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Abstract

This chapter discusses data base and methodology used for the analysis of data. The data are collected both from secondary and primary sources. Different statistical and econometric techniques are used to analyze the data

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Correspondence to Jyotish Prakash Basu .

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Basu, J.P. (2021). Data Base and Methodology. In: Climate Change Vulnerability and Communities in Agro-climatic Regions of West Bengal, India. Springer, Cham. https://doi.org/10.1007/978-3-030-50468-7_3

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