Directional relational event data, such as email data, often contain unicast
messages (i.e., messages of one sender towards one receiver) and multicast
messages (i.e., messages of one sender towards multiple receivers). The Enron
email data that is the focus in this paper consists of 31% multicast messages.
Multicast messages contain important information about the roles of actors in
the network, which is needed for better understanding social interaction
dynamics. In this paper a multiplicative latent factor model is proposed to
analyze such relational data. For a given message, all potential receiver
actors are placed on a suitability scale, and the actors are included in the
receiver set whose suitability score exceeds a threshold value. Unobserved
heterogeneity in the social interaction behavior is captured using a
multiplicative latent factor structure with latent variables for actors (which
differ for actors as senders and receivers) and latent variables for individual
messages. A Bayesian computational algorithm, which relies on Gibbs sampling,
is proposed for model fitting. Model assessment is done using posterior
predictive checks. Based on our analyses of the Enron email data, a mc-amen
model with a 2 dimensional latent variable can accurately capture the empirical
distribution of the cardinality of the receiver set and the composition of the
receiver sets for commonly observed messages. Moreover the results show that
actors have a comparable (but not identical) role as a sender and as a receiver
in the network.Comment: 56 pages, 41 figure