Files
QuantEngineByItz/tools/build_walk_forward_bootstrap_v1.py
T
kjh2064 aedabdd37b feat(quant-engine): v8.9 제안서 P0-P3 로드맵 채택 — 15개 의사결정 엔진 신규 구현
suggest/quant_investment_engine_v8_9_portfolio_optimizer_canonical_refactored.yaml의
implementation_todo_v8_9(P0~P4) 전체를 spec/tool/golden case 레벨로 구현.

- P0: PORTFOLIO_TRANSITION_UTILITY_V1, SELL_LOT_PARETO_SELECTOR_V1, FORECAST_SIMULATION_ENGINE_V1
- P1: SECTOR_EXPOSURE_GRAPH_V1/LEADER_LIFECYCLE_GATE_V1, EXECUTION_CAPACITY_LADDER_V1, MODEL_GOVERNANCE_KILL_SWITCH_V1
- P2: SCENARIO_SHOCK_MATRIX_V1, TRANSITION_SET_ENUMERATOR_V1, IMMUTABLE_DECISION_LEDGER_V1, EXECUTION_PLAN_COMPILER_V1
- P3: STATE_VECTOR_CONSTRUCTOR_V1, WALK_FORWARD_BOOTSTRAP_V1, TRANSITION_SET_ENUMERATOR_V1(MRC/CVaR 확장),
      REBALANCE_CADENCE_GATE_V1, WEEKLY_LEGACY_TRANSFER_PLAN_V1

기존 regime/cluster 연동 정책 수치(현금방어선, 반도체 cap)는 그대로 유지하고 신규 cap 필드만 추가.
spec/09_decision_flow.yaml과 runtime/active_artifact_manifest.yaml에 전 엔진 배선 완료.
governance/todo/v8_9_p{0,1,2,3}_adoption_plan.yaml에 각 단계 작업 추적 기록.

검증: validate_specs/validate_golden_coverage_100(100%)/validate_calibration_registry_v1/
validate_schema_model_generation_v1/validate_agents_shrink_v1 전부 PASS. golden test 53/53 PASS.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-18 00:06:52 +09:00

125 lines
4.8 KiB
Python

#!/usr/bin/env python3
"""WALK_FORWARD_BOOTSTRAP_V1 — spec/formulas/domains/simulation.yaml.
Generates net_profit_distribution_after_tax_fee_slippage from historical_returns via
walk-forward (non-overlapping in/out-of-sample split, block resample on out-of-sample
only) or regime-matched (filter + resample-with-replacement) bootstrapping.
governance/todo/v8_9_p3_adoption_plan.yaml P3-B.
Hard rule: no historical_returns or fewer than 2 samples -> DATA_MISSING. Never
interpolate or fabricate a distribution.
"""
from __future__ import annotations
import argparse
import json
import random
from pathlib import Path
ROOT = Path(__file__).resolve().parents[1]
DEFAULT_HISTORICAL_RETURNS = ROOT / "Temp" / "historical_returns_v1.json"
DEFAULT_OUT = ROOT / "Temp" / "walk_forward_bootstrap_v1.json"
BLOCK_SIZE = 5
def _load(path: Path) -> dict:
if not path.exists():
return {}
try:
data = json.loads(path.read_text(encoding="utf-8"))
return data if isinstance(data, dict) else {}
except Exception:
return {}
def walk_forward_resample(historical_returns: list[dict], resample_count: int, rng: random.Random) -> list[float]:
sorted_returns = sorted(historical_returns, key=lambda r: r["date"])
split_idx = int(len(sorted_returns) * 0.7)
out_of_sample = sorted_returns[split_idx:]
if len(out_of_sample) < 2:
return []
values = [r["net_return_after_cost_pct"] for r in out_of_sample]
distribution = []
for _ in range(resample_count):
start = rng.randrange(0, max(1, len(values) - BLOCK_SIZE + 1))
block = values[start:start + BLOCK_SIZE]
distribution.append(sum(block) / len(block))
return distribution
def regime_matched_resample(
historical_returns: list[dict], current_regime_state: str, resample_count: int, rng: random.Random
) -> list[float]:
filtered = [r["net_return_after_cost_pct"] for r in historical_returns if r.get("regime_state") == current_regime_state]
if len(filtered) < 2:
return []
return [rng.choice(filtered) for _ in range(resample_count)]
def main() -> int:
ap = argparse.ArgumentParser()
ap.add_argument("--historical-returns", default=str(DEFAULT_HISTORICAL_RETURNS))
ap.add_argument("--current-regime-state", default=None)
ap.add_argument("--bootstrap-method", default="walk_forward", choices=["walk_forward", "regime_matched"])
ap.add_argument("--resample-count", type=int, default=1000)
ap.add_argument("--out", default=str(DEFAULT_OUT))
ap.add_argument("--seed", type=int, default=None)
args = ap.parse_args()
doc = _load(Path(args.historical_returns))
historical_returns = doc.get("historical_returns") if isinstance(doc.get("historical_returns"), list) else None
if not historical_returns or len(historical_returns) < 2:
result = {
"formula_id": "WALK_FORWARD_BOOTSTRAP_V1",
"gate": "DATA_MISSING",
"net_profit_distribution_after_tax_fee_slippage": None,
"sample_count_total": len(historical_returns) if historical_returns else 0,
"sample_count_same_regime": 0,
"source_paths": [str(Path(args.historical_returns))],
}
out = Path(args.out)
out.write_text(json.dumps(result, ensure_ascii=False, indent=2), encoding="utf-8")
print(json.dumps(result, ensure_ascii=False, indent=2))
return 0
rng = random.Random(args.seed)
if args.bootstrap_method == "walk_forward":
distribution = walk_forward_resample(historical_returns, args.resample_count, rng)
else:
distribution = regime_matched_resample(historical_returns, args.current_regime_state, args.resample_count, rng)
sample_count_same_regime = len(
[r for r in historical_returns if r.get("regime_state") == args.current_regime_state]
)
if not distribution:
result = {
"formula_id": "WALK_FORWARD_BOOTSTRAP_V1",
"gate": "DATA_MISSING",
"net_profit_distribution_after_tax_fee_slippage": None,
"sample_count_total": len(historical_returns),
"sample_count_same_regime": sample_count_same_regime,
"source_paths": [str(Path(args.historical_returns))],
}
else:
result = {
"formula_id": "WALK_FORWARD_BOOTSTRAP_V1",
"gate": "PASS",
"net_profit_distribution_after_tax_fee_slippage": distribution,
"sample_count_total": len(historical_returns),
"sample_count_same_regime": sample_count_same_regime,
"source_paths": [str(Path(args.historical_returns))],
}
out = Path(args.out)
out.write_text(json.dumps(result, ensure_ascii=False, indent=2), encoding="utf-8")
print(json.dumps(result, ensure_ascii=False, indent=2))
return 0
if __name__ == "__main__":
raise SystemExit(main())