Infinite-Variance Error Structure in Finance and Economics

Volume: 10 Number: 1 April 16, 2018
EN

Infinite-Variance Error Structure in Finance and Economics

Abstract

Many macroeconomic and financial data exhibit large outliers and high volatility so that their returns are usually modeled to follow an infinite-variance stable process. Extreme behaviors in such data tend to exist especially for emerging markets due to frequent existence of high economic turmoil. A relatively new area of research studies that model the financial returns as infinite-variance stable errors exists for emerging markets as well as for industrialized countries. This study aims to briefly introduce the reader the concept of infinite-variance stable distributions, discuss some existing studies on unit root and co-integration tests that assume infinite-variance stable error structure, and then to point out the potential lines of research while showing the significance of this relatively new concept.

Keywords

References

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  6. Caner, M. (1998). Tests for cointegration with infinite variance errors. Journal of Econometrics, 86:155–175.
  7. Cavaliere, G., Georgiev I., and Taylor, A. M. R. (2016). Unit root inference for non-stationary linear processes driven by infinite variance innovations. Econometric Theory, 1–47.
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Details

Primary Language

English

Subjects

-

Journal Section

-

Authors

Publication Date

April 16, 2018

Submission Date

April 17, 2017

Acceptance Date

February 10, 2018

Published in Issue

Year 2018 Volume: 10 Number: 1

APA
Serttaş, F. Ö. (2018). Infinite-Variance Error Structure in Finance and Economics. International Econometric Review, 10(1), 14-23. https://doi.org/10.33818/ier.306676
AMA
1.Serttaş FÖ. Infinite-Variance Error Structure in Finance and Economics. IER. 2018;10(1):14-23. doi:10.33818/ier.306676
Chicago
Serttaş, Fatma Özgü. 2018. “Infinite-Variance Error Structure in Finance and Economics”. International Econometric Review 10 (1): 14-23. https://doi.org/10.33818/ier.306676.
EndNote
Serttaş FÖ (April 1, 2018) Infinite-Variance Error Structure in Finance and Economics. International Econometric Review 10 1 14–23.
IEEE
[1]F. Ö. Serttaş, “Infinite-Variance Error Structure in Finance and Economics”, IER, vol. 10, no. 1, pp. 14–23, Apr. 2018, doi: 10.33818/ier.306676.
ISNAD
Serttaş, Fatma Özgü. “Infinite-Variance Error Structure in Finance and Economics”. International Econometric Review 10/1 (April 1, 2018): 14-23. https://doi.org/10.33818/ier.306676.
JAMA
1.Serttaş FÖ. Infinite-Variance Error Structure in Finance and Economics. IER. 2018;10:14–23.
MLA
Serttaş, Fatma Özgü. “Infinite-Variance Error Structure in Finance and Economics”. International Econometric Review, vol. 10, no. 1, Apr. 2018, pp. 14-23, doi:10.33818/ier.306676.
Vancouver
1.Fatma Özgü Serttaş. Infinite-Variance Error Structure in Finance and Economics. IER. 2018 Apr. 1;10(1):14-23. doi:10.33818/ier.306676