Research Topic
Bayesian Methods and Mixture Models
This cluster of papers focuses on the application of mixture models, particularly Gaussian finite mixture models and Dirichlet process mixture models, for model-based clustering, discriminant analysis, density estimation, and unsupervised learning. It explores various inference methods such as Bayesian inference, variational inference, and Markov Chain Monte Carlo for estimating parameters in mixture models. The cluster also delves into the challenges of identifiability, variable selection, and dealing with label switching in the context of mixture models.
Works
56,437
Citations
1,053,014
Domain
Physical Sciences
Field
Computer Science
Subfield
Artificial Intelligence
OpenAlex ID
T11901
Taxonomy Context
Physical Sciences / Computer Science / Artificial Intelligence
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