de72e3ce1f
Second agent wave (skyhook-improve-v2, 14 DD-reduction families, each adversarially verified by 2 skeptics) beats the prior winner on the only unmet goal (DD<30%). Winner = ASYM_LS -> promoted to engine as SKH01_V2_DD: same signal (ptn_n=45, vola[35,95], vol_lo=0, exit-bars 24/16) but exits switched from ATR to FIXED-PCT ASYMMETRIC — long sl4%/tp10%, short sl2%(tighter)/tp8%. The tight short %-SL caps the per-trade loss that forms the maxDD in vol spikes. Verified (sk.study, independent re-run): standalone maxDD BTC 21.4% / ETH 27.4% (<30%), minFull +0.99, minHold +1.26, causality 0/400 both assets, fee-surviving to 0.40%RT, marginal vs TP01 ADDS (corr 0.09, in-sample edge, robust_oos, multicut, clean-year +0.57), blend 0.75*TP01+0.25*SKH uplift_hold +0.87; blend 50/50 full 1.84/hold 1.59/DD 10.7%. Plateau (not knife-edge); both skeptics holds_up=high, killer=null. Engine: per-direction short exit overrides (exit_mode_short/sl_*_short/tp_*_short), backward-compatible (None -> symmetric, V1/intermediate-winner unchanged). +3 tests (8/8 pass). Lessons: DD is cut by changing the exit MECHANISM (%-SL, L/S asymmetry, ensembles), NOT by entry-only kill-switch / vol-target / cadence. PATTERN_CONF killed as overfit (knife-edge). PCTL_DD unverified (rate-limit) and ENS_PARAM/TPSL_DD recency/hedge-loaded -> forward-monitor. NOT yet wired to live sleeves: re-verify blend@0.25 + causality on execution code before deploy. Includes both waves' research scripts (runs/SKH_* wave 1, runs/SKH2_* wave 2). Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
309 lines
15 KiB
Python
309 lines
15 KiB
Python
"""SKH_R_PCTL — REGIME variant: replace Chande01 regime with CAUSAL expanding/rolling
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PERCENTILE-RANK of ATR and volume (0-1), gate on rank bands.
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Hypothesis: Chande01 measures the *direction/momentum* of the vol/volume cycle (rising vs
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falling), mapped to 0-100. A percentile-RANK instead measures *where the current level sits*
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within its own history (is ATR/volume HIGH or LOW relative to the past). This is a more
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natural "regime" definition: trade only when vol/volume is in a chosen part of its own
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distribution. We test expanding (full history) and rolling-window percentile ranks.
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Causality: rank[i] uses only x[0..i] (expanding) or x[i-w+1..i] (rolling), INCLUSIVE of the
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current bar — this is legitimate because at HTF close[i] the bar's ATR/volume is known. The
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HTF feature is then merged backward to LTF on HTF-close timestamp (<= LTF close). We verify
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the truncated-prefix guard ourselves.
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Pattern/composer/entry/exit reuse the V1 Skyhook building blocks unchanged.
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"""
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from __future__ import annotations
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import sys
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sys.path.insert(0, "/opt/docker/PythagorasGoal/scripts/research/skyhook")
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import numpy as np
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import pandas as pd
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import skyhooklib as sk
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from src.backtest.harness import backtest_signals
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from src.strategies import skyhook as S
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from src.strategies.skyhook import SkyhookParams, HTF_MIN, LTF_MIN
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HOLDOUT = pd.Timestamp("2025-01-01", tz="UTC")
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FEE = sk.FEE_RT
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# ---------------------------------------------------------------------------
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# Causal percentile-rank (0-1). Fraction of the window strictly < current value,
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# computed inclusive of the current bar (legit: bar is closed). min_periods enforced.
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# ---------------------------------------------------------------------------
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def pctl_rank(x: np.ndarray, win: int | None, min_periods: int = 30) -> np.ndarray:
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"""Causal percentile rank in [0,1]. win=None -> EXPANDING; else rolling window.
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rank[i] = (#{x[j] < x[i]} + 0.5*#{x[j]==x[i]}) / count over the (expanding/rolling) window."""
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x = np.asarray(x, float)
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s = pd.Series(x)
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if win is None:
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# expanding rank: pandas .expanding().rank(pct=True) gives rank/count INCLUSIVE of i,
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# which counts <= (so the current bar's own value is included). Use 'average' to break ties.
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r = s.expanding(min_periods=min_periods).rank(pct=True)
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else:
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r = s.rolling(win, min_periods=min(min_periods, win)).rank(pct=True)
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return r.values # NaN until min_periods reached
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# ---------------------------------------------------------------------------
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# HTF feature df with percentile-rank regime gate + Donchian pattern (V1 pattern reused).
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# ---------------------------------------------------------------------------
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def pctl_htf_features(htf: pd.DataFrame, p: SkyhookParams,
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vola_win: int | None, vol_win: int | None,
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vola_lo: float, vola_hi: float,
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vol_lo: float, vol_hi: float) -> pd.DataFrame:
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"""Regime via CAUSAL percentile-rank (0-1) of ATR and volume; pattern via Donchian.
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Bands here are in [0,1] (percentile space), NOT 0-100 like Chande01."""
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atr_htf = S.atr(htf, p.atr_win)
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vola_rank = pctl_rank(atr_htf, vola_win)
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vol_rank = pctl_rank(htf["volume"].values, vol_win)
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ptn_long, ptn_short = S.donchian_breakout(htf, p.ptn_n)
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# regime_ok requires a valid (non-NaN) rank in band; NaN (warmup) -> False
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vr_ok = np.where(np.isfinite(vola_rank), (vola_rank >= vola_lo) & (vola_rank <= vola_hi), False)
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vol_ok = np.where(np.isfinite(vol_rank), (vol_rank >= vol_lo) & (vol_rank <= vol_hi), False)
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regime_ok = vr_ok & vol_ok
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comp_long = regime_ok & ptn_long
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comp_short = regime_ok & ptn_short
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if p.long_only:
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comp_short = np.zeros_like(comp_short, dtype=bool)
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close_ts = htf["timestamp"].astype("int64").values + HTF_MIN * 60 * 1000
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return pd.DataFrame({
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"close_ts": close_ts,
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"buz_vola": vola_rank, "buz_volume": vol_rank,
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"comp_long": comp_long.astype(bool), "comp_short": comp_short.astype(bool),
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})
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def pctl_entries(ltf: pd.DataFrame, htf: pd.DataFrame, p: SkyhookParams,
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vola_win, vol_win, vola_lo, vola_hi, vol_lo, vol_hi) -> list:
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"""Same entry/exit machinery as S.skyhook_entries, but regime from pctl features."""
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feat = pctl_htf_features(htf, p, vola_win, vol_win, vola_lo, vola_hi, vol_lo, vol_hi)
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m = S.merge_htf_to_ltf(ltf, feat)
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c = m["close"].values.astype(float)
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a = S.atr(m, p.ltf_atr_win)
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comp_long = np.nan_to_num(m["comp_long"].values).astype(bool)
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comp_short = np.nan_to_num(m["comp_short"].values).astype(bool)
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days = pd.to_datetime(m["datetime"]).dt.floor("D").values
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entries: list = [None] * len(m)
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count_today: dict = {}
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for i in range(len(m)):
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if not np.isfinite(a[i]) or a[i] <= 0:
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continue
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day = days[i]
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if count_today.get(day, 0) >= p.max_per_day:
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continue
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if comp_long[i]:
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direction, mb = 1, p.uscitalong
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elif comp_short[i]:
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direction, mb = -1, p.uscitashort
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else:
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continue
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if p.exit_mode == "atr":
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sl_off, tp_off = p.sl_atr * a[i], p.tp_atr * a[i]
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else:
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sl_off, tp_off = p.sl_pct * c[i], p.tp_pct * c[i]
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if direction == 1:
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sl, tp = c[i] - sl_off, c[i] + tp_off
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else:
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sl, tp = c[i] + sl_off, c[i] - tp_off
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entries[i] = {"dir": direction, "tp": float(tp), "sl": float(sl), "max_bars": int(mb)}
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count_today[day] = count_today.get(day, 0) + 1
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return entries
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# ---------------------------------------------------------------------------
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# Eval helpers
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# ---------------------------------------------------------------------------
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def _split(eq, idx, mask):
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e = eq[mask]
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if len(e) < 5:
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return dict(sharpe=0.0, ret=0.0, maxdd=0.0, n=int(len(e)))
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r = np.diff(e) / e[:-1]; r = r[np.isfinite(r)]
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ix = idx[mask]
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dt = pd.Series(ix).diff().dt.total_seconds().median() or 86400
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bpy = 86400 * 365.25 / dt
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sh = float(np.mean(r) / np.std(r) * np.sqrt(bpy)) if len(r) and np.std(r) > 0 else 0.0
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pk = np.maximum.accumulate(e); dd = float(np.max((pk - e) / pk))
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return dict(sharpe=round(sh, 3), ret=round(float(e[-1] / e[0] - 1), 4), maxdd=round(dd, 4), n=int(len(e)))
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def eval_cfg(cfg, p):
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"""Run both assets; return dict per asset with full+holdout."""
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out = {}
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for a in ("BTC", "ETH"):
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ltf, htf = sk.frames(a)
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ent = pctl_entries(ltf, htf, p, **cfg)
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m = backtest_signals(ltf, ent, fee_rt=FEE, leverage=1.0, asset=a, tf="230m")
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eq = m.equity
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idx = pd.DatetimeIndex(pd.to_datetime(m.eq_index, utc=True))
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hmask = np.asarray(idx >= HOLDOUT)
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full = dict(sharpe=round(m.sharpe, 3), ret=round(m.net_return, 4), maxdd=round(m.max_dd, 4),
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n_trades=int(m.n_trades), win_rate=round(m.win_rate, 1))
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hold = _split(eq, idx, hmask)
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out[a] = dict(full=full, hold=hold, _eq=eq, _idx=idx)
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return out
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def summarize(tag, res):
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mf = min(res[a]["full"]["sharpe"] for a in res)
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mh = min(res[a]["hold"]["sharpe"] for a in res)
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mt = min(res[a]["full"]["n_trades"] for a in res)
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mdd = max(res[a]["full"]["maxdd"] for a in res)
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print(f" [{tag}] minFull={mf:+.2f} minHold={mh:+.2f} minTr={mt} maxDD={mdd*100:.0f}%"
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f" | BTC F{res['BTC']['full']['sharpe']:+.2f}/H{res['BTC']['hold']['sharpe']:+.2f}"
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f" ETH F{res['ETH']['full']['sharpe']:+.2f}/H{res['ETH']['hold']['sharpe']:+.2f}")
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return dict(minFull=mf, minHold=mh, minTr=mt, maxDD=mdd, res=res)
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# Build a SkyhookParams matching V1 non-regime knobs (pattern + exits)
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def v1_like_params(**kw):
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base = dict(ptn_n=55, sl_atr=2.5, tp_atr=6.0) # V1 pattern/exit
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base.update(kw)
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return SkyhookParams(**base)
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# ---------------------------------------------------------------------------
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# Causality self-check on the structural variant
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# ---------------------------------------------------------------------------
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def check_causality(cfg, p, asset="BTC", tail=150):
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ltf, htf = sk.frames(asset)
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full = pctl_entries(ltf, htf, p, **cfg)
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n = len(ltf); bad = 0; checked = 0
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for frac in (0.80, 0.92):
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cut = int(n * frac)
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cut_ts = int(ltf["timestamp"].iloc[cut - 1])
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htf_cut = htf[htf["timestamp"] <= cut_ts].reset_index(drop=True)
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sub = pctl_entries(ltf.iloc[:cut].reset_index(drop=True), htf_cut, p, **cfg)
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for i in range(max(0, cut - tail), cut):
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checked += 1
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a, b = full[i], sub[i]
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if (a is None) != (b is None):
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bad += 1
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elif a is not None and (a["dir"] != b["dir"]
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or abs(a["sl"] - b["sl"]) > 1e-6
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or abs(a["tp"] - b["tp"]) > 1e-6):
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bad += 1
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return dict(ok=bool(bad == 0), mismatches=int(bad), checked=int(checked))
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if __name__ == "__main__":
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print("=== SKH_R_PCTL: percentile-rank regime ===\n")
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# --- V1 reference for comparison (Chande01 regime) ---
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print("--- V1 reference (Chande01 regime, ptn_n=55 sl2.5 tp6 vola35-95 vol0) ---")
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v1 = SkyhookParams(ptn_n=55, sl_atr=2.5, tp_atr=6.0, vola_lo=35, vola_hi=95, vol_lo=0.0)
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v1res = {}
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for a in ("BTC", "ETH"):
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r = sk.run_asset(a, v1, FEE)
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v1res[a] = dict(full=dict(sharpe=r["full"]["sharpe"], n_trades=r["full"]["n_trades"],
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maxdd=r["full"]["maxdd"]),
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hold=dict(sharpe=r["holdout"]["sharpe"]))
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print(f" V1 minFull={min(v1res[a]['full']['sharpe'] for a in v1res):+.2f}"
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f" minHold={min(v1res[a]['hold']['sharpe'] for a in v1res):+.2f}"
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f" maxDD={max(v1res[a]['full']['maxdd'] for a in v1res)*100:.0f}%"
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f" | BTC F{v1res['BTC']['full']['sharpe']:+.2f}/H{v1res['BTC']['hold']['sharpe']:+.2f}"
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f" ETH F{v1res['ETH']['full']['sharpe']:+.2f}/H{v1res['ETH']['hold']['sharpe']:+.2f}\n")
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p = v1_like_params() # same pattern/exit as V1; only regime changes
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# --- Sweep: percentile-rank regime bands ---
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# Two regime intuitions to test:
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# (A) HIGH-vol/HIGH-volume regime (breakout-friendly): ranks in upper band.
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# (B) MID regime (avoid blow-off + dead): ranks in a middle band.
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# vol_lo=0 means "no lower bound on volume" (mirror V1's vol_lo=0).
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print("--- EXPANDING percentile-rank sweep ---")
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cfgs = {
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# vola band, vol band, both expanding (win=None)
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"exp_volaHi_vol0": dict(vola_win=None, vol_win=None, vola_lo=0.35, vola_hi=0.95, vol_lo=0.0, vol_hi=1.0),
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"exp_volaMid_vol0": dict(vola_win=None, vol_win=None, vola_lo=0.30, vola_hi=0.80, vol_lo=0.0, vol_hi=1.0),
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"exp_volaHi_volHi": dict(vola_win=None, vol_win=None, vola_lo=0.35, vola_hi=0.95, vol_lo=0.40, vol_hi=1.0),
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"exp_volaLo_vol0": dict(vola_win=None, vol_win=None, vola_lo=0.0, vola_hi=0.70, vol_lo=0.0, vol_hi=1.0),
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"exp_volaWide_vol0": dict(vola_win=None, vol_win=None, vola_lo=0.20, vola_hi=1.0, vol_lo=0.0, vol_hi=1.0),
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}
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results = {}
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for tag, cfg in cfgs.items():
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results[tag] = (cfg, summarize(tag, eval_cfg(cfg, p)))
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print("\n--- ROLLING percentile-rank sweep (win=60 HTF bars ~ recent regime) ---")
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cfgs_roll = {
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"roll60_volaHi_vol0": dict(vola_win=60, vol_win=60, vola_lo=0.35, vola_hi=0.95, vol_lo=0.0, vol_hi=1.0),
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"roll60_volaMid_vol0": dict(vola_win=60, vol_win=60, vola_lo=0.30, vola_hi=0.80, vol_lo=0.0, vol_hi=1.0),
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"roll120_volaHi_vol0": dict(vola_win=120, vol_win=120, vola_lo=0.35, vola_hi=0.95, vol_lo=0.0, vol_hi=1.0),
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"roll60_volaHi_volHi": dict(vola_win=60, vol_win=60, vola_lo=0.35, vola_hi=0.95, vol_lo=0.40, vol_hi=1.0),
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}
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for tag, cfg in cfgs_roll.items():
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results[tag] = (cfg, summarize(tag, eval_cfg(cfg, p)))
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# --- Pick winner by minHold (subject to minFull>=0.5, minTr>=20) ---
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elig = {t: v for t, (c, v) in results.items()
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if v["minFull"] >= 0.5 and v["minTr"] >= 20}
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print(f"\n--- eligible (minFull>=0.5, minTr>=20): {list(elig.keys())} ---")
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if elig:
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win_tag = max(elig, key=lambda t: elig[t]["minHold"])
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else:
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# fall back to best minHold overall to report honestly
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win_tag = max(results, key=lambda t: results[t][1]["minHold"])
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win_cfg, win_v = results[win_tag][0], results[win_tag][1]
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print(f"\n*** WINNER = {win_tag} minFull={win_v['minFull']:+.2f} minHold={win_v['minHold']:+.2f}"
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f" minTr={win_v['minTr']} maxDD={win_v['maxDD']*100:.0f}% ***")
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print(f" cfg = {win_cfg}")
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# --- Causality on winner ---
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caus = check_causality(win_cfg, p, "BTC")
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print(f"\ncausality(BTC) = {caus}")
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caus_eth = check_causality(win_cfg, p, "ETH")
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print(f"causality(ETH) = {caus_eth}")
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# --- Fee sweep on winner (both assets, FULL) ---
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print("\n--- fee sweep on winner (FULL sharpe) ---")
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fee_ok_all = True
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for a in ("BTC", "ETH"):
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ltf, htf = sk.frames(a)
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ent_cache = pctl_entries(ltf, htf, p, **win_cfg)
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row = []
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for f in (0.0, 0.001, 0.002, 0.003):
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m = backtest_signals(ltf, ent_cache, fee_rt=f, leverage=1.0, asset=a, tf="230m")
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row.append((f, round(m.sharpe, 3)))
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sh030 = dict(row)[0.003]
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fee_ok_all = fee_ok_all and (sh030 > 0)
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print(f" {a}: " + " ".join(f"{f*100:.2f}%={s:+.2f}" for f, s in row))
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print(f" fee_survives 0.30%RT (both): {fee_ok_all}")
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# --- Marginal vs TP01 on winner ---
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# Build a daily 50/50 series the same way skyhooklib does, but with our entries.
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def daily_series(a, p, cfg):
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ltf, htf = sk.frames(a)
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ent = pctl_entries(ltf, htf, p, **cfg)
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m = backtest_signals(ltf, ent, fee_rt=FEE, leverage=1.0, asset=a, tf="230m")
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s = pd.Series(m.equity, index=pd.DatetimeIndex(pd.to_datetime(m.eq_index, utc=True)))
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return s.resample("1D").last().ffill().pct_change().dropna()
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import altlib as al
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sb = daily_series("BTC", p, win_cfg); se = daily_series("ETH", p, win_cfg)
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J = pd.concat({"BTC": sb, "ETH": se}, axis=1, join="inner").fillna(0.0)
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cand_daily = 0.5 * J["BTC"] + 0.5 * J["ETH"]
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marg = al.marginal_vs_tp01(cand_daily)
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print("\n--- marginal vs TP01 (winner) ---")
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print(f" corr_full={marg.get('corr_full')} corr_hold={marg.get('corr_hold')}")
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print(f" blend w25 uplift_hold={marg.get('blends',{}).get('w25',{}).get('uplift_hold')}")
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print(f" marginal_verdict={marg.get('marginal_verdict')} robust_oos={marg.get('robust_oos')}")
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print(f" has_insample_edge={marg.get('has_insample_edge')} is_hedge={marg.get('is_hedge')}")
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print(f" clean_year_uplift={marg.get('clean_year_uplift')} jackknife_min_uplift={marg.get('jackknife_min_uplift')}")
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# --- Final verdict echo ---
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print("\n=== SUMMARY ===")
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print(f"V1: minFull={min(v1res[a]['full']['sharpe'] for a in v1res):+.2f}"
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f" minHold={min(v1res[a]['hold']['sharpe'] for a in v1res):+.2f}"
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f" maxDD={max(v1res[a]['full']['maxdd'] for a in v1res)*100:.0f}%")
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print(f"PCTL {win_tag}: minFull={win_v['minFull']:+.2f} minHold={win_v['minHold']:+.2f}"
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f" maxDD={win_v['maxDD']*100:.0f}% causalityOK={caus['ok'] and caus_eth['ok']} feeOK={fee_ok_all}")
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