feat: CSI500 universe + reversal_vol signal + argparse CLI

This commit is contained in:
Yuxuan Yan
2026-06-07 10:01:41 +08:00
parent aedc019d23
commit 241683cc54
4 changed files with 93 additions and 11 deletions
+34 -1
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@@ -1,4 +1,4 @@
"""CSI 300 (HS300) universe helpers.""" """CSI 300 (HS300) and CSI 500 (ZZ500) universe helpers."""
import logging import logging
import baostock as bs import baostock as bs
@@ -19,6 +19,20 @@ SYMBOLS = [
] ]
# First 30 CSI 500 (ZZ500) constituents (mid/small caps) in 'shXXXXXX' /
# 'szXXXXXX' format. Hardcoded for fast, deterministic smoke tests. Use
# get_zz500_stocks() for the live, full list. Mean reversion tends to be
# stronger in these smaller caps than in the HS300 large caps.
CSI500_SYMBOLS = [
"sh600006", "sh600008", "sh600017", "sh600020", "sh600021",
"sh600026", "sh600037", "sh600039", "sh600053", "sh600056",
"sh600060", "sh600061", "sh600062", "sh600073", "sh600089",
"sh600095", "sh600118", "sh600125", "sh600126", "sh600143",
"sh600153", "sh600160", "sh600169", "sh600176", "sh600183",
"sz000009", "sz000012", "sz000021", "sz000025", "sz000027",
]
def get_hs300_stocks() -> pd.DataFrame: def get_hs300_stocks() -> pd.DataFrame:
"""Fetch the current CSI 300 constituents from baostock. """Fetch the current CSI 300 constituents from baostock.
@@ -36,3 +50,22 @@ def get_hs300_stocks() -> pd.DataFrame:
df = pd.DataFrame(stocks, columns=["code", "name", "date"]) df = pd.DataFrame(stocks, columns=["code", "name", "date"])
df["code"] = df["code"].str.replace(".", "", regex=False) df["code"] = df["code"].str.replace(".", "", regex=False)
return df return df
def get_zz500_stocks() -> pd.DataFrame:
"""Fetch the current CSI 500 (ZZ500) constituents from baostock.
Returns:
DataFrame with columns ``code`` (e.g. ``sh600006``), ``name``, ``date``.
"""
bs.login()
try:
rs = bs.query_zz500_stocks()
stocks = []
while rs.next():
stocks.append(rs.get_row_data())
finally:
bs.logout()
df = pd.DataFrame(stocks, columns=["code", "name", "date"])
df["code"] = df["code"].str.replace(".", "", regex=False)
return df
+30 -9
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@@ -1,6 +1,12 @@
#!/usr/bin/env python3 #!/usr/bin/env python3
"""End-to-end pipeline: HS300 universe -> reversal signal -> cross-sectional IC """End-to-end pipeline: universe -> signal -> cross-sectional IC
-> multi-stock backtest (AlphaStrategy + RankEqualWeightBuilder) -> reports.""" -> multi-stock backtest (AlphaStrategy + RankEqualWeightBuilder) -> reports.
Usage:
python3 run_example.py --universe hs300 --signal reversal
python3 run_example.py --universe csi500 --signal reversal_vol
"""
import argparse
import logging import logging
import pandas as pd import pandas as pd
@@ -9,10 +15,11 @@ from analysis.report import generate_report
from backtest.config import BacktestConfig from backtest.config import BacktestConfig
from backtest.runner import BacktestRunner from backtest.runner import BacktestRunner
from data.downloader import download_batch from data.downloader import download_batch
from data.universe import SYMBOLS from data.universe import SYMBOLS, CSI500_SYMBOLS
from eval.metrics import evaluate_cross_sectional from eval.metrics import evaluate_cross_sectional
from portfolio.builder import RankEqualWeightBuilder from portfolio.builder import RankEqualWeightBuilder
from signals.reversal import ReversalSignal from signals.reversal import ReversalSignal
from signals.reversal_vol import ReversalVolSignal
from strategies.alpha_strategy import AlphaStrategy from strategies.alpha_strategy import AlphaStrategy
logging.basicConfig(level=logging.INFO, format="%(asctime)s [%(levelname)s] %(message)s") logging.basicConfig(level=logging.INFO, format="%(asctime)s [%(levelname)s] %(message)s")
@@ -29,18 +36,27 @@ def _forward_returns(data: dict[str, pd.DataFrame], horizon: int) -> pd.DataFram
return pd.DataFrame(forward_returns) return pd.DataFrame(forward_returns)
def main(forward_horizon: int = 5): def main(forward_horizon: int = 5, universe: str = "csi500", signal_name: str = "reversal_vol"):
symbols = SYMBOLS[:30] universes = {"hs300": SYMBOLS, "csi500": CSI500_SYMBOLS}
symbols = universes.get(universe, CSI500_SYMBOLS)[:30]
signals = {
"reversal": ReversalSignal(lookback=5),
"reversal_vol": ReversalVolSignal(lookback=5, vol_window=20),
}
signal = signals.get(signal_name, ReversalVolSignal(lookback=5, vol_window=20))
start, end = "2023-01-01", "2024-12-31" start, end = "2023-01-01", "2024-12-31"
initial_cash = 1_000_000 initial_cash = 1_000_000
logger.info(f"Universe: {universe} ({len(symbols)} stocks), Signal: {signal.name}")
# 1-2. Download daily data for the universe. # 1-2. Download daily data for the universe.
data = download_batch(symbols, start, end) data = download_batch(symbols, start, end)
data = {s: df for s, df in data.items() if df is not None and not df.empty} data = {s: df for s, df in data.items() if df is not None and not df.empty}
logger.info(f"Downloaded {len(data)}/{len(symbols)} symbols") logger.info(f"Downloaded {len(data)}/{len(symbols)} symbols")
# 3. Compute the reversal signal per stock. # 3. Compute the signal per stock.
signal = ReversalSignal(lookback=5)
signal_series: dict[str, pd.Series] = {} signal_series: dict[str, pd.Series] = {}
for sym, df in data.items(): for sym, df in data.items():
sig = signal.compute(df) sig = signal.compute(df)
@@ -52,7 +68,7 @@ def main(forward_horizon: int = 5):
returns_df = _forward_returns(data, forward_horizon) returns_df = _forward_returns(data, forward_horizon)
signal_eval = evaluate_cross_sectional(signals_df, returns_df) signal_eval = evaluate_cross_sectional(signals_df, returns_df)
# 4b. Multi-horizon IC to show which horizon the signal works at. # 4b. Multi-horizon IC.
horizon_evals = { horizon_evals = {
h: evaluate_cross_sectional(signals_df, _forward_returns(data, h)) h: evaluate_cross_sectional(signals_df, _forward_returns(data, h))
for h in (1, 5, 20) for h in (1, 5, 20)
@@ -84,6 +100,7 @@ def main(forward_horizon: int = 5):
# 8. Print summary. # 8. Print summary.
print("\nSIGNAL IC") print("\nSIGNAL IC")
print("=" * 50) print("=" * 50)
print(f"Universe: {universe} | Signal: {signal.name}")
print(f"IC mean / std / IR: {signal_eval['ic_mean']:.4f} / " print(f"IC mean / std / IR: {signal_eval['ic_mean']:.4f} / "
f"{signal_eval['ic_std']:.4f} / {signal_eval['ir']:.4f}") f"{signal_eval['ic_std']:.4f} / {signal_eval['ir']:.4f}")
print(f"Rank IC mean / std / IR: {signal_eval['rank_ic_mean']:.4f} / " print(f"Rank IC mean / std / IR: {signal_eval['rank_ic_mean']:.4f} / "
@@ -102,4 +119,8 @@ def main(forward_horizon: int = 5):
if __name__ == "__main__": if __name__ == "__main__":
main() parser = argparse.ArgumentParser(description="Chinese equity quant backtest")
parser.add_argument("--universe", default="csi500", choices=["hs300", "csi500"])
parser.add_argument("--signal", default="reversal_vol", choices=["reversal", "reversal_vol"])
args = parser.parse_args()
main(universe=args.universe, signal_name=args.signal)
+2 -1
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@@ -1,5 +1,6 @@
"""Alpha signal abstractions.""" """Alpha signal abstractions."""
from signals.base import AlphaSignal from signals.base import AlphaSignal
from signals.reversal import ReversalSignal from signals.reversal import ReversalSignal
from signals.reversal_vol import ReversalVolSignal
__all__ = ["AlphaSignal", "ReversalSignal"] __all__ = ["AlphaSignal", "ReversalSignal", "ReversalVolSignal"]
+27
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@@ -0,0 +1,27 @@
"""Volatility-scaled short-horizon reversal signal."""
import pandas as pd
from signals.base import AlphaSignal
class ReversalVolSignal(AlphaSignal):
"""Reversal score normalized by trailing volatility.
The raw reversal ``-close.pct_change(lookback)`` is divided by the rolling
standard deviation of daily returns over ``vol_window``. Scaling by
volatility damps the score of noisy, high-vol names so the signal favors
oversold stocks whose move is large *relative* to their own volatility.
"""
def __init__(self, lookback: int = 5, vol_window: int = 20):
self.lookback = lookback
self.vol_window = vol_window
def compute(self, df: pd.DataFrame) -> pd.Series:
reversal = -df["close"].pct_change(self.lookback)
vol = df["close"].pct_change().rolling(self.vol_window).std()
return reversal / vol
@property
def name(self) -> str:
return f"reversal_vol_{self.lookback}d_{self.vol_window}d"