Abstract
This article discusses the stochastic actor-oriented model for analyzing panel data of networks. The model is defined as a continuous-time Markov chain, observed at two or more discrete time moments. It can be regarded as a generalized linear model with a large amount of missing data. Several estimation methods are discussed. After presenting the model for evolution of networks,
attention is given to coevolution models. These use the same approach of a continuous-time Markov chain observed at a small number of time points, but now with an extended state space. The state space can be, for example, the
combination of a network and nodal variables, or a combination of several networks. This leads to models for the dynamics of multivariate networks. The article emphasizes the approach to modeling and algorithmic issues for
estimation; some attention is given to comparison with other models.
attention is given to coevolution models. These use the same approach of a continuous-time Markov chain observed at a small number of time points, but now with an extended state space. The state space can be, for example, the
combination of a network and nodal variables, or a combination of several networks. This leads to models for the dynamics of multivariate networks. The article emphasizes the approach to modeling and algorithmic issues for
estimation; some attention is given to comparison with other models.
Original language | English |
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Pages (from-to) | 343-363 |
Number of pages | 21 |
Journal | Annual Review of Statistics and its Application |
Volume | 4 |
Issue number | 1 |
DOIs | |
Publication status | Published - Mar-2017 |
Keywords
- inference
- social networks
- statistical modeling
- FRIENDSHIP
- MOMENTS
- DISCRETE EXPONENTIAL-FAMILIES
- RANDOM GRAPH MODELS
- SOCIAL NETWORKS
- GENERALIZED-METHOD
- SPECIAL-ISSUE
- BEHAVIOR
- COEVOLUTION
- SENSITIVITY