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Comparison between Suitable Priors for Additive Bayesian Networks
- Source :
- Springer Proceedings in Mathematics & Statistics ISBN: 9783030306106
- Publication Year :
- 2018
-
Abstract
- Additive Bayesian networks are types of graphical models that extend the usual Bayesian generalized linear model to multiple dependent variables through the factorisation of the joint probability distribution of the underlying variables. When fitting an ABN model, the choice of the prior of the parameters is of crucial importance. If an inadequate prior - like a too weakly informative one - is used, data separation and data sparsity lead to issues in the model selection process. In this work a simulation study between two weakly and a strongly informative priors is presented. As weakly informative prior we use a zero mean Gaussian prior with a large variance, currently implemented in the R-package abn. The second prior belongs to the Student's t-distribution, specifically designed for logistic regressions and, finally, the strongly informative prior is again Gaussian with mean equal to true parameter value and a small variance. We compare the impact of these priors on the accuracy of the learned additive Bayesian network in function of different parameters. We create a simulation study to illustrate Lindley's paradox based on the prior choice. We then conclude by highlighting the good performance of the informative Student's t-prior and the limited impact of the Lindley's paradox. Finally, suggestions for further developments are provided.<br />8 pages, 4 figures
- Subjects :
- FOS: Computer and information sciences
Variables
Computer science
Binomial regression
Model selection
media_common.quotation_subject
Linear model
Bayesian network
340 Law
Machine Learning (stat.ML)
610 Medicine & health
Statistics - Applications
Methodology (stat.ME)
10123 Institute of Mathematics
510 Mathematics
Joint probability distribution
Statistics - Machine Learning
10231 Institute for Computational Science
Statistics
Prior probability
Applications (stat.AP)
Graphical model
Statistics - Methodology
media_common
2600 General Mathematics
Subjects
Details
- Language :
- English
- ISBN :
- 978-3-030-30610-6
- ISBNs :
- 9783030306106
- Database :
- OpenAIRE
- Journal :
- Springer Proceedings in Mathematics & Statistics ISBN: 9783030306106
- Accession number :
- edsair.doi.dedup.....0f6ac5354b21038738907abd674c6c9d