Distribution Metrics

Distribution metrics describe the statistical shape of your trade P&L data. They reveal whether returns follow a "normal" bell curve or have unusual characteristics like fat tails or asymmetry.

Quick Reference

MetricFormulaUnit
Standard DeviationStdDev of daily equity returnsratio
Downside DeviationStdDev of negative daily returns onlyratio
SkewnessDistribution asymmetry of trade P&Lsscore
KurtosisDistribution tail heavinessscore
Z-ScoreRuns test: (Runs - Expected) / StdDev of Runsscore
Z-ProbabilityStatistical significance of Z-Score%
Avg Trade StdDevStandard deviation of individual trade P&Ls$
Trade Coef. of VariationStdDev / |Avg Trade|ratio

Key Metrics Explained

Skewness

Measures whether returns lean left (negative) or right (positive):

CategoryMeaning
Loss-heavyOccasional large losses dominate
SymmetricBalanced wins and losses
Win-heavyOccasional large wins
JackpotRare, very large wins

Positive skewness is preferred — it means your outlier trades tend to be winners, not losers.

Kurtosis

Measures how extreme the tails of your distribution are:

CategoryMeaning
PredictableFew extreme outliers
NormalStandard tail behavior
VolatileOccasional extreme trades
ExtremeVery heavy tails — rare but huge outliers

High kurtosis means your strategy occasionally produces very large wins or losses. This makes results less predictable.

The 16 Distribution Profiles

AlgoChef combines skewness and kurtosis to classify your strategy into one of 16 profiles.

The following 16 distribution profiles are proprietary to AlgoChef and protected by copyright.

PredictableNormalVolatileExtreme
Loss-heavySteady BleederAsymmetric GrindTail-Risk TrapBlack Swan Magnet
SymmetricPredictable GrinderStandard TraderFat-Tail BalancedChaos Balanced
Win-heavyPositive EdgeSkew AdvantageVolatile WinnerJackpot Mix
JackpotRare Win SystemOutlier DependentHigh-Variance JackpotExtreme Jackpot

Tip

The ideal profiles are in the top-left area: Predictable Grinder (symmetric, no outliers) or Positive Edge (slightly win-heavy, predictable). Bottom-right profiles (extreme kurtosis + jackpot skew) are the hardest to trade consistently.

Understanding your distribution profile helps you select the most appropriate Monte Carlo simulation method for stress-testing.

Z-Score

The Z-Score from a "runs test" measures whether wins and losses are randomly distributed or clustered:

  • Z-Score near 0 — Random sequence (no pattern)
  • Negative Z-Score — Streaks (wins follow wins, losses follow losses)
  • Positive Z-Score — Alternating (win-loss-win-loss patterns)

The Z-Probability tells you how statistically significant this pattern is. Above 95% means the pattern is likely real and not due to chance.

Tip

Want to understand your strategy's distribution profile in depth? The Strategy Analyzer shows your full distribution analysis with visual histograms.

Tip

Ready to analyze your own strategy? Start your free trial — no credit card required.