feat(metrics): Deflated Sharpe Ratio (Bailey & Lopez de Prado)

Aggiunge expected_max_sharpe e deflated_sharpe_ratio per correggere
multiple testing nella valutazione di strategie. Considera skewness,
kurtosis e numero di trial.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
This commit is contained in:
2026-05-09 19:21:35 +02:00
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from __future__ import annotations
import numpy as np
import pandas as pd # type: ignore[import-untyped]
from scipy import stats # type: ignore[import-untyped]
from .basic import sharpe_ratio
EULER_MASCHERONI = 0.5772156649015329
def expected_max_sharpe(n_trials: int, sharpe_var: float) -> float:
"""E[max SR] su n_trials con varianza sharpe_var (Bailey & Lopez de Prado).
Formula: sqrt(sharpe_var) * ((1-gamma) * Phi^-1(1 - 1/N)
+ gamma * Phi^-1(1 - 1/(N*e)))
dove gamma e' la costante di Eulero-Mascheroni.
"""
if n_trials < 2:
return 0.0
e = np.e
z1 = stats.norm.ppf(1 - 1.0 / n_trials)
z2 = stats.norm.ppf(1 - 1.0 / (n_trials * e))
return float(
np.sqrt(sharpe_var) * ((1 - EULER_MASCHERONI) * z1 + EULER_MASCHERONI * z2)
)
def deflated_sharpe_ratio(
returns: pd.Series,
n_trials: int,
periods_per_year: int = 8760,
sharpe_var: float = 1.0,
skewness: float | None = None,
kurtosis: float | None = None,
) -> tuple[float, float]:
"""Deflated Sharpe Ratio (DSR) e p-value associato.
Restituisce (DSR, p_value). p_value e' la prob. che lo SR osservato sia
superiore al massimo atteso sotto null. p_value bassi (es. < 0.05)
indicano significativita' dopo correzione per multiple testing.
"""
n = len(returns)
if n < 30:
return 0.0, 1.0
sr = sharpe_ratio(returns, periods_per_year=periods_per_year)
sr_period = sr / np.sqrt(periods_per_year)
if skewness is None:
skewness = float(stats.skew(returns, bias=False))
if kurtosis is None:
kurtosis = float(stats.kurtosis(returns, fisher=True, bias=False))
sr_expected_max = expected_max_sharpe(n_trials, sharpe_var) / np.sqrt(periods_per_year)
denom = np.sqrt(
max(
(1 - skewness * sr_period + ((kurtosis - 1) / 4.0) * sr_period**2) / (n - 1),
1e-12,
)
)
z = (sr_period - sr_expected_max) / denom
p_value = float(1.0 - stats.norm.cdf(z))
dsr = float(stats.norm.cdf(z))
return dsr, p_value
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import numpy as np
import pandas as pd
from multi_swarm.metrics.dsr import deflated_sharpe_ratio, expected_max_sharpe
def test_expected_max_sharpe_grows_with_n_trials():
e1 = expected_max_sharpe(n_trials=1, sharpe_var=1.0)
e10 = expected_max_sharpe(n_trials=10, sharpe_var=1.0)
e100 = expected_max_sharpe(n_trials=100, sharpe_var=1.0)
assert e1 < e10 < e100
def test_dsr_zero_when_sharpe_equals_expected_max():
np.random.seed(0)
returns = pd.Series(np.random.normal(0, 0.01, 500))
_dsr, p = deflated_sharpe_ratio(
returns, n_trials=10, periods_per_year=8760, sharpe_var=0.0
)
# Con sharpe_var=0 e Sharpe stimato vicino a 0, p-value deve essere alto.
assert 0.0 <= p <= 1.0
def test_dsr_significant_for_strong_sharpe():
np.random.seed(42)
returns = pd.Series(np.random.normal(0.005, 0.005, 1000))
dsr, p = deflated_sharpe_ratio(
returns, n_trials=5, periods_per_year=8760, sharpe_var=1.0
)
# Sharpe atteso > 0 e p-value basso
assert dsr > 0
assert p < 0.5