Introduction to
Stochastic Actor-oriented Models
Types of dataSkills Assessment
András Vörös
Department of Social Statistics, University of Manchester
SOST71032 Social Network Analysis
* Thanks to Christoph Stadtfeld for many nice figures and examples.
Summary: Stochastic Actor-oriented Models
At certain points in time, actors consider changing the
set of their outgoing network ties
Each possible choice is described by an objective
function that takes different effects into account
outdegree (number of ties)
reciprocity
transitivity
homophily
…
The probability to change a specific tie is modeled by a
multinomial choice probability model which is based
on the comparison of the objective functions
Add a tie? Drop a tie? Do nothing?
How attractive is each outcome relative to the others?
What kind of data can we analyze in RSiena?
Dependent networks:
binary (0-1) values (e.g. friendship, alliance)
directed, undirected, one- or two-mode
at least two observations
Dependent “behavior”
categorical, with few (~2-5 or a bit more) values (attitudes,
behaviors) OR continuous (recent extension)
at least two observations
Individual covariates:
categorical (ethnicity), continuous (salary)
constant or varying (one or more observations necessary)
Dyadic covariates:
basically – explanatory networks
categorical (co-membership), continuous (distance of homes)
constant or varying (one or more observations necessary)
How to apply SAOMs in practice?
Please continue with the next topic.