The Economy's Information Processing Cycle, Parallels to AI Model Limitations and Scaling Laws, and Policy Implications

12 Pages Posted: 6 May 2025 Last revised: 25 Apr 2025

See all articles by Edgar Parker

Edgar Parker

New York Life Insurance Company

Date Written: April 15, 2025

Abstract

Building upon prior work this paper examines the business cycle from the perspective of the economy's ability to process information. Specifically, the ratio of information to be processed divided by the economy's capacity to process that information (R/C) is empirically derived and studied. This ratio undergoes an intuitive evolution over business cycles providing a new method of understanding the economy's present and future states. Additionally, insightful parallels to recently derived computational limits and scaling laws from large neural network models are presented. Finally new warning signs of the end of the business cycle and new sources of economic shocks are explained. This perspective offers new tools for monitoring the health of the economy and a new means for corrective policy interventions by fiscal and monetary authorities.

Keywords: Business Cycle, Yield Curve, Information Processing Cycle, Artificial Intelligence, Entropic Yield Curve, Scaling Laws, Bear Market, Neural Networks

JEL Classification: C6, D8, G14, G10, O32, E32, E3, E43, E44, E52, O38

Suggested Citation

Parker, Edgar, The Economy's Information Processing Cycle, Parallels to AI Model Limitations and Scaling Laws, and Policy Implications (April 15, 2025). Available at SSRN: https://ssrn.com/abstract=5217645 or http://dx.doi.org/10.2139/ssrn.5217645

Edgar Parker (Contact Author)

New York Life Insurance Company ( email )

51 Madison Avenue
New York, NY 10010
United States

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