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Generalized Compounding and Growth Optimal Portfolios Reconciling Kelly and Samuelson

Peter Carr and Umberto Cherubini
The Journal of Derivatives Winter 2022, 30 (2) 74-93; DOI: https://doi.org/10.3905/jod.2022.30.2.074
Peter Carr
was chair of the Department of Finance and Risk Engineering in the Tandon School of Engineering at New York University in Brooklyn, NY.
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Umberto Cherubini
is a professor in the Department of Economics at the University of Bologna in Bologna, Italy
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Abstract

We generalize the Kelly criterion and the growth-optimal portfolio (GOP) beyond log-wealth maximization. We show that time-change models require compounding algebras and GOPs that do not coincide with maximization of the expected log of wealth. In the variance gamma (VG) and the normal inverse Gaussian (NIG) models the generalized GOP concepts mimic well-known utility models, namely power utility and the mean variance approach, with a parameter that, in both cases, is the variance of the stochastic clock. When the variance of the stochastic clock goes to zero, the model retrieves the standard Kelly criterion and GOP is the expected logarithm of wealth maximization.

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The Journal of Derivatives: 30 (2)
The Journal of Derivatives
Vol. 30, Issue 2
Winter 2022
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Generalized Compounding and Growth Optimal Portfolios Reconciling Kelly and Samuelson
Peter Carr, Umberto Cherubini
The Journal of Derivatives Nov 2022, 30 (2) 74-93; DOI: 10.3905/jod.2022.30.2.074

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Generalized Compounding and Growth Optimal Portfolios Reconciling Kelly and Samuelson
Peter Carr, Umberto Cherubini
The Journal of Derivatives Nov 2022, 30 (2) 74-93; DOI: 10.3905/jod.2022.30.2.074
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  • Article
    • Abstract
    • THE DEBATE ON LONG-TERM INVESTMENT
    • FINANCIAL COMPOUNDING ALGEBRAS
    • COMPOUNDING AND MARKET DYNAMICS
    • TIME CHANGE AND GENERALIZED GOP
    • CONCLUSION
    • ACKNOWLEDGMENTS
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