b4ec92734c
L'analisi di robustezza affonda lo "earns_slot=True" di ERM: era prodotto da selezione-sull'hold-out + coda 2026 + multiple-testing non corretto. A) deflated-Sharpe FAIL: 0.00 (tutti 122 trial) / 0.16 (no-TOD) / 0.24 (solo-ERM) << 0.95 B) selezione in-sample-only -> ALTRA cella (long-flat, corr->TP01 0.53) = NEUTRAL, no slot C) ensemble del plateau (no cherry-pick) -> ADDS ma robust_oos=False -> no slot D) uplift FULL solo +0.10, negativo 2021/2022; uplift HOLD +0.30 concentrato nel 2026 => ERM SCARTATO come sleeve. Conferma ennesima del soffitto BTC/ETH-direzionale ~1.3. Lezione CODIFICATA in altlib (LESSON 4, test in tests/test_harness_realism.py): - deflated_sharpe() Bailey & Lopez de Prado, PASS >= 0.95 - select_cell_insample() scelta cella col solo Sharpe pre-HOLDOUT (no peeking) - study_family_honest() gate combinato: earns_slot[cella in-sample] AND DSR>=0.95 Regola: una strategia direzionale grid-searched si giudica con study_family_honest, non chiamando study_marginal sulla cella a max hold-out. Verificato end-to-end su ERM (earns_slot_honest=False). Chiude il punto cieco gemello di CC01. Diario aggiornato (verdetto downgrade), CLAUDE.md aggiornato. Test 119/119 verdi. Nessun impatto live (branch separato). Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
139 lines
6.3 KiB
Python
139 lines
6.3 KiB
Python
"""Locks the two harness-realism gates codified from the 2026-06-21 intraday wave:
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* day_boundary_robust — a calendar/session/hour signal whose marginal uplift INVERTS when
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the UTC day boundary is shifted is a labeling ARTIFACT (this killed open_drive). A price
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signal that ignores the calendar is INVARIANT; a genuine calendar effect is ROBUST.
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* eval_weights_smallcap — at ~$600 a sub-min_order rebalance can't execute; the modeled
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proportional fee on thousands of sub-dollar moves is a fiction. The realistic evaluator
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skips them.
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"""
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import sys
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from pathlib import Path
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import numpy as np
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import pandas as pd
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ROOT = Path(__file__).resolve().parents[1]
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sys.path.insert(0, str(ROOT / "scripts" / "research" / "alt"))
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import altlib as al # noqa: E402
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# --- LESSON 1: day-boundary robustness -------------------------------------------------
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def test_day_boundary_invariant_for_price_signal():
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"""A signal that never reads the calendar is INVARIANT to the day-boundary shift."""
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def mom(df):
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c = df["close"].values
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return np.tanh(3 * (c / al.sma(c, 200) - 1))
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r = al.day_boundary_robust(mom, offsets=(0, 6, 12, 18))
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assert r["verdict"] == "INVARIANT"
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assert r["spread"] == 0.0
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assert r["calendar_sensitive"] is False
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def test_day_boundary_flags_calendar_artifact():
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"""A pure hour-of-day bias is calendar-sensitive: its uplift swings with the boundary
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(the open_drive failure mode). It must be flagged, never INVARIANT."""
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def hourbias(df):
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h = pd.to_datetime(df["datetime"], utc=True).dt.hour.values
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return np.where(h < 8, 1.0, 0.0)
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r = al.day_boundary_robust(hourbias, offsets=(0, 6, 12, 18))
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assert r["calendar_sensitive"] is True
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assert r["spread"] > 0.05
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assert r["verdict"] != "INVARIANT"
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# --- LESSON 2: small-capital fill realism ----------------------------------------------
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def test_smallcap_skips_subdollar_rebalances():
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"""Thousands of sub-min_order wiggles (a vol-target overlay's fiction) do NOT execute."""
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df = al.get("BTC", "1h")
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rng = np.random.default_rng(0)
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micro = 0.5 + 0.001 * rng.standard_normal(len(df)) # tiny drift around 0.5
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r = al.eval_weights_smallcap(df, micro, capital=600.0, min_order=5.0)
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modeled_turn = al.eval_weights(df, micro)["turnover_per_year"]
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assert r["executed_turnover_per_year"] < modeled_turn * 0.2
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assert r["n_executed_trades"] < len(df) * 0.05
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def test_smallcap_keeps_real_trades():
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"""A low-turnover signal with genuine large moves executes them, ~no Sharpe haircut."""
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df = al.get("BTC", "1h")
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step = np.zeros(len(df)); step[: len(df) // 2] = 0.5; step[len(df) // 2:] = -0.5
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r = al.eval_weights_smallcap(df, step, capital=600.0, min_order=5.0)
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assert r["n_executed_trades"] >= 2
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assert abs(r["sharpe_haircut"]) < 0.2
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# --- LESSON 3: look-ahead (online-consistency) guard -----------------------------------
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def test_causality_passes_causal_signal():
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"""A causal signal recomputed on a prefix matches the full run on its tail."""
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def mom(df):
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c = df["close"].values
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return np.tanh(3 * (c / al.sma(c, 200) - 1))
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r = al.causality_ok(mom, tf="1h")
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assert r["ok"] is True
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assert r["max_tail_diff"] == 0.0
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def test_causality_flags_lookahead():
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"""A signal that reads tomorrow's move (future peek) is disqualified."""
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def leaky(df):
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c = df["close"].values
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f = np.zeros(len(c)); f[:-1] = np.sign(c[1:] - c[:-1]) # uses close[i+1]
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return f
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r = al.causality_ok(leaky, tf="1h")
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assert r["ok"] is False
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# --- LESSON 4: selection-on-holdout gate (codified 2026-06-29, filone B) ----------------
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def _mom_factory():
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"""Tiny continuous momentum factory parametrized by SMA lookback (for grid tests)."""
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def factory(tf, win):
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def fn(df):
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c = df["close"].values.astype(float)
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return al.vol_target(np.tanh(3 * (c / al.sma(c, win) - 1)), df, 0.20, 30, 2.0)
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return fn
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return factory
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def test_deflated_sharpe_penalizes_multiple_testing():
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"""The SAME Sharpe deflates toward 0 when it was the best of MANY wide-dispersion trials,
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but survives when it stood alone among a few tight ones (Bailey & Lopez de Prado)."""
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rng = np.random.default_rng(0)
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T = 1500
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idx = pd.date_range("2020-01-01", periods=T, freq="D", tz="UTC")
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sr_target = 1.0
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ret = pd.Series(0.01 * (sr_target / np.sqrt(365.25) + rng.standard_normal(T)), index=idx)
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sr_ann = al._sh(ret)
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many = list(np.linspace(-3.0, 2.5, 120)) # 120 wide-spread trials
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few = [0.1, 0.0, -0.1, 0.05] # 4 tight trials
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dsr_many, sr0_many = al.deflated_sharpe(sr_ann, many, ret)
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dsr_few, sr0_few = al.deflated_sharpe(sr_ann, few, ret)
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assert sr0_many > sr0_few # more/wider search -> higher null max
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assert dsr_many < dsr_few # multiple-testing is penalized
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assert dsr_many < 0.5 and dsr_few > 0.8
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assert 0.0 <= dsr_many <= 1.0 and 0.0 <= dsr_few <= 1.0
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def test_select_cell_insample_ranks_by_insample_only():
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"""The cell chosen must be the IN-SAMPLE (<HOLDOUT) Sharpe leader — never the hold-out's —
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and every searched cell's FULL Sharpe is returned for deflation."""
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factory = _mom_factory()
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grid = [dict(win=50), dict(win=150)]
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sel = al.select_cell_insample(factory, grid, ("12h",))
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assert sel["chosen"] is not None
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assert len(sel["all_full_sharpe"]) == len(grid) # one trial per (tf,cell)
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best_is = max(r["insample_sharpe"] for r in sel["rows"])
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assert sel["chosen"]["insample_sharpe"] == best_is # picked by in-sample, not hold-out
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def test_study_family_honest_contract():
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"""earns_slot_honest is exactly (in-sample-picked cell earns_slot) AND (deflated-Sharpe PASS).
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Both sub-gates must be enforced; the combined flag is their conjunction."""
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factory = _mom_factory()
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grid = [dict(win=50), dict(win=150)]
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rep = al.study_family_honest("MOMTEST", factory, grid, ("12h",))
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for k in ("chosen", "earns_slot_marginal", "deflated_sharpe", "dsr_pass", "earns_slot_honest"):
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assert k in rep
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assert rep["n_cells"] == len(grid)
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assert isinstance(rep["earns_slot_honest"], bool)
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assert rep["earns_slot_honest"] == bool(rep["earns_slot_marginal"] and rep["dsr_pass"])
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