Sudipto Banerjee, Ph.D.

Affiliations: 
2000 University of Connecticut, Storrs, CT, United States 
Area:
Statistics
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"Sudipto Banerjee"

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Alan E. Gelfand grad student 2000 University of Connecticut
 (Multivariate spatial modelling in a Bayesian setting.)
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Publications

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Shirota S, Gelfand AE, Banerjee S. (2019) Spatial Joint Species Distribution Modeling using Dirichlet Processes. Statistica Sinica. 29: 1127-1154
Datta A, Zou H, Banerjee S. (2019) Bayesian High-Dimensional Regression for Change Point Analysis. Statistics and Its Interface. 12: 253-264
Finley AO, Datta A, Cook BC, et al. (2019) Efficient algorithms for Bayesian Nearest Neighbor Gaussian Processes. Journal of Computational and Graphical Statistics : a Joint Publication of American Statistical Association, Institute of Mathematical Statistics, Interface Foundation of North America. 28: 401-414
Guhaniyogi R, Banerjee S. (2019) Multivariate spatial meta kriging. Statistics & Probability Letters. 144: 3-8
Guhaniyogi R, Banerjee S. (2018) Meta-Kriging: Scalable Bayesian Modeling and Inference for Massive Spatial Datasets. Technometrics : a Journal of Statistics For the Physical, Chemical, and Engineering Sciences. 60: 430-444
Gelfand AE, Banerjee S. (2017) Bayesian Modeling and Analysis of Geostatistical Data. Annual Review of Statistics and Its Application. 4: 245-266
Datta A, Banerjee S, Finley AO, et al. (2016) Hierarchical Nearest-Neighbor Gaussian Process Models for Large Geostatistical Datasets. Journal of the American Statistical Association. 111: 800-812
Datta A, Banerjee S, Finley AO, et al. (2016) On nearest-neighbor Gaussian process models for massive spatial data. Wiley Interdisciplinary Reviews. Computational Statistics. 8: 162-171
Datta A, Banerjee S, Finley AO, et al. (2016) NONSEPARABLE DYNAMIC NEAREST NEIGHBOR GAUSSIAN PROCESS MODELS FOR LARGE SPATIO-TEMPORAL DATA WITH AN APPLICATION TO PARTICULATE MATTER ANALYSIS. The Annals of Applied Statistics. 10: 1286-1316
Foster JR, Finley AO, D'amato AW, et al. (2015) Predicting tree biomass growth in the temperate-boreal ecotone: is tree size, age, competition or climate response most important? Global Change Biology
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