Files
quant/strategies/improved_momentum_quality.py
Gahow Wang d086930ab3 feat: add new trading strategies
Add 12 strategy modules including adaptive blend, composite alpha,
cross-asset momentum, ensemble alpha, trend rider v5/v6, and more.
2026-05-14 12:54:05 +08:00

95 lines
3.7 KiB
Python

"""
Improved Momentum Quality Strategy.
Improvements over base MomentumQualityStrategy:
1. Monthly rebalancing (original rebalances daily → high turnover)
2. Added recovery factor (strong predictor per IC analysis)
3. Replaced expensive .apply() consistency calc with vectorized version
4. Inverse-vol weighting instead of equal-weight
5. NaN handling fixed throughout
"""
import numpy as np
import pandas as pd
from strategies.base import Strategy
class ImprovedMomentumQualityStrategy(Strategy):
"""
Momentum + quality + recovery with monthly rebal and inv-vol weighting.
"""
def __init__(
self,
momentum_period: int = 252,
skip: int = 21,
quality_window: int = 252,
recovery_window: int = 63,
vol_window: int = 60,
rebal_freq: int = 21,
top_n: int = 20,
):
self.momentum_period = momentum_period
self.skip = skip
self.quality_window = quality_window
self.recovery_window = recovery_window
self.vol_window = vol_window
self.rebal_freq = rebal_freq
self.top_n = top_n
def generate_signals(self, data: pd.DataFrame) -> pd.DataFrame:
# --- Momentum factor ---
momentum = data.shift(self.skip).pct_change(self.momentum_period - self.skip)
# --- Quality: return consistency (vectorized) ---
# Fraction of positive 21-day returns over rolling window
monthly_ret = data.pct_change(21)
positive_indicator = (monthly_ret > 0).astype(float)
consistency = positive_indicator.rolling(
self.quality_window, min_periods=self.quality_window // 2
).mean()
# --- Quality: inverse max drawdown ---
rolling_max = data.rolling(self.quality_window, min_periods=self.quality_window // 2).max()
drawdown = data / rolling_max - 1
worst_dd = drawdown.rolling(self.quality_window, min_periods=self.quality_window // 2).min()
inv_dd = -worst_dd # higher = smaller drawdown = better
# --- Recovery factor ---
recovery = data / data.rolling(self.recovery_window, min_periods=self.recovery_window).min() - 1
# --- Cross-sectional ranking ---
mom_rank = momentum.rank(axis=1, pct=True, na_option="keep")
con_rank = consistency.rank(axis=1, pct=True, na_option="keep")
dd_rank = inv_dd.rank(axis=1, pct=True, na_option="keep")
rec_rank = recovery.rank(axis=1, pct=True, na_option="keep")
# Composite: momentum 35%, recovery 25%, consistency 20%, drawdown 20%
scores = (0.35 * mom_rank + 0.25 * rec_rank +
0.20 * con_rank + 0.20 * dd_rank)
# --- Select top_n ---
n_valid = scores.notna().sum(axis=1)
enough = n_valid >= self.top_n
score_rank = scores.rank(axis=1, ascending=False, na_option="bottom")
top_mask = (score_rank <= self.top_n) & enough.values.reshape(-1, 1)
# --- Inverse-vol weighting ---
returns = data.pct_change()
vol = returns.rolling(self.vol_window, min_periods=30).std().replace(0, np.nan)
inv_vol = (1.0 / vol).where(top_mask, 0.0)
row_sums = inv_vol.sum(axis=1).replace(0, np.nan)
signals = inv_vol.div(row_sums, axis=0).fillna(0.0)
# --- Monthly rebalance ---
warmup = max(self.momentum_period, self.quality_window, self.recovery_window) + self.skip
rebal_mask = pd.Series(False, index=data.index)
rebal_indices = list(range(warmup, len(data), self.rebal_freq))
rebal_mask.iloc[rebal_indices] = True
signals[~rebal_mask] = np.nan
signals = signals.ffill().fillna(0.0)
signals.iloc[:warmup] = 0.0
return signals.shift(1).fillna(0.0)