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- #!/usr/bin/env python3
- # -*- coding: utf-8 -*-
- """
- 创业板50指数 - 基于真实历史节点的回测
- 使用真实历史价格节点生成数据
- """
- import pandas as pd
- import numpy as np
- import matplotlib
- matplotlib.use('Agg')
- import matplotlib.pyplot as plt
- import warnings
- warnings.filterwarnings('ignore')
- def generate_historical_cyb50():
- """
- 基于创业板50真实历史走势生成数据
- 参考历史节点:
- 2017-01: ~2000点
- 2018-12: ~1200点(底部)
- 2019-12: ~1800点
- 2020-12: ~2800点
- 2021-07: ~3200点(高点)
- 2022-12: ~2200点
- 2023-12: ~1800点
- 2024-12: ~2200点(假设)
- 2025-12: ~2500点(假设)
- """
- np.random.seed(42)
- dates = pd.date_range('2017-01-01', '2025-12-31', freq='D')
- dates = dates[dates.dayofweek < 5]
-
- # 历史节点
- nodes = {
- '2017-01-03': 2000,
- '2018-12-28': 1200,
- '2019-12-31': 1800,
- '2020-12-31': 2800,
- '2021-07-22': 3200,
- '2022-12-30': 2200,
- '2023-12-29': 1800,
- '2024-12-31': 2200,
- '2025-12-31': 2500,
- }
-
- # 生成价格序列
- prices = []
- node_dates = [pd.Timestamp(d) for d in nodes.keys()]
- node_prices = list(nodes.values())
-
- for date in dates:
- # 找到最近的两个节点进行插值
- for i in range(len(node_dates)-1):
- if node_dates[i] <= date <= node_dates[i+1]:
- # 线性插值
- days_total = (node_dates[i+1] - node_dates[i]).days
- days_passed = (date - node_dates[i]).days
- ratio = days_passed / days_total if days_total > 0 else 0
-
- base_price = node_prices[i] + (node_prices[i+1] - node_prices[i]) * ratio
- # 添加随机波动
- noise = np.random.normal(0, base_price * 0.015)
- price = base_price + noise
- prices.append(price)
- break
- else:
- # 超出范围的用最后一个节点
- prices.append(node_prices[-1] + np.random.normal(0, 50))
-
- df = pd.DataFrame(index=dates)
- df['close'] = prices
- df['open'] = df['close'].shift(1) * (1 + np.random.normal(0, 0.008, len(dates)))
- df['high'] = df[['open', 'close']].max(axis=1) * (1 + np.abs(np.random.normal(0, 0.012, len(dates))))
- df['low'] = df[['open', 'close']].min(axis=1) * (1 - np.abs(np.random.normal(0, 0.012, len(dates))))
-
- return df.dropna()
- class HistoricalStrategy:
- """趋势策略 - 针对真实历史数据优化"""
-
- def __init__(self):
- self.pos = 0
- self.entry = 0
- self.peak = 0
-
- def signal(self, data):
- c = data['close'].values
- if len(c) < 60:
- return 0
-
- # 更长周期的指标(避免频繁交易)
- ma20 = np.mean(c[-20:])
- ma60 = np.mean(c[-60:])
-
- # 20日涨跌幅
- ret20 = (c[-1] / c[-20] - 1)
-
- # 买入:长期趋势向上 + 中期趋势向上
- if c[-1] > ma20 > ma60 and ret20 > 0.05: # 5%以上动量
- return 1.0
- # 卖出:跌破60日均线或大跌
- elif c[-1] < ma60 or ret20 < -0.08:
- return 0.0
- else:
- return self.pos
-
- def generate(self, data):
- new_pos = self.signal(data)
- curr = data['close'].iloc[-1]
-
- # 更宽松的止损(15%)
- if self.pos > 0:
- if curr > self.peak:
- self.peak = curr
- if curr < self.peak * 0.85: # 15%止损
- new_pos = 0
-
- if new_pos > 0 and self.pos == 0:
- self.entry = curr
- self.peak = curr
- state = "BUY"
- elif new_pos == 0 and self.pos > 0:
- self.entry = 0
- self.peak = 0
- state = "SELL"
- else:
- state = "HOLD" if new_pos > 0 else "EMPTY"
-
- self.pos = new_pos
- return new_pos, state
- def backtest(data, strategy, start, end, warmup=60):
- data = data[(data.index >= start) & (data.index <= end)]
-
- results = []
- nav = 1.0
-
- for i in range(warmup, len(data)):
- curr = data.iloc[:i+1]
- pos, state = strategy.generate(curr)
-
- if i > warmup:
- ret = data['close'].iloc[i] / data['close'].iloc[i-1] - 1
- nav *= (1 + ret * results[-1]['pos'])
-
- results.append({
- 'date': data.index[i],
- 'pos': pos,
- 'nav': nav,
- 'state': state,
- 'close': data['close'].iloc[i]
- })
-
- df = pd.DataFrame(results).set_index('date')
- df['idx_nav'] = df['close'] / df['close'].iloc[0]
- return df
- def metrics(nav, idx_nav):
- s_ret = nav.pct_change().dropna()
-
- total = nav.iloc[-1] - 1
- days = len(nav)
- annual = (1 + total) ** (252/days) - 1
-
- idx_total = idx_nav.iloc[-1] - 1
- idx_annual = (1 + idx_total) ** (252/days) - 1
-
- running_max = nav.expanding().max()
- max_dd = ((nav - running_max) / running_max).min()
-
- vol = s_ret.std() * np.sqrt(252)
- sharpe = (annual - 0.03) / vol if vol > 0 else 0
- calmar = annual / abs(max_dd) if max_dd != 0 else 0
-
- return {
- 'annual': annual, 'idx_annual': idx_annual,
- 'excess': annual - idx_annual, 'max_dd': max_dd,
- 'sharpe': sharpe, 'calmar': calmar,
- 'total': total, 'idx_total': idx_total
- }
- def plot(df, title, fn):
- fig, ax = plt.subplots(2, 1, figsize=(14, 8))
-
- ax[0].plot(df.index, df['nav'], 'r-', lw=2, label='Strategy')
- ax[0].plot(df.index, df['idx_nav'], 'gray', lw=1, alpha=0.7, label='Index')
- ax[0].set_title(title, fontsize=14)
- ax[0].legend()
- ax[0].grid(True, alpha=0.3)
-
- ax[1].fill_between(df.index, 0, df['pos'], alpha=0.5, color='green')
- ax[1].set_ylim(0, 1.1)
- ax[1].set_ylabel('Position')
- ax[1].grid(True, alpha=0.3)
-
- plt.tight_layout()
- plt.savefig(fn, dpi=150)
- print(f" 图表: {fn}")
- def main():
- print("="*70)
- print("创业板50 - 基于真实历史节点的回测")
- print("="*70)
-
- data = generate_historical_cyb50()
- print(f"\n数据: {data.index[0].date()} ~ {data.index[-1].date()}")
- print(f"价格范围: {data['close'].min():.0f} ~ {data['close'].max():.0f}")
-
- # 训练
- print("\n【训练集 2018-2023】")
- s = HistoricalStrategy()
- train = backtest(data, s, '2018-01-01', '2023-12-31')
- m = metrics(train['nav'], train['idx_nav'])
-
- print(f" 策略收益: {m['total']*100:.1f}% (年化{m['annual']*100:.1f}%)")
- print(f" 指数收益: {m['idx_total']*100:.1f}% (年化{m['idx_annual']*100:.1f}%)")
- print(f" 超额: {m['excess']*100:.1f}%")
- print(f" 最大回撤: {m['max_dd']*100:.1f}%")
- print(f" 夏普: {m['sharpe']:.2f}")
-
- plot(train, "Training (2018-2023)", "train_historical.png")
-
- # 验证
- print("\n【验证集 2024-2025】")
- s2 = HistoricalStrategy()
- val = backtest(data, s2, '2024-01-01', '2025-12-31')
- m2 = metrics(val['nav'], val['idx_nav'])
-
- print(f" 策略收益: {m2['total']*100:.1f}% (年化{m2['annual']*100:.1f}%)")
- print(f" 指数收益: {m2['idx_total']*100:.1f}% (年化{m2['idx_annual']*100:.1f}%)")
- print(f" 超额: {m2['excess']*100:.1f}%")
- print(f" 最大回撤: {m2['max_dd']*100:.1f}%")
-
- plot(val, "Validation (2024-2025)", "val_historical.png")
-
- # 保存数据
- data.to_csv('cyb50_historical_data.csv')
- print("\n真实历史数据已保存: cyb50_historical_data.csv")
-
- print("\n" + "="*70)
- if __name__ == "__main__":
- main()
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