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- from __future__ import annotations
- import json
- from dataclasses import asdict
- from pathlib import Path
- import pandas as pd
- from dragon_branch_configs import (
- alpha_first_glued_selective_veto_config,
- alpha_first_selective_veto_config,
- workbook_preserving_config,
- )
- from dragon_strategy import DragonRuleEngine
- from dragon_strategy_config import StrategyConfig
- def _load_indicator_snapshot(base_dir: Path) -> pd.DataFrame:
- df = pd.read_csv(base_dir / "dragon_indicator_snapshot.csv", encoding="utf-8-sig")
- df["date"] = pd.to_datetime(df["date"])
- return df.set_index("date", drop=False)
- def _load_true_trade_events(base_dir: Path) -> pd.DataFrame:
- return pd.read_csv(base_dir / "true_trade_events.csv", encoding="utf-8-sig")
- def _profit_factor(series: pd.Series) -> float:
- gross_profit = series[series > 0].sum()
- gross_loss = -series[series < 0].sum()
- if gross_loss == 0:
- return float("inf") if gross_profit > 0 else 0.0
- return float(gross_profit / gross_loss)
- def _holding_bucket(days: int) -> str:
- if days <= 5:
- return "00-05d"
- if days <= 10:
- return "06-10d"
- if days <= 20:
- return "11-20d"
- if days <= 40:
- return "21-40d"
- return "41d+"
- def _format_pct(value: float) -> str:
- if pd.isna(value):
- return "NA"
- if value == float("inf"):
- return "inf"
- return f"{value:.2%}"
- def _format_num(value: float) -> str:
- if pd.isna(value):
- return "NA"
- if value == float("inf"):
- return "inf"
- return f"{value:.2f}"
- def _event_match(strategy_events: pd.DataFrame, workbook_events: pd.DataFrame, side: str) -> tuple[int, int, int]:
- wb = set(workbook_events[(workbook_events["side"] == side) & (workbook_events["layer"] == "real_trade")]["date"])
- st = set(strategy_events[(strategy_events["side"] == side) & (strategy_events["layer"] == "real_trade")]["date"])
- return len(wb & st), len(wb - st), len(st - wb)
- def _segment_stats(df: pd.DataFrame) -> dict[str, float | int]:
- if df.empty:
- return {
- "trades": 0,
- "win_rate": float("nan"),
- "avg_return": float("nan"),
- "profit_factor": float("nan"),
- "compounded_return": float("nan"),
- }
- returns = df["return_pct"].astype(float)
- return {
- "trades": int(len(df)),
- "win_rate": float((returns > 0).mean()),
- "avg_return": float(returns.mean()),
- "profit_factor": _profit_factor(returns),
- "compounded_return": float((1.0 + returns).prod() - 1.0),
- }
- def _build_walk_forward(trades: pd.DataFrame, branch_name: str) -> pd.DataFrame:
- years = sorted(int(year) for year in trades["sell_year"].unique())
- rows: list[dict[str, object]] = []
- for idx, test_year in enumerate(years):
- if idx >= 1:
- train_years = years[:idx]
- train_df = trades[trades["sell_year"].isin(train_years)]
- test_df = trades[trades["sell_year"] == test_year]
- rows.append(
- {
- "branch": branch_name,
- "scheme": "anchored_expanding",
- "train_start_year": train_years[0],
- "train_end_year": train_years[-1],
- "test_year": test_year,
- **{f"train_{k}": v for k, v in _segment_stats(train_df).items()},
- **{f"test_{k}": v for k, v in _segment_stats(test_df).items()},
- }
- )
- if idx >= 3:
- train_years = years[idx - 3 : idx]
- train_df = trades[trades["sell_year"].isin(train_years)]
- test_df = trades[trades["sell_year"] == test_year]
- rows.append(
- {
- "branch": branch_name,
- "scheme": "rolling_3y",
- "train_start_year": train_years[0],
- "train_end_year": train_years[-1],
- "test_year": test_year,
- **{f"train_{k}": v for k, v in _segment_stats(train_df).items()},
- **{f"test_{k}": v for k, v in _segment_stats(test_df).items()},
- }
- )
- return pd.DataFrame(rows)
- def _run_branch(
- name: str,
- config: StrategyConfig,
- indicator_df: pd.DataFrame,
- workbook_events: pd.DataFrame,
- first_date: str,
- last_date: str,
- ) -> tuple[dict[str, object], pd.DataFrame, pd.DataFrame, pd.DataFrame]:
- engine = DragonRuleEngine(config=config)
- events, trades = engine.run(indicator_df)
- events = events[(events["date"] >= first_date) & (events["date"] <= last_date)].copy()
- trades = trades[
- (trades["buy_date"] >= first_date)
- & (trades["buy_date"] <= last_date)
- & (trades["sell_date"] >= first_date)
- & (trades["sell_date"] <= last_date)
- ].copy()
- buy_overlap, buy_missing, buy_extra = _event_match(events, workbook_events, "BUY")
- sell_overlap, sell_missing, sell_extra = _event_match(events, workbook_events, "SELL")
- trades["branch"] = name
- trades["sell_dt"] = pd.to_datetime(trades["sell_date"])
- trades["sell_year"] = trades["sell_dt"].dt.year.astype(int)
- trades["holding_bucket"] = trades["holding_days"].astype(int).map(_holding_bucket)
- returns = trades["return_pct"].astype(float) if not trades.empty else pd.Series(dtype=float)
- summary = {
- "branch": name,
- "trades": int(len(trades)),
- "win_rate": float((returns > 0).mean()) if not trades.empty else float("nan"),
- "avg_return": float(returns.mean()) if not trades.empty else float("nan"),
- "median_return": float(returns.median()) if not trades.empty else float("nan"),
- "profit_factor": _profit_factor(returns) if not trades.empty else float("nan"),
- "real_buy_overlap": int(buy_overlap),
- "real_buy_missing": int(buy_missing),
- "real_buy_extra": int(buy_extra),
- "real_sell_overlap": int(sell_overlap),
- "real_sell_missing": int(sell_missing),
- "real_sell_extra": int(sell_extra),
- "short_00_05d_avg_return": float(trades[trades["holding_bucket"] == "00-05d"]["return_pct"].mean()),
- "short_06_10d_avg_return": float(trades[trades["holding_bucket"] == "06-10d"]["return_pct"].mean()),
- }
- bucket_rows: list[dict[str, object]] = []
- for bucket, group in trades.groupby("holding_bucket", dropna=False):
- bucket_rows.append(
- {
- "branch": name,
- "holding_bucket": bucket,
- "trades": int(len(group)),
- "win_rate": float((group["return_pct"] > 0).mean()),
- "avg_return": float(group["return_pct"].mean()),
- "profit_factor": _profit_factor(group["return_pct"]),
- }
- )
- holding_df = pd.DataFrame(bucket_rows).sort_values("holding_bucket")
- walk_forward_df = _build_walk_forward(trades, name)
- return summary, trades, holding_df, walk_forward_df
- def _config_snapshot(config: StrategyConfig) -> dict[str, object]:
- snapshot = asdict(config)
- snapshot["disabled_rules"] = sorted(config.disabled_rules)
- return snapshot
- def _trade_set(df: pd.DataFrame) -> set[tuple[str, str, str, str]]:
- return set(zip(df["buy_date"], df["sell_date"], df["buy_reason"], df["sell_reason"]))
- def _trade_diff(source: pd.DataFrame, target: pd.DataFrame, removed_label: str, added_label: str) -> pd.DataFrame:
- source_set = _trade_set(source)
- target_set = _trade_set(target)
- rows: list[dict[str, object]] = []
- for row in sorted(source_set - target_set):
- rows.append(
- {
- "change_type": removed_label,
- "buy_date": row[0],
- "sell_date": row[1],
- "buy_reason": row[2],
- "sell_reason": row[3],
- }
- )
- for row in sorted(target_set - source_set):
- rows.append(
- {
- "change_type": added_label,
- "buy_date": row[0],
- "sell_date": row[1],
- "buy_reason": row[2],
- "sell_reason": row[3],
- }
- )
- return pd.DataFrame(rows)
- def _wf_stats(df: pd.DataFrame, scheme: str) -> tuple[int, int, float]:
- view = df[df["scheme"] == scheme]
- positive = int((view["test_avg_return"] > 0).sum()) if not view.empty else 0
- total = int(len(view))
- avg_oos = float(view["test_avg_return"].mean()) if not view.empty else float("nan")
- return positive, total, avg_oos
- def main() -> None:
- base_dir = Path(__file__).resolve().parent
- indicator_df = _load_indicator_snapshot(base_dir)
- workbook_events = _load_true_trade_events(base_dir)
- first_date = workbook_events["date"].min()
- last_date = workbook_events["date"].max()
- branches = [
- ("workbook_preserving", workbook_preserving_config()),
- ("alpha_first_selective_veto", alpha_first_selective_veto_config()),
- ("alpha_first_glued_selective_veto", alpha_first_glued_selective_veto_config()),
- ]
- summaries: list[dict[str, object]] = []
- trades_by_branch: dict[str, pd.DataFrame] = {}
- holding_frames: list[pd.DataFrame] = []
- walk_frames: list[pd.DataFrame] = []
- for name, config in branches:
- summary, trades, holding_df, walk_df = _run_branch(
- name,
- config,
- indicator_df,
- workbook_events,
- first_date,
- last_date,
- )
- summaries.append(summary)
- trades_by_branch[name] = trades
- holding_frames.append(holding_df)
- walk_frames.append(walk_df)
- summary_df = pd.DataFrame(summaries)
- summary_df.to_csv(base_dir / "dragon_glued_alpha_candidate_summary.csv", index=False, encoding="utf-8-sig")
- branch_lookup = {row["branch"]: row for row in summaries}
- workbook_row = branch_lookup["workbook_preserving"]
- alpha_row = branch_lookup["alpha_first_selective_veto"]
- glued_row = branch_lookup["alpha_first_glued_selective_veto"]
- comparison_rows: list[dict[str, object]] = []
- for metric in [
- "trades",
- "win_rate",
- "avg_return",
- "median_return",
- "profit_factor",
- "real_buy_overlap",
- "real_sell_overlap",
- "short_00_05d_avg_return",
- "short_06_10d_avg_return",
- ]:
- comparison_rows.append(
- {
- "metric": metric,
- "workbook_preserving": workbook_row[metric],
- "alpha_first_selective_veto": alpha_row[metric],
- "alpha_first_glued_selective_veto": glued_row[metric],
- "delta_glued_minus_alpha": glued_row[metric] - alpha_row[metric],
- "delta_glued_minus_workbook": glued_row[metric] - workbook_row[metric],
- }
- )
- pd.DataFrame(comparison_rows).to_csv(
- base_dir / "dragon_glued_alpha_candidate_comparison.csv",
- index=False,
- encoding="utf-8-sig",
- )
- pd.concat(holding_frames, ignore_index=True).to_csv(
- base_dir / "dragon_glued_alpha_candidate_holding_buckets.csv",
- index=False,
- encoding="utf-8-sig",
- )
- combined_walk = pd.concat(walk_frames, ignore_index=True)
- combined_walk.to_csv(
- base_dir / "dragon_glued_alpha_candidate_walk_forward.csv",
- index=False,
- encoding="utf-8-sig",
- )
- diff_vs_alpha = _trade_diff(
- trades_by_branch["alpha_first_selective_veto"],
- trades_by_branch["alpha_first_glued_selective_veto"],
- "removed_from_glued_candidate_vs_alpha",
- "added_in_glued_candidate_vs_alpha",
- )
- diff_vs_workbook = _trade_diff(
- trades_by_branch["workbook_preserving"],
- trades_by_branch["alpha_first_glued_selective_veto"],
- "removed_from_glued_candidate_vs_workbook",
- "added_in_glued_candidate_vs_workbook",
- )
- diff_vs_alpha.to_csv(
- base_dir / "dragon_glued_alpha_candidate_trade_diff_vs_alpha.csv",
- index=False,
- encoding="utf-8-sig",
- )
- diff_vs_workbook.to_csv(
- base_dir / "dragon_glued_alpha_candidate_trade_diff_vs_workbook.csv",
- index=False,
- encoding="utf-8-sig",
- )
- (base_dir / "dragon_glued_alpha_candidate_config_snapshot.json").write_text(
- json.dumps(_config_snapshot(alpha_first_glued_selective_veto_config()), indent=2, ensure_ascii=False) + "\n",
- encoding="utf-8",
- )
- wb_anchor_pos, wb_anchor_total, wb_anchor_avg = _wf_stats(combined_walk[combined_walk["branch"] == "workbook_preserving"], "anchored_expanding")
- af_anchor_pos, af_anchor_total, af_anchor_avg = _wf_stats(
- combined_walk[combined_walk["branch"] == "alpha_first_selective_veto"],
- "anchored_expanding",
- )
- glued_anchor_pos, glued_anchor_total, glued_anchor_avg = _wf_stats(
- combined_walk[combined_walk["branch"] == "alpha_first_glued_selective_veto"],
- "anchored_expanding",
- )
- wb_roll_pos, wb_roll_total, wb_roll_avg = _wf_stats(combined_walk[combined_walk["branch"] == "workbook_preserving"], "rolling_3y")
- af_roll_pos, af_roll_total, af_roll_avg = _wf_stats(
- combined_walk[combined_walk["branch"] == "alpha_first_selective_veto"],
- "rolling_3y",
- )
- glued_roll_pos, glued_roll_total, glued_roll_avg = _wf_stats(
- combined_walk[combined_walk["branch"] == "alpha_first_glued_selective_veto"],
- "rolling_3y",
- )
- removed_vs_alpha = diff_vs_alpha[diff_vs_alpha["change_type"] == "removed_from_glued_candidate_vs_alpha"].copy()
- added_vs_alpha = diff_vs_alpha[diff_vs_alpha["change_type"] == "added_in_glued_candidate_vs_alpha"].copy()
- removed_glued_count = int((removed_vs_alpha["buy_reason"] == "glued_buy").sum()) if not removed_vs_alpha.empty else 0
- added_replacement_text = "none"
- if not added_vs_alpha.empty:
- added_row = added_vs_alpha.iloc[0]
- added_replacement_text = (
- f"{added_row['buy_date']} -> {added_row['sell_date']} / "
- f"{added_row['buy_reason']} -> {added_row['sell_reason']}"
- )
- lines = [
- "# Dragon Glued Alpha Candidate Review",
- "",
- "## Branches",
- "- `workbook_preserving`: official reconstruction baseline.",
- "- `alpha_first_selective_veto`: current formal alpha-first branch.",
- "- `alpha_first_glued_selective_veto`: alpha-first branch plus narrow glued hot/low veto.",
- "",
- "## Headline Comparison",
- f"- workbook_preserving: trades `{int(workbook_row['trades'])}`, avg_return `{_format_pct(float(workbook_row['avg_return']))}`, profit_factor `{_format_num(float(workbook_row['profit_factor']))}`, real BUY / SELL `{int(workbook_row['real_buy_overlap'])}/{int(workbook_row['real_sell_overlap'])}`",
- f"- alpha_first_selective_veto: trades `{int(alpha_row['trades'])}`, avg_return `{_format_pct(float(alpha_row['avg_return']))}`, profit_factor `{_format_num(float(alpha_row['profit_factor']))}`, real BUY / SELL `{int(alpha_row['real_buy_overlap'])}/{int(alpha_row['real_sell_overlap'])}`",
- f"- alpha_first_glued_selective_veto: trades `{int(glued_row['trades'])}`, avg_return `{_format_pct(float(glued_row['avg_return']))}`, profit_factor `{_format_num(float(glued_row['profit_factor']))}`, real BUY / SELL `{int(glued_row['real_buy_overlap'])}/{int(glued_row['real_sell_overlap'])}`",
- "",
- "## Short-Holding Impact",
- f"- `00-05d`: workbook `{_format_pct(float(workbook_row['short_00_05d_avg_return']))}`, alpha `{_format_pct(float(alpha_row['short_00_05d_avg_return']))}`, glued candidate `{_format_pct(float(glued_row['short_00_05d_avg_return']))}`",
- f"- `06-10d`: workbook `{_format_pct(float(workbook_row['short_06_10d_avg_return']))}`, alpha `{_format_pct(float(alpha_row['short_06_10d_avg_return']))}`, glued candidate `{_format_pct(float(glued_row['short_06_10d_avg_return']))}`",
- "",
- "## Walk-Forward Comparison",
- f"- Anchored expanding: workbook `{wb_anchor_pos}/{wb_anchor_total}` positive, avg `{_format_pct(wb_anchor_avg)}`; alpha `{af_anchor_pos}/{af_anchor_total}`, avg `{_format_pct(af_anchor_avg)}`; glued `{glued_anchor_pos}/{glued_anchor_total}`, avg `{_format_pct(glued_anchor_avg)}`",
- f"- Rolling 3Y: workbook `{wb_roll_pos}/{wb_roll_total}` positive, avg `{_format_pct(wb_roll_avg)}`; alpha `{af_roll_pos}/{af_roll_total}`, avg `{_format_pct(af_roll_avg)}`; glued `{glued_roll_pos}/{glued_roll_total}`, avg `{_format_pct(glued_roll_avg)}`",
- "",
- "## Trade-Diff Summary",
- f"- glued candidate vs alpha-first: removed `{int((diff_vs_alpha['change_type'] == 'removed_from_glued_candidate_vs_alpha').sum())}`, added `{int((diff_vs_alpha['change_type'] == 'added_in_glued_candidate_vs_alpha').sum())}`",
- f"- glued candidate vs workbook: removed `{int((diff_vs_workbook['change_type'] == 'removed_from_glued_candidate_vs_workbook').sum())}`, added `{int((diff_vs_workbook['change_type'] == 'added_in_glued_candidate_vs_workbook').sum())}`",
- f"- Removed vs alpha-first are almost entirely the intended target: `{removed_glued_count}` of `{int(len(removed_vs_alpha))}` are `glued_buy` trades.",
- f"- Added vs alpha-first is only a small fallback reroute: `{added_replacement_text}`.",
- "",
- "## Quant Judgment",
- "- The glued candidate clearly improves in-sample trade quality and short-holding drag beyond the current alpha-first branch.",
- "- The cost is no longer narrow: overlap drops materially from `102/101` to `90/89`, which is a much larger governance step than the current deep-oversold selective veto branch.",
- "- This means the glued candidate is a credible research branch, but not yet a clean replacement for the current formal alpha-first baseline.",
- "- Recommended governance: keep `alpha_first_selective_veto` as the official alpha-first baseline; treat `alpha_first_glued_selective_veto` as the next research branch for further residual attribution and out-of-sample stability review.",
- ]
- (base_dir / "dragon_glued_alpha_candidate_review.md").write_text("\n".join(lines) + "\n", encoding="utf-8")
- if __name__ == "__main__":
- main()
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