Detecting spatial clusters via a mixture of Dirichlet processes (Q1733132)
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scientific article; zbMATH DE number 7039886
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Detecting spatial clusters via a mixture of Dirichlet processes |
scientific article; zbMATH DE number 7039886 |
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Detecting spatial clusters via a mixture of Dirichlet processes (English)
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21 March 2019
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Summary: We proposed an approach that has the ability to detect spatial clusters with skewed or irregular distributions. A mixture of Dirichlet processes (DP) was used to describe spatial distribution patterns. The effects of different batches of data collection efforts were also modeled with a Dirichlet process. To cluster spatial foci, a birth-death process was applied due to its advantage of easier jumping between different numbers of clusters. Inferences of parameters including clustering were drawn under a Bayesian framework. Simulations were used to demonstrate and assess the method. We applied the method to an fMRI meta-analysis dataset to identify clusters of foci corresponding to different emotions.
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