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Crypto Mean Reversion System (Pullback & Bounce)

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Mean Reversion Theory
The indicator operates on the principle that extreme price movements in crypto markets tend to revert toward their mean over time.

Consider this a valuable aid for your dollar-cost averaging strategy, effectively identifying periods ripe for accumulating or divesting from the market.

Research shows that:
  • Short-term momentum often persists briefly after surges, but extreme moves trigger mean reversion
  • Sharp drops exhibit strong bounce patterns, especially after capitulation events
  • Longer timeframes (7-day) show stronger mean reversion tendencies than shorter ones (1-day)

    Timeframe Analysis

    1-Day Timeframe
    Pullback probabilities: 45-85% depending on surge magnitude
    Bounce probabilities: 55-95% depending on drop severity
    Captures immediate overextension and panic selling
    More volatile but faster signal generation

    7-Day Timeframe
    Pullback probabilities: 50-90% (higher confidence)
    Bounce probabilities: 50-90% (slightly moderated)
    Filters out noise and identifies sustained trends
    Stronger mean reversion signals due to extended moves

    Probability Tiers

    Pullback Risk (After Surges)
    Moderate (45-60%): 5-10% surge → Expected -3% to -12% pullback
    High (55-70%): 10-15% surge → Expected -5% to -18% pullback
    Very High (65-80%): 15-25% surge → Expected -10% to -25% pullback
    Extreme (75-90%): 25%+ surge → Expected -15% to -40% pullback

    Bounce Probability (After Drops)
    Moderate (55-65%): -5% to -10% drop → Expected +3% to +10% bounce
    High (65-75%): -10% to -15% drop → Expected +6% to +18% bounce
    Very High (75-85%): -15% to -25% drop → Expected +10% to +30% bounce
    Extreme (85-95%): -25%+ drop → Expected +18% to +45% bounce

    The probability ranges are derived from:
  • Crypto volatility patterns: Higher volatility than traditional assets creates stronger mean reversion
  • Behavioral finance: Extreme moves trigger emotional trading (FOMO/panic) that reverses
  • Historical backtesting: Probability estimates based on typical reversion patterns in crypto markets
  • Timeframe correlation: Longer timeframes show increased reversion probability due to reduced noise

    Key Features
  • Dual-direction signals: Identifies both overbought (pullback) and oversold (bounce) conditions
  • Multi-timeframe confirmation: 1D and 7D analysis for different trading styles
  • Customizable thresholds: Adjust sensitivity based on asset volatility
  • Visual alerts: Color-coded labels and table for quick assessment
  • Risk categorization: Clear severity levels for position sizing

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