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Mix-nets: Factored Mixtures of Gaussians in Bayesian Networks with Mixed Continuous and Discrete Variables
S. Davies and A. Moore
tech. report CMU-CS-00-119, Computer Science Department, Carnegie Mellon University, April, 2000.

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Notes

Associated lab/group: Auton Lab
Associated project: Auton Project


Text Reference

S. Davies and A. Moore, Mix-nets: Factored Mixtures of Gaussians in Bayesian Networks with Mixed Continuous and Discrete Variables, tech. report CMU-CS-00-119, Computer Science Department, Carnegie Mellon University, April, 2000.


BibTeX Reference

@techreport{Davies_2000_3777,
   author = "Scott Davies and Andrew Moore",
   title = "Mix-nets: Factored Mixtures of Gaussians in Bayesian Networks with Mixed Continuous and Discrete Variables",
   institution = "Computer Science Department, Carnegie Mellon University",
   month = "April",
   year = "2000",
   number = "CMU-CS-00-119",
   address = "Pittsburgh, PA"
}


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