Distributions over random boolean vectors. Useful in computer science and piano rolls. Not quite the same as categorical distributions, although those can be written as distributions over boolean vectors. In a multi-class classification case, each realisation has only one class; in an \(n\)-class rv, there are \(n\) possible outcomes. In a multivariate Bernoulli distribution, there are \(2^n\) possible outcomes.
Matrix models
TBC.
See, e.g. Lumbreras, Filstroff, and Févotte (2020)
References
Broderick, Pitman, and Jordan. 2013.
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Dai, Ding, and Wahba. 2013.
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Lumbreras, Filstroff, and Févotte. 2020.
“Bayesian Mean-Parameterized Nonnegative Binary Matrix Factorization.” Data Mining and Knowledge Discovery.
Miettinen, and Neumann. 2020.
“Recent Developments in Boolean Matrix Factorization.” In
Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence.
Reuter, Vo, Vo, et al. 2014.
“The Labeled Multi-Bernoulli Filter.” IEEE Transactions on Signal Processing.
Rukat, Holmes, Titsias, et al. 2017.
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Vo, Ba-Tuong, and Vo. 2013.
“Labeled Random Finite Sets and Multi-Object Conjugate Priors.” IEEE Transactions on Signal Processing.
Vo, Ba-Ngu, Vo, and Phung. 2014.
“Labeled Random Finite Sets and the Bayes Multi-Target Tracking Filter.” IEEE Transactions on Signal Processing.
Wang, and Yin. 2020.
“Relaxed Multivariate Bernoulli Distribution and Its Applications to Deep Generative Models.” In
Proceedings of the 36th Conference on Uncertainty in Artificial Intelligence (UAI).
Zhang, and Paisley. 2019.
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Zhou, Hannah, Dunson, et al. 2012.
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