Bayesian Discovery of Multiple Bayesian Networks via Transfer Learning

international conference on data mining(2013)

引用 27|浏览41
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摘要
Bayesian network structure learning algorithms with limited data are being used in domains such as systems biology and neuroscience to gain insight into the underlying processes that produce observed data. Learning reliable networks from limited data is difficult, therefore transfer learning can improve the robustness of learned networks by leveraging data from related tasks. Existing transfer learning algorithms for Bayesian network structure learning give a single maximum a posteriori estimate of network models. Yet, many other models may be equally likely, and so a more informative result is provided by Bayesian structure discovery. Bayesian structure discovery algorithms estimate posterior probabilities of structural features, such as edges. We present transfer learning for Bayesian structure discovery which allows us to explore the shared and unique structural features among related tasks. Efficient computation requires that our transfer learning objective factors into local calculations, which we prove is given by a broad class of transfer biases. Theoretically, we show the efficiency of our approach. Empirically, we show that compared to single task learning, transfer learning is better able to positively identify true edges. We apply the method to whole-brain neuroimaging data.
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关键词
belief networks,data mining,learning (artificial intelligence),maximum likelihood estimation,probability,Bayesian network discovery,Bayesian network structure learning algorithms,Bayesian structure discovery algorithms,limited data,maximum a posteriori estimate,multiple Bayesian networks,network models,neuroscience,posterior probability estimation,single maximum a posteriori estimation,single task learning,system biology,transfer biases,transfer learning algorithms,true edge identification,whole-brain neuroimaging data method
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