Publication Date:
2004
abstract:
We present a methodology for Bayesian model choice and averaging in Gaussian directed acyclic graphs (dags). The dimension–changing move in- volves adding or dropping a (directed) edge from the graph. The methodology employs the results in Geiger and Heckerman and searches directly in the space of all dags. Model determination is carried out by implementing a reversible jump Markov Chain Monte Carlo sampler. To achieve this aim we rely on the concept of adjacency matrices, which provides a relatively inexpensive check for acyclicity. The performance of our procedure is illustrated by means of two simulated datasets, as well as one real dataset.
Iris type:
1.1 Articolo in rivista
Keywords:
STATISTICAL MODELS; MARKOV CHAIN MONTE CARLO MODELS
List of contributors:
Giudici, PAOLO STEFANO; Fronk, E.
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