Revisiting Cont's Stylized Facts for Modern Stock Markets
Ethan Ratliff-Crain, Colin M. Van Oort, James Bagrow, Matthew T. K., Koehler, Brian F. Tivnan

TL;DR
This study tests Rama Cont's 11 stylized facts of financial returns against modern intraday stock data from the Dow 30, confirming 8 facts and challenging 3, thus updating their relevance in contemporary markets.
Contribution
It provides the first systematic validation of Cont's stylized facts on modern stock market data, highlighting which properties still hold today.
Findings
8 of Cont's 11 stylized facts are supported by modern data
3 of the original stylized facts are not supported in current markets
Study uses consistent, authoritative intraday data from 2018-2019
Abstract
In 2001, Rama Cont introduced a now-widely used set of 'stylized facts' to synthesize empirical studies of financial price changes (returns), resulting in 11 statistical properties common to a large set of assets and markets. These properties are viewed as constraints a model should be able to reproduce in order to accurately represent returns in a market. It has not been established whether the characteristics Cont noted in 2001 still hold for modern markets following significant regulatory shifts and technological advances. It is also not clear whether a given time series of financial returns for an asset will express all 11 stylized facts. We test both of these propositions by attempting to replicate each of Cont's 11 stylized facts for intraday returns of the individual stocks in the Dow 30, using the same authoritative data as that used by the U.S. regulator from October 2018 -…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Stock Market Forecasting Methods · Financial Markets and Investment Strategies
MethodsSparse Evolutionary Training
