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 Bayesian Inference




Bayesian Structure Learning by Recursive Bootstrap

Neural Information Processing Systems

We also provide an algorithm for sampling CPDAGs efficiently from their posterior given the learned tree. That is, not from the full posterior, but from a reduced space of CPDAGs encoded in the learned tree.



Nonparametric Bayesian Lomax delegate racing for survival analysis with competing risks

Neural Information Processing Systems

Apart from modeling the time to event, in the presence of competing risks, it is also important to model the event type, or under which risk the event is likely to occur first. Though one can censor subjects with an occurrence of the event under a competing risk other than the risk of special interest, so that every survival model that can handle censoring is able to model competing risks, it is problematic to violate the principle of non-informative censoring [18, 19].




A Bayesian Nonparametric View on Count-Min Sketch

Neural Information Processing Systems

Using simulated data and text data, we investigate the properties of these estimators. Lastly, we also study a modified problem in which the observation stream consists of collections of tokens (i.e., documents) arising from a random measure drawn from a stable beta process,