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By Dey D. K., Kuo L., Sahu S. K.
This paper describes a Bayesian method of mix modelling and a mode according to predictive distribution to figure out the variety of parts within the combos. The implementation is finished by utilizing the Gibbs sampler. the strategy is defined in the course of the combinations of ordinary and gamma distributions. research is gifted in a single simulated and one actual facts instance. The Bayesian effects are then in comparison with the chance method for the 2 examples.
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A Bayesian predictive approach to determining the number of components in a mixture distribution by Dey D. K., Kuo L., Sahu S. K.