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Daily SPY Candlestick: White Spinning Top
White Spinning Top in Greed: Return Profile Broadly Unchanged vs the Global Baseline
Wednesday’s White Spinning Top came with a -0.1% SPY session and signaled indecision, with a small body and long shadows on both sides despite a bullish close.
Since 2009, the pattern has appeared 245 times. The one-month profile resolved higher 73.9% of the time, with a +2.0% median return, a +1.5% average return, and a +1.21 Sharpe. The central tendency favored gains. Skew sat at -2.1 and kurtosis at +18.1, so the distribution leaned on a fat left tail even as the interquartile range ran from -0.1% to +3.5% and the p10 to p90 range spanned -2.9% to +5.3%. The baseline profile combined a high 1-month up rate with left-tail risk that pulled the average below the median.
QHI Greed contains 45 observations, so the directional count is informative and higher moments, skew and kurtosis, carry more uncertainty than the global baseline. In Quantlake Herd Index Greed, a crowd-sentiment regime between 60 and 80 points, the one-month profile tracked the baseline on direction and central tendency, with the up rate easing to 71.1%, the median to +1.8%, and the average to +1.3%. The regime’s main change was distributional: skew improved to -0.8 and kurtosis compressed to +0.8, and the full range narrowed to -7.4% to +7.4%, so the setup kept the baseline gain profile with a flatter left tail.

The full QHI historical series since September 1, 2009 is available via the Quantlake API for systematic integration. Learn more about the QHI methodology →
Data: 1 Jul 2026 · Daily Time Scale.
Romain Gandon
CEO, Quantlake
Disclaimer: This article is for informational and educational purposes only and does not constitute investment advice. Past performance is not indicative of future results.
Definitions
Quantlake Herd Index (QHI)
The Quantlake Herd Index (QHI) is a proprietary cross-asset behavioral sentiment composite ranging from 0 to 100 that measures extremes in investor psychology across the U.S. financial system.
It aggregates signals from U.S. equity momentum and breadth, equity market concentration dynamics, credit market risk appetite (high-yield vs investment-grade demand), implied volatility conditions, and credit spread behavior. These inputs are normalized into a single behavioral risk barometer reflecting the balance between risk-averse and risk-on investor behavior.
Because markets are influenced by behavioral biases, sentiment extremes frequently precede mean reversion in forward returns.
QHI Regimes
0–20: Extreme Fear
20–40: Fear
40–60: Neutral
60–80: Greed
80–100: Extreme Greed
Statistical Terms
Median
The midpoint of the return distribution — 50% of outcomes fell above and 50% below this value. Less sensitive to extreme outliers than the average.
p25 / p75 (Interquartile Range)
The range within which the middle 50% of historical outcomes fell. p25 marks the 25th percentile (bottom of the range); p75 marks the 75th percentile (top). A tighter range indicates a more predictable pattern; a wide range reflects high dispersion.
p10 / p90 (Tail Interval)
The range encompassing the middle 80% of historical outcomes. P10 represents the 10th percentile (the "downside" threshold), while P90 represents the 90th percentile (the "upside" threshold). Unlike the Interquartile Range, this metric captures the shoulders of the distribution, providing a clearer view of potential tail risk and extreme performance potential.
Skew (γ1 — Skewness)
Measures the asymmetry of the return distribution. A negative skew (γ1 < 0) signals a left-tailed distribution — most outcomes cluster on the positive side, but the rare negative outcomes can be severely large. A positive skew (γ1 > 0) is the opposite.
Kurt (γ2 — Excess Kurtosis)
Measures tail density relative to a normal distribution. A high positive value (Leptokurtic) indicates fat tails — extreme events occur more frequently than a normal distribution would predict. A negative value (Platykurtic) indicates thinner tails.
Mesokurtic
A kurtosis value typically within a range of -0.5 to +0.5, consistent with a normal (Gaussian) distribution. Tail risk is neither elevated nor suppressed relative to standard statistical models.
Gaussian (Normal Distribution)
The classic bell-curve distribution. When a pattern's moments are described as "consistent with Gaussian expectations," it means tail risk behaves as standard statistical models would predict — no unusual concentration of extreme outcomes.
Sharpe Ratio (annualised)
Measures risk-adjusted return — the average 1-month forward return divided by its standard deviation, scaled to an annual rate (×√12). A ratio above 1.0 indicates strong return per unit of risk; below 0.5 is weak; negative means the average outcome was a loss. It does not capture skewness or tail risk, so it should be read alongside the distribution metrics above.


