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Articles about the SIENA program
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This webpage contains statistical and methodological papers
about SIENA.
Manual
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Introductory literature
- Longitudinal network data
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The transparencies of the workshop The analysis of longitudinal social network data
held at Sunbelt Social Networks Conferences.
- Snijders, T.A.B., Steglich, C.E.G., and van de Bunt, G.G. (2010).
Introduction to actor-based models for network dynamics.
Social Networks, 32, 44-60.
This is a tutorial.
Published version:
http://dx.doi.org/10.1016/j.socnet.2009.02.004.
- Snijders, Tom A.B. (2005).
Models for Longitudinal Network Data.
Chapter 11 in
P. Carrington, J. Scott, & S. Wasserman (Eds.),
Models and methods in social network analysis.
New York: Cambridge University Press.
- Snijders, T.A.B., 2006.
Statistical Methods for Network Dynamics.
In: S.R. Luchini et al. (eds.), Proceedings of the XLIII Scientific Meeting,
Italian Statistical Society, pp. 281--296. Padova: CLEUP.
(This is an introduction for statistically oriented researchers.)
- Longitudinal data of networks and behavior
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- Snijders, T.A.B., Steglich, C.E.G., and van de Bunt, G.G. (2010).
Introduction to actor-based models for network dynamics.
Social Networks, 32, 44-60.
This is a tutorial.
Published version:
http://dx.doi.org/10.1016/j.socnet.2009.02.004.
- Steglich, C.E.G., Snijders, T.A.B. and Pearson, M.
Dynamic Networks and Behavior: Separating Selection from Influence.
To be published, Sociological Methodology, 2010.
- Snijders, Tom A.B. (2009).
Longitudinal Methods of Network Analysis .
Pp. 5998-6013 in
Encyclopedia of Complexity and System Science (editor-in-chief Bob Meyers),
part of the Social Networks section (section editor John Scott), Springer Verlag, 2009.
- Exponential random graph models
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An introduction to Exponential Random Graph Models is given at the MelNet site with a list of preprints of
the Melbourne social networks group.
- Garry L. Robins, Pip Pattison, Yuval Kalish, and Dean Lusher,
An introduction to exponential random graph (p*) models for social networks.
Social Networks 29, 173-191 (2007).
- Robins, G.L., Snijders, T.A.B., Wang, P., Handcock, M., &
Pattison, P.
Recent developments in exponential random graph (p*) models for social networks.
Social Networks 29, 192-215 (2007).
- In Dutch
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- Huisman, Mark, and Snijders, Tom A.B. (2003), Een stochastisch model voor netwerkevolutie.
Nederlands Tijdschrift voor de Psychologie, 58, 182-194.
- In French
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- In German
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- In Italian
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- In Spanish and Catalan
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- Jariego, Isidro Maya, and de Federico de la Rua, Ainhoa (2006),
El analisis dinamico de redes sociales con SIENA.
In: Jose Luis Molina, Agueda Quiroga, Joel Marti, Isidro Maya Jariego,
and Ainhoa de Federico (eds.),
Talleres de autoformacion con progamas informaticos de analisis
de redes sociales,
Bellaterra: Universitat Autonoma de Barcelona, Servei de Publicacions.
- de Federico de la Rua, Ainhoa (2005),
El analisis dinamico de redes sociales con SIENA. Metodo, Discusion y Aplicacion.
Empiria, 10, 151-181.
A preprint is available here.
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Literature with fundamental statistical description of the methods
- Longitudinal network data
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- Schweinberger, M., (2005).
Statistical modeling of network panel data: Goodness of fit.
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Snijders, T.A.B.,
Stochastic actor-oriented dynamic network analysis.
Journal of Mathematical Sociology, 21 (1996), 149-172.
This paper is a precursor: it is about a method not implemented in SIENA,
but along the same lines, for data in the form of ranks.
- Snijders, Tom A.B.,
The statistical evaluation of social network dynamics.
Pp. 361-395 in Sociological Methodology - 2001, edited by
M.E. Sobel and M.P. Becker. Boston and London: Basil Blackwell.
- Snijders, Tom A.B. (2008).
Statistical modeling of dynamics of non-directed networks.
Presentation at the XXV International Sunbelt Social Networks Conference,
Redondo Beach (Los Angeles), February 16-20. 2005. Revised version.
- Snijders, Tom A.B., Koskinen, Johan, and Schweinberger, Michael (2010).
Maximum Likelihood Estimation for Social Network Dynamics.
In press, Annals of Applied Statistics.
- Snijders, Tom A.B. and Van Duijn, Marijtje A.J.
(1997).
Simulation for statistical inference in dynamic network models.
In: Conte, R., Hegselmann, R. Terna, P. (eds.),
Simulating social phenomena , 493-512. Berlin: Springer.
- Longitudinal data of networks and behavior
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- Snijders, Tom A.B., Steglich, Christian E.G., and
Schweinberger, Michael,
Modeling the co-evolution of networks and behavior.
Pp. 41-71 in Longitudinal models in the behavioral and related sciences,
edited by Kees van Montfort, Han Oud and Albert Satorra;
Lawrence Erlbaum, 2007.
- Exponential random graph models
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- Snijders, Tom A.B. (2002).
Markov chain Monte Carlo estimation
of exponential random graph models.
Journal
of Social Structure, Vol. 3, No. 2.
(The JoSS version contains a Java program which is not contained
in the pdf file.)
- Snijders, Tom A.B., Pattison, Philippa E., Robins, Garry L., and Handcock, Mark S.,
New specifications for exponential random graph models.
Sociological Methodology, 2006, 99-153.
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Further literature about special topics
- Longitudinal network data
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- Huisman, Mark, and Snijders, Tom A.B., (2003).
Statistical
analysis of longitudinal network data with changing composition.
Sociological Methods & Research, 32, 253-287.
- Huisman, Mark, and Steglich, C.E.G., (2008).
Treatment of non-response in longitudinal network data..
Social Networks, 30, 297-308.
- Koskinen, Johan H., and Snijders, Tom A.B., (2007).
Bayesian inference for dynamic social network data.
Journal of Statistical Planning and Inference, 137 (2007), 3930-3938.
- Schweinberger, M., and Snijders, T.A.B., (2007).
Markov models for digraph panel data: Monte Carlo-based
derivative estimation.
Computational Statistics and Data Analysis 51, 4465-4483.
- Snijders, Tom A.B (2003).
Accounting for Degree Distributions
in Empirical Analysis of Network Dynamics.
Pp. 146-161 in: R. Breiger, K. Carley, and P. Pattison (eds.),
Dynamic Social Network Modeling and Analysis: Workshop Summary and Papers.
National Research Council of the National Academies.
Washington, DC: The National Academies Press.
This is about an alternative model for network evolution which gives
more flexibility in modeling the distribution of the out-degrees.
- Snijders, Tom A.B. (2004).
Explained Variation in Dynamic Network Models.
Mathematiques, Informatique et Sciences Humaines /
Mathematics and Social Sciences, 168, 2004(4), p. 31-41.
- Longitudinal data of networks and behavior
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- Exponential random graph models
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- Multilevel dynamic network analysis
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Literature about further applications can be found at the
webpage with applications.
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Back to the main Siena page
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