Files
PythagorasGoal/scripts/research/xsec/runs/XM08.py
T
Adriano Dal Pastro 9612560479 research(xsec): sweep cross-sectional su Hyperliquid (43 script/257 config) + verifica avversariale
Nuova harness condivisa xslib.py (panel HL certificato, score per-asset causale, book
long-k/short-k vol-targeted leak-free) + 43 script in runs/ su 11 famiglie (MOM/REV/VOL/
DIST/LIQ/VAL/STRUCT/UNIV). Scoring = earns_slot (full>0 AND hold-out>0 AND marginal ADDS
al portafoglio live AND corr XS01<0.6, con jackknife drop-one-month).

Find: 42/257 config earns_slot=True, ma TUTTE con corr TP01 -0.2..-0.4 e PnL ~solo 2025.
Verify (verify_survivors.py, 3 scettici deterministici):
 - S1 redundancy: cluster low-vol = UNA scommessa (XV01=XU02=1.00, XV02/XV03 r 0.44-0.67);
   XM09/XL02/XS06b/XR02 distinti (corr media off-diag +0.20).
 - S2 short-beta: cluster low-vol carica 0.44-0.70 su short-market -> NON market-neutral,
   e' un tilt short-alt-beta di regime. XM09(0.08)/XR02(-0.21) NON short-beta.
 - S3 per-anno: cluster low-vol decade (XV01/XU02 2026 -0.09); XL02 morto (2025 -0.14,
   2026 -0.43); XM09 (0.82/0.50/0.74) e XR02 (0.84/0.40/2.68) positivi in tutti e 3 gli anni.

Esito: nessuna sleeve nuova. Cluster low-vol RIGETTATO (regime-bet), XL02 RIGETTATO (overfit).
2 LEAD genuini (XM09 trend-gated x-sec momentum, XR02 reversal vol-gated) -> forward-monitor,
non deployabili (panel 2.5y regime unico + STAT-MODE esecuzione). Portafoglio live invariato.

Incluso anche options_vrp_managed.py (A/B VRP01 hold-to-expiry vs gestione attiva del doc
credit-spread): la gestione attiva DISTRUGGE l'edge (combo FULL managed Sh -1.29 vs HtE +0.96,
il delta-exit taglia i vincenti) -> scartata, VRP01 resta hold-to-expiry.

Diari: 2026-06-20-xsec-strategies-sweep.md, 2026-06-20-vrp-active-management.md.
gitignore: data/paper_portfolio/ (stato runtime paper) + scripts/research/xsec/runs/out/ (output rigenerabile).

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-20 21:36:57 +00:00

108 lines
3.4 KiB
Python

"""XM08 — Momentum Consistency (Frog-in-Pan)
Score = past_return(close, L) * fraction_of_up_days(ret, L)
Smooth momentum beats jumpy. "Frog-in-pan" from Ang, Goetzmann, Schaefer (2012):
consistent trends accumulating through many small daily gains dominate short sharp jumps.
Score is higher (more long) when returns over L days are both large AND consistent.
Grid: L=60 fixed (canonical), vary universe / H / k / long_short (<=5 calls total).
"""
import sys
sys.path.insert(0, "/opt/docker/PythagorasGoal/scripts/research/xsec")
import xslib as xs
import numpy as np
# ---------------------------------------------------------------------------
# SCORE: causal frog-in-pan
# ---------------------------------------------------------------------------
def fip_score(P, L=60):
"""
score[i, a] = past_return(close[i], L) * frac_up_days(ret[i-L+1..i], L)
Causal: only uses ret and close up to row i.
"""
close = P.close # (n, A)
ret = P.ret # (n, A) simple daily returns
n, A = close.shape
# past return over L days (causal)
pr = xs.past_return(close, L) # (n, A), nan for i < L
# fraction of positive days over rolling window L
pos = (ret > 0).astype(float) # 1 if up day
frac_up = xs.roll_mean(pos, L) # causal rolling mean -> (n, A)
score = pr * frac_up
return score
# ---------------------------------------------------------------------------
# GRID (<=5 calls)
# ---------------------------------------------------------------------------
results = []
# 1. Base: majors, L=60, H=10, k=5, long_short
rep1 = xs.study_xs(
"XM08_majors_H10_k5_ls",
lambda P: fip_score(P, 60),
universe="majors", H=10, k=5, long_short=True, target_vol=0.20
)
print(xs.fmt(rep1))
print("JSON:", xs.as_json(rep1))
results.append(rep1)
# 2. All assets, L=60, H=10, k=5, long_short
rep2 = xs.study_xs(
"XM08_all_H10_k5_ls",
lambda P: fip_score(P, 60),
universe="all", H=10, k=5, long_short=True, target_vol=0.20
)
print(xs.fmt(rep2))
print("JSON:", xs.as_json(rep2))
results.append(rep2)
# 3. All assets, H=20, k=5, long_short (slower rebal)
rep3 = xs.study_xs(
"XM08_all_H20_k5_ls",
lambda P: fip_score(P, 60),
universe="all", H=20, k=5, long_short=True, target_vol=0.20
)
print(xs.fmt(rep3))
print("JSON:", xs.as_json(rep3))
results.append(rep3)
# 4. Majors, H=10, k=5, long-only
rep4 = xs.study_xs(
"XM08_majors_H10_k5_lo",
lambda P: fip_score(P, 60),
universe="majors", H=10, k=5, long_short=False, target_vol=0.20
)
print(xs.fmt(rep4))
print("JSON:", xs.as_json(rep4))
results.append(rep4)
# 5. All assets, H=10, k=7, long_short (wider top/bottom bucket)
rep5 = xs.study_xs(
"XM08_all_H10_k7_ls",
lambda P: fip_score(P, 60),
universe="all", H=10, k=7, long_short=True, target_vol=0.20
)
print(xs.fmt(rep5))
print("JSON:", xs.as_json(rep5))
results.append(rep5)
# ---------------------------------------------------------------------------
# PICK BEST
# ---------------------------------------------------------------------------
def score_result(r):
"""Prefer earns_slot, then hold-out sharpe, then distinctness."""
earns = r.get("earns_slot", False)
ho = r.get("holdout", {}).get("sharpe", -999)
corr = abs(r.get("corr_xs01", 1.0))
return (int(earns), ho, -corr)
best = max(results, key=score_result)
print("\n=== BEST CONFIG ===")
print(xs.fmt(best))
print("JSON:", xs.as_json(best))