Multidimensional network data can have different levels of complexity, as nodes may be characterized by heterogeneous individual-specific features, which may vary across the networks. This article introduces a class of models for multidimensional network data, where different levels of heterogeneity within and between networks can be considered. The proposed framework is developed in the family of latent space models, and it aims to distinguish symmetric relations between the nodes and node-specific features. Model parameters are estimated via a Markov Chain Monte Carlo algorithm. Simulated data and an application to a real example, on fruits import/export data, are used to illustrate and comment on the performance of the proposed models
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
Networks are often characterized by node heterogeneity for which nodes exhibit different degrees of ...
We derive properties of Latent Variable Models for networks, a broad class ofmodels that includes th...
Multidimensional network data can have different levels of complexity, as nodes may be characterized...
Multidimensional network data can have different levels of complexity, as nodes may be characterized...
Network data are any relational data recorded among a group of individuals, the nodes. When multiple...
Network data arises in fields such as neuroimaging, sociology, and medicine, to represent pairwise c...
The ubiquity of relational data has motivated an extensive literature on network analysis, and over ...
Latent space models (LSM) for network data were introduced by Hoff et al. (2002) under the basic ass...
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
<p>Latent space models (LSM) for network data rely on the basic assumption that each node of the net...
Latent space models (LSM) for network data were introduced by Hoff et al. (2002a) under the basic as...
Latent space models (LSM) for network data were introduced by Holf et al. (2002) under the basic ass...
<p>Dynamic networks are used in a variety of fields to represent the structure and evolution of the ...
We present a selective review on probabilistic modeling of heterogeneity in random graphs. We focus ...
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
Networks are often characterized by node heterogeneity for which nodes exhibit different degrees of ...
We derive properties of Latent Variable Models for networks, a broad class ofmodels that includes th...
Multidimensional network data can have different levels of complexity, as nodes may be characterized...
Multidimensional network data can have different levels of complexity, as nodes may be characterized...
Network data are any relational data recorded among a group of individuals, the nodes. When multiple...
Network data arises in fields such as neuroimaging, sociology, and medicine, to represent pairwise c...
The ubiquity of relational data has motivated an extensive literature on network analysis, and over ...
Latent space models (LSM) for network data were introduced by Hoff et al. (2002) under the basic ass...
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
<p>Latent space models (LSM) for network data rely on the basic assumption that each node of the net...
Latent space models (LSM) for network data were introduced by Hoff et al. (2002a) under the basic as...
Latent space models (LSM) for network data were introduced by Holf et al. (2002) under the basic ass...
<p>Dynamic networks are used in a variety of fields to represent the structure and evolution of the ...
We present a selective review on probabilistic modeling of heterogeneity in random graphs. We focus ...
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
Networks are often characterized by node heterogeneity for which nodes exhibit different degrees of ...
We derive properties of Latent Variable Models for networks, a broad class ofmodels that includes th...