""" A/B测试:添加法国CAC40市场大类的影响 对比: - A组(对照组):当前配置(无法国) - B组(实验组):添加法国CAC40作为新大类 核心问题:法国市场是否能有效补充欧洲分散 """ import sys from pathlib import Path sys.path.insert(0, str(Path(__file__).parent.parent.parent)) from strategies.rotation.engine import RotationStrategy import pandas as pd import yaml def create_config_with_france(base_config: dict) -> dict: """在基础配置上添加法国市场""" config = base_config.copy() config['code_list'] = base_config['code_list'].copy() # 添加法国CAC40(新大类) # 当前已有德国DAX(EU),法国可以增加欧洲内部的多样性 # 注意:德国和法国同属EU大类,但这是不同的指数 config['code_list']['^FCHI'] = { 'name': '法国CAC40', 'etf': '513080.SH', # 法国ETF华安 'market': 'FR' # 法国大类(独立于德国) } return config def run_backtest(config: dict, label: str) -> dict: """运行回测并返回关键指标""" print(f"\n{'='*60}") print(f" {label}") print(f"{'='*60}") strategy = RotationStrategy(config) result = strategy.run() if result is None or len(result) == 0: return None # 计算指标 strategy_nav = result['轮动策略净值'] strategy_ret = result['轮动策略日收益率'] total_return = strategy_nav.iloc[-1] - 1 days = len(result) years = days / 250 cagr = (strategy_nav.iloc[-1] ** (1/years)) - 1 if years > 0 else 0 excess_ret = strategy_ret.mean() * 250 vol = strategy_ret.std() * (250 ** 0.5) sharpe = excess_ret / vol if vol > 0 else 0 rolling_max = strategy_nav.cummax() drawdown = (strategy_nav - rolling_max) / rolling_max max_dd = drawdown.min() calmar = cagr / abs(max_dd) if max_dd < 0 else 0 win_rate = (strategy_ret > 0).sum() / len(strategy_ret) # 统计大类数量 markets = set() for code_info in config['code_list'].values(): markets.add(code_info.get('market', 'A')) metrics = { 'label': label, '大类数量': len(markets), '累计收益': total_return, 'CAGR': cagr, 'Sharpe': sharpe, 'MaxDD': max_dd, 'Calmar': calmar, '日胜率': win_rate, } print(f"\n大类数量: {metrics['大类数量']}") print(f"累计收益: {metrics['累计收益']:.2%}") print(f"CAGR: {metrics['CAGR']:.2%}") print(f"Sharpe: {metrics['Sharpe']:.2f}") print(f"MaxDD: {metrics['MaxDD']:.2%}") print(f"Calmar: {metrics['Calmar']:.2f}") print(f"日胜率: {metrics['日胜率']:.2%}") return metrics def compare_results(a_metrics: dict, b_metrics: dict): """对比两组结果""" print(f"\n{'='*60}") print(f" 对比结果") print(f"{'='*60}") print(f"\n{'指标':<15} {'A组(无法国)':<15} {'B组(有法国)':<15} {'差异':<15}") print("-" * 60) metrics_keys = ['大类数量', '累计收益', 'CAGR', 'Sharpe', 'MaxDD', 'Calmar', '日胜率'] for key in metrics_keys: a_val = a_metrics.get(key, 0) b_val = b_metrics.get(key, 0) diff = b_val - a_val if key in ['累计收益', 'CAGR', 'MaxDD', '日胜率']: a_str = f"{a_val:.2%}" b_str = f"{b_val:.2%}" diff_str = f"{diff*100:+.2f}%" elif key == '大类数量': a_str = str(a_val) b_str = str(b_val) diff_str = f"+{diff}" if diff > 0 else str(diff) else: a_str = f"{a_val:.2f}" b_str = f"{b_val:.2f}" diff_str = f"{diff:+.2f}" print(f"{key:<15} {a_str:<15} {b_str:<15} {diff_str:<15}") print("-" * 60) print(f"\n【关键发现】") print(f"添加法国CAC40大类效果:") if b_metrics['大类数量'] > a_metrics['大类数量']: print(f" ✓ 大类数量增加 {b_metrics['大类数量'] - a_metrics['大类数量']}") if b_metrics['累计收益'] > a_metrics['累计收益']: print(f" ✓ 累计收益提升 {b_metrics['累计收益'] - a_metrics['累计收益']:.2%}") print(f" → 法国市场确实带来收益增益") elif b_metrics['累计收益'] < a_metrics['累计收益']: print(f" ✗ 累计收益下降 {a_metrics['累计收益'] - b_metrics['累计收益']:.2%}") print(f" → 法国动量信号可能不如德国强") if b_metrics['Sharpe'] > a_metrics['Sharpe']: print(f" ✓ Sharpe改善 {b_metrics['Sharpe'] - a_metrics['Sharpe']:.2f}") else: print(f" ✗ Sharpe下降 {a_metrics['Sharpe'] - b_metrics['Sharpe']:.2f}") print(f"\n【与德国DAX对比分析】") print(f" 当前配置:德国DAX (513030.SH) → EU大类") print(f" 新增配置:法国CAC40 (513080.SH) → FR大类") print(f" ") print(f" 德国 vs 法国特点:") print(f" ├─ 德国DAX:工业权重高(汽车、机械)") print(f" ├─ 法国CAC:奢侈品权重高(LV、欧莱雅)") print(f" └─ 两者风格不同,可能互补") print(f"\n【策略建议】") if b_metrics['累计收益'] > a_metrics['累计收益'] and b_metrics['Sharpe'] >= a_metrics['Sharpe'] * 0.95: print(f" 建议:添加法国CAC40(欧洲分散有效)") elif b_metrics['累计收益'] < a_metrics['累计收益'] * 0.95: print(f" 建议:暂不添加法国(收益损失较大)") print(f" 原因:法国动量信号可能不如德国DAX强") else: print(f" 建议:保持观察,欧洲分散效果有限") def main(): """主函数""" config_path = Path(__file__).parent.parent.parent / 'config' / 'strategies' / 'rotation.yaml' with open(config_path, 'r') as f: base_config = yaml.safe_load(f) # 添加 end_date from datetime import datetime base_config['end_date'] = datetime.now().strftime('%Y-%m-%d') print(f"\n{'='*60}") print(f" A/B测试:添加法国CAC40市场大类") print(f"{'='*60}") print(f"\n研究问题:") print(f" - 添加法国CAC40作为新大类(FR)") print(f" - 与德国DAX(EU)形成欧洲内部分散") print(f" - 德国工业风格 vs 法国奢侈品风格") print(f" - 验证欧洲分散是否有效") # A组:当前配置 a_metrics = run_backtest(base_config, "A组: 当前配置(仅德国DAX)") # B组:添加法国CAC40 config_with_france = create_config_with_france(base_config) b_metrics = run_backtest(config_with_france, "B组: 添加法国CAC40") # 对比 if a_metrics and b_metrics: compare_results(a_metrics, b_metrics) # 保存结果 results_df = pd.DataFrame([a_metrics, b_metrics]) results_path = Path(__file__).parent.parent.parent / 'results' / 'ab_test_france.csv' results_df.to_csv(results_path, index=False) print(f"\n对比结果已保存: {results_path}") if __name__ == '__main__': main()