An algorithmic look at financial volatility (Q1712041)
From MaRDI portal
| This is the item page for this Wikibase entity, intended for internal use and editing purposes. Please use this page instead for the normal view: An algorithmic look at financial volatility |
scientific article; zbMATH DE number 7003836
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | An algorithmic look at financial volatility |
scientific article; zbMATH DE number 7003836 |
Statements
An algorithmic look at financial volatility (English)
0 references
21 January 2019
0 references
Summary: In this paper, we attempt to give an algorithmic explanation to volatility clustering, one of the most exploited stylized facts in finance. Our analysis with daily data from five exchanges shows that financial volatilities follow Levin's universal distribution \textit{W. Kirchherr} et al. [Math. Intell. 19, No. 4, 7--15 (1997; Zbl 0934.01007)] once transformed into equally proportional binary strings. Frequency ranking of binary trading weeks coincides with that of their Kolmogorov complexity estimated by the second author and \textit{H. Zenil} [Appl. Math. Comput. 219, No. 1, 63--77 (2012; Zbl 1448.68250)]. According to Levin's universal distribution, large (resp. small) volatilities are more likely to be followed by large (resp. small) ones since simple trading weeks such as ``00000'' or ``11111'' are much more frequently observed than complex ones such as ``10100'' or ``01011''. Thus, volatility clusters may not be attributed to behavioral or micro-structural assumptions but to the complexity discrepancy between finite strings. This property of financial data could be at the origin of volatility autocorrelation, though autocorrelated volatilities simulated from Generalized Auto-Regressive Conditional Heteroskedacity (hereafter GARCH) cannot be transformed into universally distributed binary weeks.
0 references
Kolmogorov complexity
0 references
volatility clustering
0 references
universal distribution
0 references
0 references