Dynamic Interbank Network Analysis Using Latent Space Models
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| Publication date | 14-09-2017 |
| Series | Tinbergen Institute Discussion Paper, 2017-101/II |
| Number of pages | 36 |
| Publisher | Amsterdam: Tinbergen Institute |
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| Abstract |
Longitudinal network data are increasingly available, allowing researchers to model how networks evolve over time and to make inference on their dependence structure. In this paper, a dynamic latent space approach is used to model directed networks of monthly interbank exposures. In this model, each node has an unobserved temporal trajectory in a low-dimensional Euclidean space. Model parameters and latent banks' positions are estimated within a Bayesian framework.
We apply this methodology to analyze two different datasets: the unsecured and the secured (repo) interbank lending networks. We show that the model that incorporates a latent space performs much better than the model in which the probability of a tie depends only on observed characteristics; the latent space model is able to capture some features of the dyadic data such as transitivity that the model without a latent space is not able to. |
| Document type | Working paper |
| Language | English |
| Published at | https://doi.org/10.2139/ssrn.3059618 |
| Published at | http://www.tinbergen.nl/discussionpaper/?paper=2838 |
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