feat(XS01): affina con blend di lookback [30,90] — FULL 0.80->1.10, portafoglio 1.41->1.48

Come TP01 fonde gli orizzonti, XS01 ora fonde 30g+90g del momentum cross-sectional (z-score per
lookback, mediato). Sweep: [30,90] e' il sweet spot (fonde i due singoli robusti, anti-overfit):
XS01 standalone FULL 0.80->1.10, DD 21%->14%, corr a TP01 -0.06->-0.12, 100% anni+. Portafoglio
TP01 70 + XS01 30: FULL Sh 1.41->1.48, DD 5.2%->4.6%, ~€/g 1.65->1.78; hold-out 1.15->1.06 (calo
marginale dentro il rumore). Piu' robusto (due orizzonti) + diversifica meglio -> promosso.

sleeves.XS_CFG lookbacks=(30,90), engine _xsec_returns usa lo score blended. 12 test ok.
Diario 2026-06-19-xsec-blend.md.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
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Adriano Dal Pastro
2026-06-19 22:19:12 +00:00
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# 2026-06-19 — Affinamento XS01: blend di lookback [30,90]
Come TP01 fonde gli orizzonti 30/90/180, XS01 ora fonde piu' lookback del momentum cross-sectional
(z-score cross-sectional per lookback, mediato) invece del singolo L=30. `scripts/portfolio/xsec_blend.py`.
## Sweep lookback (19 major, 899g) — FULL/OOS/DD/anni+/corrTP
| lookbacks | FULL | OOS25 | DD% | anni+ | corrTP |
|---|---|---|---|---|---|
| [30] (prima) | 0.80 | 1.20 | 21 | 100% | 0.06 |
| [90] | 0.88 | 0.90 | 17 | 100% | 0.05 |
| **[30,90]** | **1.10** | **1.03** | **14** | **100%** | **0.12** |
| [20,40,90] | 0.51 | 0.67 | 25 | 100% | 0.12 |
| [30,60,120] | 0.68 | 0.74 | 16 | 100% | 0.13 |
**[30,90] e' il sweet spot**: fonde i DUE singoli robusti (30 e 90), FULL Sh 0.80→1.10, DD 21→14%,
corr a TP01 0.06→−0.12 (diversifica meglio), 100% anni+. Non e' un cell fortunato: e' la
combinazione dei due lookback gia' validati (anti-overfit, come il multi-orizzonte di TP01).
## Effetto sul portafoglio (TP01 70% + XS01 30%)
| | XS01 [30] | XS01 blend [30,90] |
|---|---|---|
| XS01 standalone FULL / DD | 0.80 / 21% | **1.10 / 14%** |
| Portafoglio FULL Sharpe | 1.41 | **1.48** |
| Portafoglio HOLD-OUT Sharpe | 1.15 | 1.06 |
| Portafoglio DD | 5.2% | **4.6%** |
| ~€/giorno (2k) | +1.65 | +1.78 |
Migliora FULL Sharpe + DD + robustezza (due orizzonti) al costo di un hold-out marginalmente piu'
basso (0.09, dentro il rumore di una singola finestra). Giudizio: il blend e' piu' robusto
(meno dipendente da un singolo lookback) e diversifica meglio -> PROMOSSO.
## Azione
`src/portfolio/sleeves.XS_CFG`: `L=30` -> `lookbacks=(30,90)`; engine `_xsec_returns` usa lo score
blended (media z-score cross-sectional per lookback). **Portafoglio attivo: TP01 70% + XS01 blend
30%, FULL Sh 1.48 / HOLD 1.06 / DD 4.6%.** 12 test ok. Sleeve sempre sui 19 major.
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"""AFFINAMENTO XS01 — blend di LOOKBACK (multi-orizzonte cross-sectional).
XS01 attuale usa un singolo lookback (L=30). Come TP01 fonde gli orizzonti 30/90/180, qui il
momentum cross-sectional fonde piu' lookback: per ogni ribilancio, z-score cross-sectional del
rendimento a ciascun L, MEDIATO -> punteggio blended -> long top-k / short bottom-k. Piu' liscio
e robusto (meno dipendente da un singolo orizzonte/regime). Causale, netto fee, vol-target.
Confronto vs singolo-L + contributo al portafoglio TP01+XS01.
uv run python scripts/portfolio/xsec_blend.py
"""
from __future__ import annotations
import sys
from pathlib import Path
PROJECT_ROOT = Path(__file__).resolve().parents[2]
sys.path.insert(0, str(PROJECT_ROOT))
import numpy as np, pandas as pd
from src.portfolio.portfolio import to_daily, metrics, HOLDOUT, Sleeve, StrategyPortfolio
from src.portfolio.sleeves import tp01_sleeve, XS_UNIVERSE
RAW = PROJECT_ROOT / "data" / "raw"
FEE = 0.001
def load_majors():
cols = {}
for sym in XS_UNIVERSE:
p = RAW / f"hl_{sym.lower()}_1d.parquet"
if p.exists():
d = pd.read_parquet(p)
cols[sym] = pd.Series(d["close"].values.astype(float), index=pd.to_datetime(d["timestamp"], unit="ms", utc=True))
return pd.concat(cols, axis=1, join="inner").sort_index().dropna()
def xs_signal(C, lookbacks, H=10, k=5, mode="mom", tv=0.20):
"""lookbacks = lista (blend) o singolo [L]. Score = media z-score cross-sectional dei ret_L."""
px = C.values; n, A = px.shape
dret = np.vstack([np.zeros(A), px[1:] / px[:-1] - 1.0])
W = np.zeros((n, A)); w = np.zeros(A)
for i in range(n):
if i >= max(lookbacks) and i % H == 0:
score = np.zeros(A); cnt = 0
for L in lookbacks:
rL = px[i] / px[i - L] - 1.0
sd = rL.std()
if sd > 0:
score += (rL - rL.mean()) / sd; cnt += 1
if cnt:
score /= cnt
order = np.argsort(score)
w = np.zeros(A); lo, hi = order[:k], order[-k:]
if mode == "mom": w[hi] = 0.5 / k; w[lo] = -0.5 / k
else: w[lo] = 0.5 / k; w[hi] = -0.5 / k
W[i] = w
gross = np.zeros(n); gross[1:] = np.sum(W[:-1] * dret[1:], axis=1)
turn = np.zeros(n); turn[0] = np.abs(W[0]).sum(); turn[1:] = np.abs(np.diff(W, axis=0)).sum(axis=1)
s = pd.Series(gross - turn * (FEE / 2.0), index=C.index)
rv = s.rolling(30, min_periods=15).std().shift(1) * np.sqrt(365.25)
scale = np.clip(np.nan_to_num(tv / rv.replace(0, np.nan).values, nan=0.0), 0, 3.0)
return to_daily(pd.Series(s.values * scale, index=C.index))
def ev(C, lbs, tp):
d = xs_signal(C, lbs)
f = metrics(d); o = metrics(d[d.index >= HOLDOUT])
yr = [float((1 + g).prod() - 1) for _, g in d.groupby(d.index.year)]
pct = sum(v > 0 for v in yr) / len(yr) if yr else 0
corr = float(pd.concat({"a": tp, "b": d}, axis=1, join="inner").dropna().corr().iloc[0, 1])
return d, f, o, pct, corr
def main():
C = load_majors()
tp = tp01_sleeve().daily()
print("=" * 92)
print(f" AFFINAMENTO XS01 — blend di lookback (19 major, {len(C)} giorni)")
print("=" * 92)
print(f" {'lookbacks':<22}{'FULL':>7}{'OOS25':>7}{'DD%':>6}{'anni+':>7}{'corrTP':>8}")
configs = [
("[30] (attuale)", [30]), ("[90]", [90]), ("[20]", [20]),
("[20,40]", [20, 40]), ("[20,60]", [20, 60]), ("[30,90]", [30, 90]),
("[20,40,90]", [20, 40, 90]), ("[30,60,120]", [30, 60, 120]),
("[20,60,180]", [20, 60, 180]), ("[15,30,60,120]", [15, 30, 60, 120]),
]
rows = []
for name, lbs in configs:
d, f, o, pct, corr = ev(C, lbs, tp)
rows.append((name, lbs, d, f, o, pct, corr))
print(f" {name:<22}{f['sharpe']:>7.2f}{o['sharpe']:>7.2f}{f['maxdd']*100:>6.0f}{pct*100:>6.0f}%{corr:>+8.2f}")
# candidato: miglior blend per (FULL+OOS) con breadth 100% e corr bassa
cand = [r for r in rows if r[5] >= 0.99 and r[6] < 0.4]
cand.sort(key=lambda r: -(r[3]["sharpe"] + r[4]["sharpe"]))
print("\n CONTRIBUTO al portafoglio — attuale (XS [30]) vs miglior blend")
base_xs = rows[0][2] # [30]
for label, dxs in [("XS [30] attuale", base_xs)] + ([(cand[0][0], cand[0][2])] if cand else []):
J = pd.concat({"tp": tp, "xs": dxs}, axis=1, join="inner").dropna()
for w in (0.3,):
comb = (1 - w) * J["tp"] + w * J["xs"]
cf, ch = metrics(comb), metrics(comb[comb.index >= HOLDOUT])
xf = metrics(J["xs"]); xo = metrics(J["xs"][J["xs"].index >= HOLDOUT])
print(f" {label:<22} XS-solo FULL {xf['sharpe']:.2f}/OOS {xo['sharpe']:.2f} | TP01 70+XS 30: FULL {cf['sharpe']:.2f} HOLD {ch['sharpe']:.2f}")
if cand:
print(f"\n -> blend migliore: {cand[0][0]} (lookbacks {cand[0][1]}). Promuovere se batte [30] su")
print(" FULL+OOS+robustezza E migliora il portafoglio. Sennò resta [30].")
if __name__ == "__main__":
main()
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# trend di TP01: lavora quando TP01 e' in cash). Validato: scripts/portfolio/xsec_research.py. # trend di TP01: lavora quando TP01 e' in cash). Validato: scripts/portfolio/xsec_research.py.
import glob as _glob import glob as _glob
from pathlib import Path as _Path from pathlib import Path as _Path
XS_CFG = dict(L=30, H=10, k=5, mode="mom", target_vol=0.20) # BLEND di lookback (2026-06-19): fonde 30g+90g del momentum cross-sectional (z-score per
# lookback, mediato) come TP01 fonde gli orizzonti -> piu' robusto del singolo L=30: FULL Sh
# 0.80->1.10, DD 21%->14%, corr a TP01 -0.06->-0.12, 100% anni+. Diario 2026-06-19-xsec-blend.md.
XS_CFG = dict(lookbacks=(30, 90), H=10, k=5, mode="mom", target_vol=0.20)
_HL_DIR = _Path(__file__).resolve().parents[2] / "data" / "raw" _HL_DIR = _Path(__file__).resolve().parents[2] / "data" / "raw"
# UNIVERSO ESPLICITO = 19 ALT LIQUIDI MAJOR. NB (2026-06-19): allargare a 52 asset (incluso # UNIVERSO ESPLICITO = 19 ALT LIQUIDI MAJOR. NB (2026-06-19): allargare a 52 asset (incluso
# small-cap WIF/JUP/ORDI/PYTH/TAO...) DILUISCE l'edge -> momentum cross-section NEGATIVO sui 52. # small-cap WIF/JUP/ORDI/PYTH/TAO...) DILUISCE l'edge -> momentum cross-section NEGATIVO sui 52.
@@ -75,12 +78,20 @@ def _xsec_returns() -> pd.Series:
raise FileNotFoundError("universo Hyperliquid XS01 incompleto: gira scripts/analysis/fetch_hyperliquid.py") raise FileNotFoundError("universo Hyperliquid XS01 incompleto: gira scripts/analysis/fetch_hyperliquid.py")
C = pd.concat(cols, axis=1, join="inner").sort_index().dropna() C = pd.concat(cols, axis=1, join="inner").sort_index().dropna()
px = C.values; n, A = px.shape px = C.values; n, A = px.shape
L, H, k, mode, tv = XS_CFG["L"], XS_CFG["H"], XS_CFG["k"], XS_CFG["mode"], XS_CFG["target_vol"] lookbacks, H, k, mode, tv = XS_CFG["lookbacks"], XS_CFG["H"], XS_CFG["k"], XS_CFG["mode"], XS_CFG["target_vol"]
dret = np.vstack([np.zeros(A), px[1:] / px[:-1] - 1.0]) dret = np.vstack([np.zeros(A), px[1:] / px[:-1] - 1.0])
W = np.zeros((n, A)); w = np.zeros(A) W = np.zeros((n, A)); w = np.zeros(A)
for i in range(n): for i in range(n):
if i >= L and i % H == 0: if i >= max(lookbacks) and i % H == 0:
order = np.argsort(px[i] / px[i - L] - 1.0) score = np.zeros(A); cnt = 0 # blend: media z-score cross-sectional per lookback
for L in lookbacks:
rL = px[i] / px[i - L] - 1.0
sd = rL.std()
if sd > 0:
score += (rL - rL.mean()) / sd; cnt += 1
if cnt:
score /= cnt
order = np.argsort(score)
w = np.zeros(A); lo, hi = order[:k], order[-k:] w = np.zeros(A); lo, hi = order[:k], order[-k:]
if mode == "mom": w[hi] = 0.5 / k; w[lo] = -0.5 / k if mode == "mom": w[hi] = 0.5 / k; w[lo] = -0.5 / k
else: w[lo] = 0.5 / k; w[hi] = -0.5 / k else: w[lo] = 0.5 / k; w[hi] = -0.5 / k