0e47956f7a
- src/strategies/base.py: Strategy ABC con Signal, BacktestResult, YearlyStats - src/strategies/indicators.py: keltner_ratio, detect_squeezes, ema, atr, rv, corr - scripts/strategies/: SQ01-SQ04 (squeeze puro/filtri), ML01 (squeeze+GBM) - scripts/waste/: W01-W22 script scartati + REF originali - scripts/analysis/: compare, best_yearly, final_report, paper_status - CLAUDE.md aggiornato con nuova struttura e tabella strategie Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
161 lines
5.2 KiB
Python
161 lines
5.2 KiB
Python
"""S2-01: Mean Reversion oraria con filtro orario.
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Idea: crypto ha bias di ritorno alla media nelle ore notturne (00-06 UTC)
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e di momentum nelle ore diurne USA (14-20 UTC).
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- Compra quando RSI < 30 in ore notturne
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- Vendi quando RSI > 70 in ore notturne
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- Hold max 4h, stop loss 1.5%
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Timeframe: 1h. Ingresso quasi giornaliero.
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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, ".")
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import numpy as np
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import pandas as pd
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from src.data.downloader import load_data
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FEE = 0.001
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INITIAL = 1000
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LEVERAGE = 3
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def rsi(close: np.ndarray, period: int = 14) -> np.ndarray:
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delta = np.diff(close)
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gain = np.where(delta > 0, delta, 0)
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loss = np.where(delta < 0, -delta, 0)
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result = np.full(len(close), 50.0)
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avg_gain = np.mean(gain[:period])
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avg_loss = np.mean(loss[:period])
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for i in range(period, len(delta)):
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avg_gain = (avg_gain * (period - 1) + gain[i]) / period
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avg_loss = (avg_loss * (period - 1) + loss[i]) / period
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if avg_loss == 0:
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result[i + 1] = 100
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else:
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rs = avg_gain / avg_loss
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result[i + 1] = 100 - 100 / (1 + rs)
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return result
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def bollinger_pct(close: np.ndarray, window: int = 20) -> np.ndarray:
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result = np.full(len(close), 0.5)
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for i in range(window, len(close)):
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w = close[i - window : i]
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ma = np.mean(w)
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std = np.std(w)
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if std > 0:
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result[i] = (close[i] - (ma - 2 * std)) / (4 * std)
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return result
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def run_mean_reversion(asset, tf="1h"):
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df = load_data(asset, tf)
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close = df["close"].values
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high = df["high"].values
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low = df["low"].values
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n = len(df)
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timestamps = pd.to_datetime(df["timestamp"], unit="ms", utc=True)
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hours = timestamps.dt.hour.values
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rsi_vals = rsi(close, 14)
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bb_pct = bollinger_pct(close, 20)
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split = int(n * 0.7)
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configs = [
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# (rsi_low, rsi_high, allowed_hours, hold_max, stop_pct, name)
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(25, 75, list(range(0, 7)), 4, 0.015, "night_0-6_rsi25"),
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(30, 70, list(range(0, 7)), 4, 0.015, "night_0-6_rsi30"),
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(25, 75, list(range(0, 10)), 6, 0.02, "extended_0-9"),
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(30, 70, list(range(20, 24)) + list(range(0, 6)), 4, 0.015, "late_night"),
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(20, 80, list(range(0, 24)), 4, 0.015, "all_hours_rsi20"),
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# Bollinger band mean reversion
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]
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print(f"\n{'#'*60}")
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print(f" {asset} {tf} — MEAN REVERSION")
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print(f"{'#'*60}")
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for rsi_low, rsi_high, allowed, hold_max, stop, name in configs:
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capital = float(INITIAL)
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correct = 0
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total = 0
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daily_trades = {}
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for i in range(max(split, 20), n - hold_max):
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hour = hours[i]
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if hour not in allowed:
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continue
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day = timestamps[i].strftime("%Y-%m-%d")
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if daily_trades.get(day, 0) >= 2:
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continue
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direction = None
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if rsi_vals[i] < rsi_low and bb_pct[i] < 0.2:
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direction = "long"
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elif rsi_vals[i] > rsi_high and bb_pct[i] > 0.8:
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direction = "short"
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if direction is None:
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continue
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entry = close[i]
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best_exit = i + 1
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for j in range(i + 1, min(i + hold_max + 1, n)):
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price = close[j]
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if direction == "long":
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pnl_pct = (price - entry) / entry
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if pnl_pct <= -stop:
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best_exit = j
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break
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if pnl_pct >= stop * 1.5:
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best_exit = j
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break
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else:
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pnl_pct = (entry - price) / entry
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if pnl_pct <= -stop:
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best_exit = j
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break
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if pnl_pct >= stop * 1.5:
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best_exit = j
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break
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best_exit = j
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exit_price = close[best_exit]
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if direction == "long":
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trade_ret = (exit_price - entry) / entry
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else:
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trade_ret = (entry - exit_price) / entry
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net = trade_ret * LEVERAGE - FEE * 2 * LEVERAGE
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capital += capital * 0.15 * net
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capital = max(capital, 0)
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is_correct = trade_ret > 0
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total += 1
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if is_correct:
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correct += 1
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daily_trades[day] = daily_trades.get(day, 0) + 1
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if total < 20:
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continue
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acc = correct / total * 100
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ret = (capital - INITIAL) / INITIAL * 100
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test_days = (n - split) / 24
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test_years = test_days / 365.25
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ann = ((capital / INITIAL) ** (1 / test_years) - 1) * 100 if test_years > 0 and capital > 0 else -100
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dpnl = (capital - INITIAL) / test_days if test_days > 0 else 0
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days_with_trades = len(daily_trades)
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trades_per_day = total / days_with_trades if days_with_trades > 0 else 0
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tag = "✅" if acc >= 60 and ann >= 30 else ""
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print(f" {name:25s}: trades={total:5d} acc={acc:.1f}% ret={ret:+.1f}% ann={ann:+.1f}% dd_est ~{abs(min(0, ret/3)):.0f}% €/day={dpnl:.2f} days_active={days_with_trades} {tag}")
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for asset in ["ETH", "BTC"]:
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run_mean_reversion(asset, "1h")
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run_mean_reversion(asset, "15m")
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