This work aims to design a Gibbs sampling algorithm for posterior Bayesian inference of a Dirichlet process mixture model based on Hamming distributed kernels, a probability measure built upon the Hamming distance. This model is employed to provide model-based clustering analysis of categorical data with no natural ordering. The proposed algorithm leverages a split-and-merge Markov chain Monte Carlo technique to address the curse of dimensionality issue and improve the search over the space of random partitions.

Di Marino, S., Galli, F., Argiento, R., Cremaschi, A., Paci, L., Split-and-Merge Sampling Algorithm for Hamming-Mixture Models of Categorical Data, in Statistics for Innovation III, (Genova, 16-18 June 2025), Springer, Cham 2025:<<ITALIAN STATISTICAL SOCIETY SERIES ON ADVANCES IN STATISTICS>>, 147-152. [10.1007/978-3-031-95995-0_25] [https://hdl.handle.net/10807/317849]

Split-and-Merge Sampling Algorithm for Hamming-Mixture Models of Categorical Data

Paci, Lucia
2025

Abstract

This work aims to design a Gibbs sampling algorithm for posterior Bayesian inference of a Dirichlet process mixture model based on Hamming distributed kernels, a probability measure built upon the Hamming distance. This model is employed to provide model-based clustering analysis of categorical data with no natural ordering. The proposed algorithm leverages a split-and-merge Markov chain Monte Carlo technique to address the curse of dimensionality issue and improve the search over the space of random partitions.
2025
Inglese
Statistics for Innovation III
SIS 2025 - Statistics for innovation
Genova
16-giu-2025
18-giu-2025
9783031959943
Springer
Di Marino, S., Galli, F., Argiento, R., Cremaschi, A., Paci, L., Split-and-Merge Sampling Algorithm for Hamming-Mixture Models of Categorical Data, in Statistics for Innovation III, (Genova, 16-18 June 2025), Springer, Cham 2025:<<ITALIAN STATISTICAL SOCIETY SERIES ON ADVANCES IN STATISTICS>>, 147-152. [10.1007/978-3-031-95995-0_25] [https://hdl.handle.net/10807/317849]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/317849
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