Please use this identifier to cite or link to this item: http://hdl.handle.net/2080/4901
Title: Bayesian Approach for Midseason Crop Yield Forecast and Crop Insurance Premium Calculation
Authors: Murmu, Upelina Bina
Mahadik, Dushyant Ashok
Keywords: Bayesian analysis
Kernel
Nonparametric
Remote sensing
Risk assessment
Issue Date: Dec-2024
Citation: India Finance Conference (IFC), IIM Raipur, 19-21 December 2024
Abstract: Both the indemnity and index-based have limitations. In addition, the lack of quality, consistent and timely data hinders the smooth functioning of risk assessment and claim settlement, which has an impact on the accurate pricing of insurance premia and farmers' satisfaction. Considering the growing challenges of climate change and the increasing vulnerability of farmers, we aim to develop a risk assessment model. Our work takes a digital data approach we integrate high-quality and consistent remote sensing data in the yield estimation. We further illustrate to forecast through Bayesian linear regression capturing the relation between the yield and regressors. Our findings suggest the use of the Bayesian approach over the traditional approach for crop insurance pricing. The proposed approach has the ability to capture the uncertainty in both the data and model parameters.
Description: Copyright belongs to the proceeding publisher.
URI: http://hdl.handle.net/2080/4901
Appears in Collections:Conference Papers

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