamber Capter 7Houw Liong The
 
Chaper 13 trend, Han & Kamber
Chaper 13 trend, Han & KamberChaper 13 trend, Han & Kamber
Chaper 13 trend, Han & KamberHouw Liong The
 
Chapter 11 cluster advanced, Han & Kamber
Chapter 11 cluster advanced, Han & KamberChapter 11 cluster advanced, Han & Kamber
Chapter 11 cluster advanced, Han & KamberHouw Liong The
 
Jewei Hans & Kamber Chapter 8
Jewei Hans & Kamber  Chapter 8Jewei Hans & Kamber  Chapter 8
Jewei Hans & Kamber Chapter 8Houw Liong The
 
Bedah film 2012 berdasarkan sains dan wahyu
Bedah film 2012 berdasarkan sains dan wahyuBedah film 2012 berdasarkan sains dan wahyu
Bedah film 2012 berdasarkan sains dan wahyuHouw Liong The
 
Prediksi dan modifikasi cuaca dan iklim ekstrim di
Prediksi dan modifikasi cuaca dan iklim ekstrim  diPrediksi dan modifikasi cuaca dan iklim ekstrim  di
Prediksi dan modifikasi cuaca dan iklim ekstrim diHouw Liong The
 

En vedette (9)

Jewei Hans & Kamber Capter 7
Jewei Hans & Kamber Capter 7Jewei Hans & Kamber Capter 7
Jewei Hans & Kamber Capter 7
 
Chaper 13 trend, Han & Kamber
Chaper 13 trend, Han & KamberChaper 13 trend, Han & Kamber
Chaper 13 trend, Han & Kamber
 
Climate model
Climate modelClimate model
Climate model
 
Chapter 11 cluster advanced, Han & Kamber
Chapter 11 cluster advanced, Han & KamberChapter 11 cluster advanced, Han & Kamber
Chapter 11 cluster advanced, Han & Kamber
 
Graph mining
Graph miningGraph mining
Graph mining
 
Jewei Hans & Kamber Chapter 8
Jewei Hans & Kamber  Chapter 8Jewei Hans & Kamber  Chapter 8
Jewei Hans & Kamber Chapter 8
 
Catones y aniones
Catones y anionesCatones y aniones
Catones y aniones
 
Bedah film 2012 berdasarkan sains dan wahyu
Bedah film 2012 berdasarkan sains dan wahyuBedah film 2012 berdasarkan sains dan wahyu
Bedah film 2012 berdasarkan sains dan wahyu
 
Prediksi dan modifikasi cuaca dan iklim ekstrim di
Prediksi dan modifikasi cuaca dan iklim ekstrim  diPrediksi dan modifikasi cuaca dan iklim ekstrim  di
Prediksi dan modifikasi cuaca dan iklim ekstrim di
 

Similaire à Modeling Social and Economic Networks

01 Introduction to Networks Methods and Measures (2016)
01 Introduction to Networks Methods and Measures (2016)01 Introduction to Networks Methods and Measures (2016)
01 Introduction to Networks Methods and Measures (2016)Duke Network Analysis Center
 
Organisational Network Analysis and Enterprise Architecture
Organisational Network Analysis and Enterprise ArchitectureOrganisational Network Analysis and Enterprise Architecture
Organisational Network Analysis and Enterprise ArchitectureNicole Mathison
 
Tutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social NetworksTutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social Networkspjing2
 
Multi-level analysis on structures and dynamics of OSN
Multi-level analysis on structures and dynamics of OSNMulti-level analysis on structures and dynamics of OSN
Multi-level analysis on structures and dynamics of OSNHaewoon Kwak
 
[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...
[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...
[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...DataScienceConferenc1
 
Social Dynamics on Networks
Social Dynamics on NetworksSocial Dynamics on Networks
Social Dynamics on NetworksMason Porter
 
WIDS 2021--An Introduction to Network Science
WIDS 2021--An Introduction to Network ScienceWIDS 2021--An Introduction to Network Science
WIDS 2021--An Introduction to Network ScienceColleen Farrelly
 
A boring presentation about social mobile communication patterns and opportun...
A boring presentation about social mobile communication patterns and opportun...A boring presentation about social mobile communication patterns and opportun...
A boring presentation about social mobile communication patterns and opportun...Save Manos
 
Visually Exploring Social Participation in Encyclopedia of Life
Visually Exploring Social Participation in Encyclopedia of LifeVisually Exploring Social Participation in Encyclopedia of Life
Visually Exploring Social Participation in Encyclopedia of LifeHarish Vaidyanathan
 
Initiating a Network Effect in a Social Network - A Facebook Experiment
Initiating a Network Effect in a Social Network - A Facebook ExperimentInitiating a Network Effect in a Social Network - A Facebook Experiment
Initiating a Network Effect in a Social Network - A Facebook ExperimentNasri Messarra
 
Social network analysis
Social network analysisSocial network analysis
Social network analysisFEG
 
An Introduction to NodeXL for Social Scientists
An Introduction to NodeXL for Social ScientistsAn Introduction to NodeXL for Social Scientists
An Introduction to NodeXL for Social ScientistsDr Wasim Ahmed
 
SOCIAM Book: The Theory and Practice of Social Machines
SOCIAM Book: The Theory and Practice of Social MachinesSOCIAM Book: The Theory and Practice of Social Machines
SOCIAM Book: The Theory and Practice of Social MachinesUlrik Lyngs
 

Similaire à Modeling Social and Economic Networks (20)

01 Introduction to Networks Methods and Measures (2016)
01 Introduction to Networks Methods and Measures (2016)01 Introduction to Networks Methods and Measures (2016)
01 Introduction to Networks Methods and Measures (2016)
 
Organisational Network Analysis and Enterprise Architecture
Organisational Network Analysis and Enterprise ArchitectureOrganisational Network Analysis and Enterprise Architecture
Organisational Network Analysis and Enterprise Architecture
 
Tutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social NetworksTutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social Networks
 
Network Science: Theory, Modeling and Applications
Network Science: Theory, Modeling and ApplicationsNetwork Science: Theory, Modeling and Applications
Network Science: Theory, Modeling and Applications
 
Multi-level analysis on structures and dynamics of OSN
Multi-level analysis on structures and dynamics of OSNMulti-level analysis on structures and dynamics of OSN
Multi-level analysis on structures and dynamics of OSN
 
[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...
[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...
[DSC Adria 23] Marija Mitrovic Dankulov Complex networks and data science eff...
 
Flight MH370 community structure
Flight MH370 community structureFlight MH370 community structure
Flight MH370 community structure
 
Social Dynamics on Networks
Social Dynamics on NetworksSocial Dynamics on Networks
Social Dynamics on Networks
 
WIDS 2021--An Introduction to Network Science
WIDS 2021--An Introduction to Network ScienceWIDS 2021--An Introduction to Network Science
WIDS 2021--An Introduction to Network Science
 
Q046049397
Q046049397Q046049397
Q046049397
 
A boring presentation about social mobile communication patterns and opportun...
A boring presentation about social mobile communication patterns and opportun...A boring presentation about social mobile communication patterns and opportun...
A boring presentation about social mobile communication patterns and opportun...
 
Visually Exploring Social Participation in Encyclopedia of Life
Visually Exploring Social Participation in Encyclopedia of LifeVisually Exploring Social Participation in Encyclopedia of Life
Visually Exploring Social Participation in Encyclopedia of Life
 
Initiating a Network Effect in a Social Network - A Facebook Experiment
Initiating a Network Effect in a Social Network - A Facebook ExperimentInitiating a Network Effect in a Social Network - A Facebook Experiment
Initiating a Network Effect in a Social Network - A Facebook Experiment
 
Social network analysis
Social network analysisSocial network analysis
Social network analysis
 
An Introduction to NodeXL for Social Scientists
An Introduction to NodeXL for Social ScientistsAn Introduction to NodeXL for Social Scientists
An Introduction to NodeXL for Social Scientists
 
Chapter 3.pdf
Chapter 3.pdfChapter 3.pdf
Chapter 3.pdf
 
Web and Complex Systems Lab @ Kno.e.sis
Web and Complex Systems Lab @ Kno.e.sisWeb and Complex Systems Lab @ Kno.e.sis
Web and Complex Systems Lab @ Kno.e.sis
 
SOCIAM Book: The Theory and Practice of Social Machines
SOCIAM Book: The Theory and Practice of Social MachinesSOCIAM Book: The Theory and Practice of Social Machines
SOCIAM Book: The Theory and Practice of Social Machines
 
Academic Course: 13 Applications of and Challenges in Self-Awareness
Academic Course: 13 Applications of and Challenges in Self-AwarenessAcademic Course: 13 Applications of and Challenges in Self-Awareness
Academic Course: 13 Applications of and Challenges in Self-Awareness
 
06 Community Detection
06 Community Detection06 Community Detection
06 Community Detection
 

Plus de Houw Liong The

Museumgeologi 130427165857-phpapp02
Museumgeologi 130427165857-phpapp02Museumgeologi 130427165857-phpapp02
Museumgeologi 130427165857-phpapp02Houw Liong The
 
Research in data mining
Research in data miningResearch in data mining
Research in data miningHouw Liong The
 
Fisika & komputasi cerdas
Fisika & komputasi cerdasFisika & komputasi cerdas
Fisika & komputasi cerdasHouw Liong The
 
Sharma : social networks
Sharma : social networksSharma : social networks
Sharma : social networksHouw Liong The
 
Introduction to-graph-theory-1204617648178088-2
Introduction to-graph-theory-1204617648178088-2Introduction to-graph-theory-1204617648178088-2
Introduction to-graph-theory-1204617648178088-2Houw Liong The
 
Capter10 cluster basic : Han & Kamber
Capter10 cluster basic : Han & KamberCapter10 cluster basic : Han & Kamber
Capter10 cluster basic : Han & KamberHouw Liong The
 
Web & text mining lecture10
Web & text mining lecture10Web & text mining lecture10
Web & text mining lecture10Houw Liong The
 
Graph mining seminar_2009
Graph mining seminar_2009Graph mining seminar_2009
Graph mining seminar_2009Houw Liong The
 
Chapter 11 cluster advanced : web and text mining
Chapter 11 cluster advanced : web and text miningChapter 11 cluster advanced : web and text mining
Chapter 11 cluster advanced : web and text miningHouw Liong The
 
Chapter 09 classification advanced
Chapter 09 classification advancedChapter 09 classification advanced
Chapter 09 classification advancedHouw Liong The
 
System dynamics math representation
System dynamics math representationSystem dynamics math representation
System dynamics math representationHouw Liong The
 
Ray : modeling dynamic systems
Ray : modeling dynamic systemsRay : modeling dynamic systems
Ray : modeling dynamic systemsHouw Liong The
 

Plus de Houw Liong The (20)

Museumgeologi 130427165857-phpapp02
Museumgeologi 130427165857-phpapp02Museumgeologi 130427165857-phpapp02
Museumgeologi 130427165857-phpapp02
 
Space weather
Space weather Space weather
Space weather
 
Research in data mining
Research in data miningResearch in data mining
Research in data mining
 
Indonesia
IndonesiaIndonesia
Indonesia
 
Canfis
CanfisCanfis
Canfis
 
Climate Change
Climate ChangeClimate Change
Climate Change
 
Space Weather
Space Weather Space Weather
Space Weather
 
Fisika komputasi
Fisika komputasiFisika komputasi
Fisika komputasi
 
Fisika & komputasi cerdas
Fisika & komputasi cerdasFisika & komputasi cerdas
Fisika & komputasi cerdas
 
Sharma : social networks
Sharma : social networksSharma : social networks
Sharma : social networks
 
Introduction to-graph-theory-1204617648178088-2
Introduction to-graph-theory-1204617648178088-2Introduction to-graph-theory-1204617648178088-2
Introduction to-graph-theory-1204617648178088-2
 
Capter10 cluster basic : Han & Kamber
Capter10 cluster basic : Han & KamberCapter10 cluster basic : Han & Kamber
Capter10 cluster basic : Han & Kamber
 
Web & text mining lecture10
Web & text mining lecture10Web & text mining lecture10
Web & text mining lecture10
 
Graph mining seminar_2009
Graph mining seminar_2009Graph mining seminar_2009
Graph mining seminar_2009
 
Chapter 11 cluster advanced : web and text mining
Chapter 11 cluster advanced : web and text miningChapter 11 cluster advanced : web and text mining
Chapter 11 cluster advanced : web and text mining
 
Chapter 09 classification advanced
Chapter 09 classification advancedChapter 09 classification advanced
Chapter 09 classification advanced
 
System dynamics math representation
System dynamics math representationSystem dynamics math representation
System dynamics math representation
 
Ray : modeling dynamic systems
Ray : modeling dynamic systemsRay : modeling dynamic systems
Ray : modeling dynamic systems
 
Chaper 13 trend
Chaper 13 trendChaper 13 trend
Chaper 13 trend
 
Chapter 12 outlier
Chapter 12 outlierChapter 12 outlier
Chapter 12 outlier
 

Dernier

Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfchloefrazer622
 
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...anjaliyadav012327
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpinRaunakKeshri1
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactPECB
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...EduSkills OECD
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajanpragatimahajan3
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfJayanti Pande
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptxVS Mahajan Coaching Centre
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxiammrhaywood
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13Steve Thomason
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Krashi Coaching
 
Sanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfSanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfsanyamsingh5019
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformChameera Dedduwage
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDThiyagu K
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxSayali Powar
 

Dernier (20)

Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdf
 
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajan
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
 
Sanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfSanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdf
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy Reform
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SD
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
 

Modeling Social and Economic Networks

  • 1. Social Networks: New Paradigms for Modeling, Applications, Computations, and Visualization Anna Nagurney John F. Smith Memorial Professor and Director of the Virtual Center for Supernetworks and Tina Wakolbinger Isenberg School of Management University of Massachusetts at Amherst UMASS Amherst Student Chapter of INFORMS Operations Research / Management Science Seminar Series November 19, 2004
  • 2. Support Support for this research has been provided by the National Science Foundation under Grant No.: IIS-0002647 under the Management of Knowledge Intensive Dynamic Systems (MKIDS) program. This support is gratefully acknowledged. This project involves also researchers from Carnegie Mellon University, University of Michigan, Stanford, and the University of California at Irvine.
  • 3. Support This grant has provided support for students, travel, books, supplies, computers, as well as for the Supernetworks Laboratory for Computation and Visualization in the Isenberg School of Management. The support is acknowledged with gratefulness.
  • 6. A Story About How Social Networks Evolve • During the Spring/Summer of 2002 Professor Nagurney held the Distinguished Chaired Fulbright/University of Innsbruck Professorship at the Institute of Economic Theory at the Business School, SOWI, at the University of Innsbruck, Austria, where Tina was studying…
  • 7. Outline of Presentation • Introduction to social networks – History of social network theory – Applications – Dynamic social network theory • The framework of supernetworks • Supernetworks consisting of social networks and economic networks
  • 8. Definition of Social Networks • “A social network is a set of actors that may have relationships with one another. Networks can have few or many actors (nodes), and one or more kinds of relations (edges) between pairs of actors.” (Hannemann, 2001)
  • 9. History (based on Freeman, 2000) • 17th century: Spinoza developed first model • 1937: J.L. Moreno introduced sociometry; he also invented the sociogram • 1948: A. Bavelas founded the group networks laboratory at MIT; he also specified centrality
  • 10. History (based on Freeman, 2000) • 1949: A. Rapaport developed a probability based model of information flow • 50s and 60s: Distinct research by individual researchers • 70s: Field of social network analysis emerged. – New features in graph theory – more general structural models – Better computer power – analysis of complex relational data sets
  • 11. Representation of Social Networks • Matrices Ann Rob Sue Nick Ann Rob Sue Nick --1 0 0 1 --1 0 1 1 --1 0 0 1 --- • Graphs Ann Nick Sue Rob
  • 12. Graphs - Sociograms (based on Hanneman, 2001) • Labeled circles represent actors • Line segments represent ties • Graph may represent one or more types of relations • Each tie can be directed or show cooccurrence – Arrows represent directed ties
  • 13. Graphs – Sociograms (based on Hanneman, 2001) • Strength of ties: – – – – Nominal Signed Ordinal Valued
  • 14. Visualization Software: Krackplot Sources: http://www.andrew.cmu.edu/user/krack/krackplot/mitch-circle.html http://www.andrew.cmu.edu/user/krack/krackplot/mitch-anneal.html
  • 15. Connections (based on Hanneman, 2001) • Size   – Number of nodes • Density – Number of ties that are present the amount of ties that could be present • Out-degree – Sum of connections from an actor to others • In-degree – Sum of connections to an actor
  • 16. Distance (based on Hanneman, 2001) • Walk – A sequence of actors and relations that begins and ends with actors • Geodesic distance – The number of relations in the shortest possible walk from one actor to another • Maximum flow – The amount of different actors in the neighborhood of a source that lead to pathways to a target
  • 17. Some Measures of Power (based on Hanneman, 2001) • Degree – Sum of connections from or to an actor • Closeness centrality – Distance of one actor to all others in the network • Betweenness centrality – Number that represents how frequently an actor is between other actors’ geodesic paths
  • 18. Cliques and Social Roles (based on Hanneman, 2001) • Cliques – Sub-set of actors • More closely tied to each other than to actors who are not part of the sub-set • Social roles – Defined by regularities in the patterns of relations among actors
  • 19. Examples of Applications (based on Freeman, 2000) • Visualizing networks • Studying differences of cultures and how they can be changed • Intra- and interorganizational studies • Spread of illness, especially HIV
  • 21. Dynamic Networks (based on Carley, 2003) • Limitations to traditional social network analysis – Focused on small bounded networks • With 2-3 types of links among one type of nodes – At one point of time – Close to perfect information
  • 22. Dynamic Networks (based on Carley, 2003) • Dynamic networks – Meta matrix – Treating ties as probabilistic – Combining social networks with cognitive science and multi-agent systems – Networks and agents co-evolve
  • 23. Applications of Dynamic Network Analysis (DNA) (based on Carley, 2003) • The possible effects of biological attacks on cities (BioWar, Carley et al, 2002) • Evaluation of information security within organizations (ThreatFinder, Carley, 2001) • Evaluation of how to build stable adaptive networks with high performance and how to destabilize networks (DyNet, Carley et al, 2002)
  • 25. Roles of Social Networks in Economic Transactions • Examples from Sociology – Embeddedness theory • Granovetter (1985) • Uzzi (1996) • Examples from Economics – – – – – Williamson (1983) Joskow (1988) Crawford (1990) Vickers and Waterson (1991) Muthoo (1998)
  • 26. Roles of Social Networks in Economic Transactions • Examples from Marketing – Relationship marketing • Ganesan (1994) • Bagozzi (1995)
  • 27. Novelty of Our Research • Supernetworks show the dynamic co-evolution of economic (product, price and even informational) flows and the social network structure • Economic flows and social network structure are interrelated • Network of relations has a measurable economic value
  • 29. A Multidisciplinary Approach Computer Science Engineering Supernetworks Management Science Economics and Finance
  • 30. Tools That We Have Been Using • Network theory • Optimization theory • Game theory • Variational inequality theory • Projected dynamical systems theory (which we have been instrumental in developing) • Network visualization tools
  • 31. Applications of Supernetworks • Telecommuting/Commuting Decision-Making • Teleshopping/Shopping Decision-Making • Supply Chain Networks with Electronic Commerce • Financial Networks with Electronic Transactions • Reverse Supply Chains with E-Cycling • Energy Networks/Power Grids • Knowledge Networks
  • 33. Supernetworks Integrating Social Networks with Other Networks • We have formulated and analyzed supernetworks consisting of: – – – – Supply chain and social networks Financial and social networks International supply chain and social networks International financial and social networks
  • 34. Supernetworks Integrating Social Networks with Other Networks • Decision-makers in the network can decide about the relationship levels [0,1] that they want to establish. • Establishing relationship levels incurs some costs. • Higher relationship levels – Reduce transaction costs – Reduce risk – Have some additional value (“relationship value”)
  • 35. Supernetworks Integrating Social Networks with Other Networks Dynamic evolution of • Product transactions/financial flows and associated prices on the supply chain network/financial network with intermediation • Relationship levels on the social network
  • 36. Supernetwork Structure: Integrated Supply Chain/Social Network System
  • 37. Multicriteria Decision-Makers • Manufacturers and Retailers try to – – – – Maximize profit Minimize risk Maximize relationship value Individual weights assigned to the different criteria
  • 39. Supernetwork Structure: Integrated Global Supply Chain/ Social Network System
  • 40. Supernetwork Structure: Integrated Global Financial/ Social Network System
  • 41. Types of Simulations • We can simulate – Changes in production, transaction, handling, and relationship production cost functions – Changes in demand and risk functions – Changes in weights for relationship value and risk – Addition and removal of actors – Addition and removal of multiple transaction modes – Addition and removal of countries and currencies
  • 42. The Virtual Center for Supernetworks Webpage
  • 43.
  • 44. Summary • We model the behavior of the decision-makers, their interactions, and the dynamic evolution of the associated variables. • We study the problems qualitatively as well as computationally. • We develop algorithms, implement them, and establish conditions for convergence. • We have studied to-date "good behavior." Fascinating questions arise when there may be situations of instability, multiple equilibria, chaos, cycles, etc.
  • 45. References • • • • • • Bagozzi, R. P. (1995). “Reflections on Relationship Marketing in Consumer Markets,” Journal of the Academy of Marketing Science 23, 272-277. Carley K.M. (2003). "Dynamic Network Analysis," in Dynamic Social Network Modeling and Analysis: Workshop Summary and Papers, Ronald Breiger, Kathleen Carley, and Philippa Pattison, (Eds.) Committee on Human Factors, National Research Council, National Research Council. 133-145. Crawford, V. P. (1990). “Relationship-Specific Investment,” The Quarterly Journal of Economics 105, 561-574. Cruz, J. M., Nagurney, A., and Wakolbinger. T. (2004), “Financial Engineering of the Integration of Global Supply Chain Networks and Social Networks with Risk Management,” see: http://supernet.som.umass.edu Freeman L.C. (2000) "Social Network Analysis: Definition and History", In A. E. Kazdan, ed. Encyclopedia of Psychology. New York: Oxford University Press, Vol. 6, 350-351. Ganesan, S. (1994). “Determinants of Long-Term Orientation in Buyer-Seller Relationships,” Journal of Marketing 58, 1-19.
  • 46. References • • • • • Granovetter, M. (1985). “Economic Action and Social Structure: The Problem of Embeddedness,”American Journal of Sociology 91, 481-510. Hannemann R.A. (2001) “Introduction to Social Network Methods” http://faculty.ucr.edu/%7Ehanneman/SOC157/TEXT/TextIndex.html Joskow, P. L. (1988). “Asset Specificity and the Structure of Vertical Relationships: Empirical Evidence,” Journal of Law, Economics, and Organization 4, 95-117. Muthoo, A. (1998). “Sunk Costs and the Inefficiency of Relationship-Specific Investment,”Economica 65, 97-106. Nagurney. A., Wakolbinger, T., and Zhao, L. (2004), “The Evolution and Emergence of Integrated Social and Financial Networks with Electronic Transactions: A Dynamic Supernetwork Theory for the Modeling, Analysis,and Computation of Financial Flows and Relationship Levels,” see: http://supernet.som.umass.edu
  • 47. References • • • • • Nagurney, A., Cruz, J., and Wakolbinger, T. (2004), “The Co-Evolution and Emergence of Integrated International Financial Networks and Social Networks: Theory, Analysis, and Computations,” to appear in a Springer volume on Globalization and Regional Economic Modeling Uzzi, B. (1998). “Embeddedness in the Making of Financial Capital: How Social Relations and Networks Benefit Firms Seeking Financing,” American Sociological Review 64, 481-505. Vickers, J. and M. Waterson. (1991). “Vertical Relationships: An Introduction,” The Journal of Industrial Economics 39, 445-450. Wakolbinger, T., and Nagurney, A. (2004), “Dynamic Supernetworks for the Integration of Social Networks and Supply Chains with Electronic Commerce: Modeling and Analysis of Buyer-Seller Relationships with Computations,” to appear in Netnomics Williamson, O. E. (1983). “Credible Commitments: Using Hostages to Support Exchange,” The American Economic Review 73, 519-540.
  • 48. The full text of the papers can be found under Downloadable Articles at: http://supernet.som.umass.edu Virtual Center for Supernetworks
  • 49. Thank you! The Virtual Center for Supernetworks