Asymptotic Model Selection for Naive Bayesian Networks
We develop a closed form asymptotic formula to compute the marginal likelihood of data given a naive Bayesian network model with two hidden states and binary features. This formula deviates from the standard BIC score. Our work provides a concrete example that the BIC score is generally not valid fo...
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Zusammenfassung: | We develop a closed form asymptotic formula to compute the marginal
likelihood of data given a naive Bayesian network model with two hidden states
and binary features. This formula deviates from the standard BIC score. Our
work provides a concrete example that the BIC score is generally not valid for
statistical models that belong to a stratified exponential family. This stands
in contrast to linear and curved exponential families, where the BIC score has
been proven to provide a correct approximation for the marginal likelihood. |
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DOI: | 10.48550/arxiv.1301.0598 |