We study XML partitioning via unsupervised topic modeling. A new mixed-membership Bayesian generative model of the latent topics in XML corpora is proposed. Approximate posterior inference and parameter estimation are derived for the devised XML topic model and implemented by a Gibbs sampling algorithm. This is used to infer the topic distributions of the input XML documents. In turn, such distributions are separated to divide the whole XML corpus by latent-topic similarity. Experiments on real-world XML corpora reveal an overcoming effectiveness with respect to several state-of-the-art competitors.
Mining Clusters in XML Corpora based on Bayesian Generative Topic Modeling
Gianni Costa;Riccardo Ortale
2015
Abstract
We study XML partitioning via unsupervised topic modeling. A new mixed-membership Bayesian generative model of the latent topics in XML corpora is proposed. Approximate posterior inference and parameter estimation are derived for the devised XML topic model and implemented by a Gibbs sampling algorithm. This is used to infer the topic distributions of the input XML documents. In turn, such distributions are separated to divide the whole XML corpus by latent-topic similarity. Experiments on real-world XML corpora reveal an overcoming effectiveness with respect to several state-of-the-art competitors.File in questo prodotto:
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