The Volatility Index (VIX) is widely regarded as a forward-looking measure of market uncertainty and investor sentiment. Although it has been extensively studied, certain aspects remain insufficiently explored.
Reference [1] investigates the implications of extreme VIX values, defined as VIX > 45, and examines two key research questions in this context.
- Extreme implied volatility (VIX > 45) is followed by significantly positive equity returns over three-month and one-year horizons, and
- Negative returns, elevated volatility, and deteriorating sentiment increase the probability of a VIX spike (VIX > 45)
Using U.S. data from 2008 to 2025, the authors employ linear regression, logistic regression, and GARCH(1,1) models to conduct the analysis. They pointed out,
Results show that extreme VIX spikes offer contrarian signals, with significant positive returns over three-month horizons. Logistic regression confirms significance over both three-month and one-year periods. These findings remain robust after controlling for valuation, credit spreads, PMI, sentiment ratios, and interaction effects. While GARCH captures conditional variance, it lacks forward-looking predictive power in high-stress regimes. Overall, the evidence suggests that volatility timing merits consideration as part of a tactical allocation framework. Our findings also contribute to the market efficiency debate by integrating market expectations with economic indicators for risk-aware decision-making.
In short, the paper's conclusions are as follows,
- The evidence robustly supports the contrarian effect at the 3-month horizon. At the 1-year horizon, the predictive power comes primarily from continuous volatility measures rather than the binary VIX>45 indicator.
- The results clearly demonstrate that extreme volatility episodes are statistically predictable using valuation, sentiment, and medium-term volatility measures. The evidence shows regime transitions are preceded by identifiable market conditions rather than occurring randomly.
This study makes an important contribution by formally examining phenomena long observed by practitioners and by providing results with meaningful practical implications.
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References
[1] Fazio, P., and Spohn, D. (2026). Predictive Signals from VIX Spikes: A Comparative Study of Linear, Logistic, and GARCH-Based Return Forecasting Models. Preprints.org.
Article Source Here: Extreme VIX: Regime Shifts and Return Predictability
source https://harbourfronts.com/extreme-vix-regime-shifts-return-predictability/