On Bayesian "central clustering": Application to landscape classification of Western Ghats
Sabyasachi Mukhopadhyay, Sourabh Bhattacharya, Kajal Dihidar

TL;DR
This paper introduces a Bayesian methodology for landscape classification in the Western Ghats, addressing nonuniqueness and uncertainty in clustering massive vegetation data using advanced nonparametric Bayesian techniques.
Contribution
It proposes a new approach to quantify uncertainty in cluster analysis and introduces a simplified metric for clustering comparison within a Bayesian framework.
Findings
Efficient Bayesian method for large-scale clustering.
Quantification of uncertainty in landscape classification.
Application to Western Ghats vegetation data.
Abstract
Landscape classification of the well-known biodiversity hotspot, Western Ghats (mountains), on the west coast of India, is an important part of a world-wide program of monitoring biodiversity. To this end, a massive vegetation data set, consisting of 51,834 4-variate observations has been clustered into different landscapes by Nagendra and Gadgil [Current Sci. 75 (1998) 264--271]. But a study of such importance may be affected by nonuniqueness of cluster analysis and the lack of methods for quantifying uncertainty of the clusterings obtained. Motivated by this applied problem of much scientific importance, we propose a new methodology for obtaining the global, as well as the local modes of the posterior distribution of clustering, along with the desired credible and "highest posterior density" regions in a nonparametric Bayesian framework. To meet the need of an appropriate metric for…
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