Evolutionary nonstationarity of economic cycles

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Abstract

In the article, the nonstationarity of economic cycles is studied using their one-dimensional model of the “investment → income” type. The model interprets the cycle as random oscillations of an elastic system induced by exogenous (investment fluctuations) and endogenous (system properties) causes. This approach provided a quantitative description of economic cycles through the parameters of the elastic system — its natural frequency and damping factor. The nonstationarity of cycles is analyzed by the time trend of their natural frequencies. Such an analysis was performed for the period 1960–2020 by the amplitude spectra of US GDP deviations. Its results showed a simultaneous and steady decrease in the duration of the three considered cycles. This means that the results of observing these cycles do not have the ergodic property. Therefore, the adaptation of the cycle model to empirical data is possible for a time interval in which it can be considered pseudo-stationary.

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About the authors

V. A. Karmalita

Private consultant

Author for correspondence.
Email: karmalita@videotron.ca
Canada

G. S. Khanian

CIAM named after P. I. Baranov

Email: khanian@mail.ru

Senior researcher

Russian Federation, Moscow

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Supplementary files

Supplementary Files
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2. Fig. 1. Dependence of Kσ on h

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3. Fig. 2. Evolutionary growth of WI (per capita)

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4. Fig. 3. Amplitude frequency characteristics of the linear elastic system

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5. Fig. 4. Amplitude spectrum of white noise

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6. Fig. 5. The frequency characteristic of the estimator

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7. Fig. 6. Diagram of estimating GDP

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8. Fig. 7. Real GDP estimates of the US economy

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9. Fig. 8. Deviations of GDP estimates

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10. Fig. 9. The spectrum of GDP deviations

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11. Fig. 10. Trends of natural frequencies of economic cycles

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