GIBBS SAMPLING FOR N DISCRETE VARIABLES IN A N-SPACE

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Sergio RUGGIERI
Sergio RUGGIERI el 2 de Mayo de 2024
Comentada: Sergio RUGGIERI el 16 de Mayo de 2024
Dear all,
I would like to ask how can be perfomed a Gibbs sampling for a space constituted by n discrete distributions. As an example, I provide 5 distributions with different data, different size, and different p(data), which represent the posterior probability:
- data1 = [50 70 100 130 170 230 300 400]; p(data1) = [0.20 0.05 0.05 0.10 0.09 0.01 0.28 0.22];
- data2 = [1 2 3 4 5 6 7 8]; p(data2) = [0.05 0.1 0.25 0.1 0.05 0.05 0.2 0.2];
- data3 = [1 2 3 4]; p(data3) = [0.3 0.5 0.1 0.1];
- data4 = [1 2]; p(data4) = [0.85 0.15];
- data5 = [1 2]; p(data5) = [0.9 0.1];
  3 comentarios
Sergio RUGGIERI
Sergio RUGGIERI el 3 de Mayo de 2024
Dear Star Strider, thanks for your answer.
Unfortunately, I did not find any example about this sampling technique with discrete distributions, and even less if in the space I consider also continous distributions.
Star Strider
Star Strider el 3 de Mayo de 2024
My pleasure. I did an Interweb search, and unfortunately found nothing with respect to your question, although you may be able to find something since you know what you’re looking for. What I posted was as close as I can get. You may have to write your own code for this project.

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Vinayak
Vinayak el 16 de Mayo de 2024
Hi Sergio,
It seems like you want to distribute 'x' data points according to their probabilities into 10,000 samples. This process should be repeated for all 'n' distributions, generating a sample object where each object includes all 'n' data points.
You may use the randsample” function, which takes data, sample size, and probability as inputs to output the sample dataset with the probabilities provided. This function can be used for all independent 'n' distributions separately.
For the example data you provided, the following code should work:
% Your declaration of data as matrices.
samples = zeros(10000, 5);
for i = 1:10000
samples(i, 1) = randsample(data1, 1, true, pdata1);
samples(i, 2) = randsample(data2, 1, true, pdata2);
samples(i, 3) = randsample(data3, 1, true, pdata3);
samples(i, 4) = randsample(data4, 1, true, pdata4);
samples(i, 5) = randsample(data5, 1, true, pdata5);
end
If you want to learn more about the "randsample" function, refer to this documentation link - https://www.mathworks.com/help/stats/randsample.html
I hope this helps!
  1 comentario
Sergio RUGGIERI
Sergio RUGGIERI el 16 de Mayo de 2024
Dear Vinayak,
thanks for your answer. This is the unique way I found to have numerically correct results, but I did not take it into account because in this way, the information about the space (i.e., the Joint PMF) should be lost.

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