Are there Dragon Kings in the Stock Market?
Jiong Liu, M. Dashti Moghaddam, R. A. Serota

TL;DR
This study analyzes the distribution of realized volatility in the S&P 500 over five decades, identifying potential Dragon Kings as significant deviations from expected power-law behavior, especially during major economic crises.
Contribution
It introduces a systematic method to detect Dragon Kings in stock market volatility using distribution fitting and statistical significance testing.
Findings
Potential Dragon Kings appear during major crises.
Distribution tails show deviations indicating Dragon Kings.
Abrupt shifts from potential DK to negative DK observed.
Abstract
We undertake a systematic study of historic market volatility spanning roughly five preceding decades. We focus specifically on the time series of realized volatility (RV) of the S&P500 index and its distribution function. As expected, the largest values of RV coincide with the largest economic upheavals of the period: Savings and Loan Crisis, Tech Bubble, Financial Crisis and Covid Pandemic. We address the question of whether these values belong to one of the three categories: Black Swans (BS), that is they lie on scale-free, power-law tails of the distribution; Dragon Kings (DK), defined as statistically significant upward deviations from BS; or Negative Dragons Kings (nDK), defined as statistically significant downward deviations from BS. In analyzing the tails of the distribution with RV > 40, we observe the appearance of "potential" DK which eventually terminate in an abrupt plunge…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Statistical Mechanics and Entropy · Financial Risk and Volatility Modeling
MethodsFocus
