Exponential random graph models

126 views 9:42 am 0 Comments June 3, 2023

András Vörös
Department of Social Statistics, University of Manchester
SOST71032 Social Network AnalysisInternally Assure the Quality of Assessment
Introduction to Exponential Random Graph Models (ERGMs)
The network-level model
(Thanks to Bálint Néray and Zsófia Boda for a lot of materials on these slides!)
Quick recap about the intuition behind ERGMs
The network-level model
The tie-level model
Parameter interpretation
Estimation
Outline
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“Exponential random graph models (ERGMs) are statistical models for network
structure, permitting inferences about how network ties are patterned.”
(Lusher, Koskinen & Robins 2013, Chapter 2)
Goal:
to understand an observed network structure (nb: not to predict single network ties!)
to find underlying processes creating and maintaining the network-based social system
Tie-based approach – ERGMs do not model individual outcomes (though see
extensions)
ERGMs without symbols – recap
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The rationale behind ERGMs
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The rationale behind ERGMs
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The rationale behind ERGMs
Network ties can be explained…
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The rationale behind ERGMs
Network ties can be explained…
… with attributes of the sender and receiver nodes…
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The rationale behind ERGMs
Network ties can be explained…
… with attributes of the sender and receiver nodes…
… and with the structure of
their local network neighborhood.
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The rationale behind ERGMs
Network ties can be explained…
… with attributes of the sender and receiver nodes…
… and with the structure of
their local network neighborhood.
Flexibility regarding the “local
network neighborhood” part.
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Theories and mechanisms of network tie formation
Lusher, Koskinen & Robins 2013, p. 24
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The network-level model
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The network-level model

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