A Deep Learning Analysis of Climate Change, Innovation, and Uncertainty

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Date

19 octobre 2023

Type de document
Périmètre
Identifiant
  • 2310.13200
Collection

arXiv

Organisation

Cornell University



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Michael Barnett et al., « A Deep Learning Analysis of Climate Change, Innovation, and Uncertainty », arXiv - économie


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We study the implications of model uncertainty in a climate-economics framework with three types of capital: "dirty" capital that produces carbon emissions when used for production, "clean" capital that generates no emissions but is initially less productive than dirty capital, and knowledge capital that increases with R\&D investment and leads to technological innovation in green sector productivity. To solve our high-dimensional, non-linear model framework we implement a neural-network-based global solution method. We show there are first-order impacts of model uncertainty on optimal decisions and social valuations in our integrated climate-economic-innovation framework. Accounting for interconnected uncertainty over climate dynamics, economic damages from climate change, and the arrival of a green technological change leads to substantial adjustments to investment in the different capital types in anticipation of technological change and the revelation of climate damage severity.

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