Network Models for Social Influence Processes
- 1 June 2001
- journal article
- Published by Cambridge University Press (CUP) in Psychometrika
- Vol. 66 (2) , 161-189
- https://doi.org/10.1007/bf02294834
Abstract
This paper generalizes the p* class of models for social network data to predict individual-level attributes from network ties. The p* model for social networks permits the modeling of social relationships in terms of particular local relational or network configurations. In this paper we present methods for modeling attribute measures in terms of network ties, and so construct p* models for the patterns of social influence within a network. Attribute variables are included in a directed dependence graph and the Hammersley-Clifford theorem is employed to derive probability models whose parameters can be estimated using maximum pseudo-likelihood. The models are compared to existing network effects models. They can be interpreted in terms of public or private social influence phenomena within groups. The models are illustrated by an empirical example involving a training course, with trainees' reactions to aspects of the course found to relate to those of their network partners.Keywords
This publication has 34 references indexed in Scilit:
- Team Mental Model: Construct or Metaphor?Journal of Management, 1994
- Pseudolikelihood Estimation for Social NetworksJournal of the American Statistical Association, 1990
- The value of cognitive foundations for dynamic social theoryThe Journal of Mathematical Sociology, 1989
- A Sociocognitive Network Approach to Organizational AnalysisHuman Relations, 1986
- Markov GraphsJournal of the American Statistical Association, 1986
- An approach for relating social structure to cognitive structureThe Journal of Mathematical Sociology, 1986
- Maximum Likelihood Methods for Linear ModelsSociological Methods & Research, 1982
- An Exponential Family of Probability Distributions for Directed GraphsJournal of the American Statistical Association, 1981
- Individuals and Social StructureSociological Methods & Research, 1979
- The Similarity of Connected ObservationsAmerican Sociological Review, 1963