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Siena Winter School 2021
Online Workshop
Advanced Siena Users' Meeting 2021
February 11-12, 2021
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Don't use Internet Explorer or Microsoft Edge as a browser for these pages.
These do not reproduce the R scripts in a nice fashion.
Basic Preparations
The course will be online. It will consist of an alternation of lectures,
Q&A sessions, and practical work on assignments.
It is assumed that the participants have a good working knowledge
of the RSiena package.
This page contains an overload of material. For the workshop, a selection will be used,
depending on the participants' interests.
Many of the slides below have two versions: the first is the slide show that will be used
in the presentation, the second is a handout version.
You might wish to save the handout versions on your computer to make
notes on the pdf; or print some of them out to make notes on the paper version.
The workshop will take place via zoom; the zoom address will be sent
in a message to the participants.
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To prepare your computer setup for the course
- In R install the packages RSiena, sna, network, igraph, xtable.
Visit the new (it started late summer 2020) RSiena repository at GitHub:
https://github.com/snlab-nl/rsiena/.
Take a look around, and try to install RSiena version 1.2.29.
Since this is rather new, we like to get feedback!
If installing version 1.2.29 does not succeed, that will not be a problem;
the 'official' CRAN version 1.2-23 (or a newer version) is also suitable.
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Programme
There will be short breaks in the middle of each hour
and much opportunity for asking questions.
As the workshop proceeds, there may be discussions and questions,
and the program may be adapted.
- Thursday, February 11.
14.00-15.00
- Master class: paper 1.
Carlos de Mates Fernandez and co-authors:
Does cooperativeness homophily arise among first-year students in higher education?
15.30-16.30
- Master class: paper 2.
Ashwin Rambaran and co-authors:
A Relational Approach to Ethnic-Racial Discrimination:
Testing Selection, Influence, and Group Membership
- Friday, February 12.
11.30-12.30
- Simulation, part 2.
Materials: see above.
14.00-15.00
- Master class: paper 3.
Eleonora Marucci and co-authors:
The role of classroom social climate on friendship
selection and influence processes related to academic achievement:
Examining the effects of an educational intervention
15.30-16.30
- Master class: paper 4.
Debbie Vermond and co-authors:
The evolution and coevolution of a primary care cancer research network:
from academic social connections to co-authorship relations
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Materials
Here you find a long list of materials, some of which
will be used in the course, and many that will not be used.
You can take a look at them; and we might turn to some of them
for topics not treated above.
Sets of slides
The slides below have two versions: the first (name ending with "_s") is
the slide show that will be used
in the presentation, the second (name ending with "_p" or "_ha") is a handout version.
Manual
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Ruth M. Ripley, Tom A.B. Snijders, Zsófia Boda, Andras Vörös,
and Paulina Preciado (2020).
Manual for SIENA version 4.0.
Oxford: University of Oxford, Department of Statistics; Nuffield College.
Texts
- Yuval Kalish (2019).
Stochastic Actor-Oriented
Models for the Co-Evolution of Networks and Behavior:
An Introduction and Tutorial.
Organizational Research Methods, in press.
DOI:
http://dx.doi.org/10.1177/1094428118825300
- Robert W. Krause, Mark Huisman, and Tom A.B. Snijders (2018).
Multiple imputation for longitudinal network data.
Italian Journal of Applied Statistics, 30, 33-57.
DOI: https://doi.org/10.26398/IJAS.0030-002.
- Josh A. Lospinoso and Tom A. B. Snijders (2019).
Goodness of fit for Stochastic Actor-Oriented Models.
Methodological Innovations, 12, 2059799119884282.
DOI:
https://doi.org/10.1177/2059799119884282.
- Tom A.B. Snijders (2016).
The Multiple Flavours of Multilevel
Issues for Networks.
Chapter 2 in
Emmanuel Lazega and Tom A.B. Snijders (eds.),
Multilevel Network Analysis for the Social Sciences,
Cham: Springer, 2016.
ISBN 978-3-319-24518-8 ISBN 978-3-319-24520-1 (eBook)
DOI: 10.1007/978-3-319-24520-1
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Tom A.B. Snijders and Alessandro Lomi (2019).
Beyond Homophily:
Incorporating Actor Variables in Statistical Network Models.
Network Science, 7, 1-19.
- Christian E.G. Steglich, Tom A.B. Snijders, and Michael Pearson (2010).
Dynamic Networks and Behavior: Separating Selection from Influence.
Sociological Methodology, 40, 329-393.
DOI:
http://dx.doi.org/10.1111/j.1467-9531.2010.01225.x
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René Veenstra, Jan Kornelis Dijkstra, Christian Steglich
and Maarten H. W. Van Zalk (2013).
Network-Behavior Dynamics.
Journal of Research on Adolescence, 23, 399-412.
DOI:
http://dx.doi.org/10.1111/jora.12070
Scripts
Don't use Internet Explorer or Microsoft Edge as a browser for these pages.
These do not reproduce the R scripts in a nice fashion.
First some fundamental scripts.
- basicRSiena.r
An example of a basic sequence of commands for estimating a
model by function siena07 of RSiena.
- Rscript01DataFormat.R
with some basic information about R, networks, data formats etc;
with an example data file arclistdata.dat.
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RSienaSNADescriptives.R
with some descriptives, using package sna.
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Rscript02SienaVariableFormat.R
for how to specify data as variables in RSiena, and specify the model;
using the s50 data set.
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Rscript03SienaRunModel.R
for how to carry out the estimation and look at the results;
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Rscript04SienaBehaviour.R
for how to specify models for dynamics of networks and behaviour;
In addition there are some other scripts.
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RscriptSienaMultiple.R
for how to specify models for dynamics of multiple networks;
this uses a
manufactured data set
(longitudinal, 2 waves, 2 networks);
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RscriptSienaTimeTest.R
an example of testing time heterogeneity, using the
van de Bunt students data set.
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RscriptMultipleGroups_meta.R
an example of meta-analysis with the metafor package and siena08,
and of the multiple group option, using
Chris Baerveldt's Dutch Social Behavior
data set.
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RscriptMultipleGroups.R
a more limited example of the multiple group option and of meta-analysis
using function siena08, using
Chris Baerveldt's
Dutch Social Behavior data set.
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RscriptSienaOrdered.R
an example of modeling a network with ordered ties
(i.e., valued ties with a small set of ordered categories),
by representing them as multiple, ordered networks, using the
van de Bunt students data set.
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RscriptSienaBipartite.R
an example of co-evolution of a one-mode and a two-mode network, using
a set with substance use variables of the
Glasgow Teenage Friends and Lifestyle Study data.
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RscriptSienaSymmetric.R
a brief example of modeling a non-directed network, using the
s50 data set.
- Composition change in a network:
R script and data for illustration,
also see the slides.
- Simulation of networks with a given model specification:
NetworkSimulation.R.
- Goodness of fit:
An example script for how to use sienaGOF() is in
sienaGOF_vdB.R.
- Scripts to help making selection tables
(see the corresponding section in the manual):
SelectionTables.r.
- Scripts to help making influence tables
(see the corresponding section in the manual):
InfluenceTables.r.
- Random coefficient multilevel estimation of the Stochastic Actor-Oriented
Model:
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Further reading, not for the course, but for the scientific context
- Stephen P. Borgatti, Ajay Mehra, Daniel J. Brass, Giuseppe Labianca (2009).
Network Analysis in the Social Sciences.
Science, 323, 892-895.
DOI:
http://dx.doi.org/10.1126/science.1165821
- Garry Robins (2013).
A tutorial on methods for the modeling and analysis of social network data.
Journal of Mathematical Psychology, 57, 261-274.
DOI:
http://dx.doi.org/10.1016/j.jmp.2013.02.001
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Tom A.B. Snijders (2011).
Statistical Models for Social Networks.
Annual Review of Sociology, 37, 129-151.
DOI:
http://dx.doi.org/10.1146/annurev.soc.012809.102709
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