Bayesian Modeling with Spatial Curvature Processes

Fri, 16 September, 2022 11:00am - 12:00pm

Speaker: Aritra Halder, Drexel University

Abstract: Spatial process models are widely used for modeling point-referenced variables arising from diverse scientific domains. Analyzing the resulting random surface provides deeper insights into the nature of latent dependence within the studied response. We develop Bayesian modeling and inference for rapid changes on the response surface to assess directional curvature along a given trajectory. Such trajectories or curves of rapid change, often referred to as wombling boundaries, occur in geographic space in the form of rivers in a flood plain, roads, mountains or plateaus or other topographic features leading to high gradients on the response surface. We demonstrate fully model based Bayesian inference on directional curvature processes to analyze differential behavior in responses along wombling boundaries. We illustrate our methodology with a number of simulated experiments followed by multiple applications featuring the Meuse river data; temperature data from the Northeastern United States; and Boston Housing data.

Where
Media and Public Affairs Building 805 21st Street, NW Washington DC 20052
Room: 309

Admission
Open to everyone.

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