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Bayesian kernel mixtures for counts

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Presentation on theme: "Bayesian kernel mixtures for counts"— Presentation transcript:

1 Bayesian kernel mixtures for counts
Antonio Canale & David B. Dunson Presented by Yingjian Wang Apr. 29, 2011

2 Outline Existed models for counts and their drawbacks;
Univariate rounded kernel mixture priors; Simulation of the univariate model; Multivariate rounded kernel mixture priors; Experiment with the multivariate model;

3 Modeling of counts Mixture of Poissons: a) Not a nonparametric way;
b) Only accounts for cases where the variance is greater than the mean;

4 Modeling of counts (2) DP mixture of Poissons/Multinomial kernel:
a) It is non-parametric but, still has the problem of not suitable for under-disperse cases; b) If with multinomial kernel, the dimension of the probability vector is equal to the number of support points, causes overfitting.

5 Modeling of counts (3) DP with Poisson base measure:
a) There is no allowance for smooth deviations from the base; Motivation: The continuous densities can be accurately approximated using Gaussian kernels. Idea: Use kernels induced through rounding of continuous kernels.

6 Univariate rounded kernel

7 Univariate rounded kernel (2)
Existence: Consistence: (the mapping g(.) maintains KL neighborhoods.)

8 Examples of rounded kernels
Rounded Gaussian kernel: Other kernels: log-normal, gamma, Weibull densities.

9 Eliciting the thresholds

10 A Gibbs sampling algorithm

11 Experiment with univariate model
Two scenarios: Two standards: Results:

12 Extension to multivariate model

13 Telecommunication data
Data from 2050 SIM cards, with multivariate: yi=[yi1, yi2, yi3, yi4, yi5], Compare the RMG with generalized additive model (GAM):


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