GARCH Volatility : notre 60e strategie utilise les maths pour predire quand le marche se trompe
The market is often wrong about risk.
When Bitcoin drops 5% in a day, everyone panics. Volatility spikes. Fear Index goes to 20. Twitter screams "CRASH!"
But our GARCH model says: "Actually, predicted volatility for tomorrow is lower than what the market currently prices. The fear is overblown."
That's the prediction premium โ the gap between what GARCH predicts and what the market shows. When this gap is large enough, and RSI confirms oversold + Bollinger Bands show price at the lower band โ we buy.
How GARCH works (simplified)
GARCH(1,1) stands for Generalized Autoregressive Conditional Heteroskedasticity. In plain English:
- Look at recent price returns (last 60 candles)
- Calculate how volatile they were (realized volatility)
- Predict tomorrow's volatility using the formula:
ฯยฒ_tomorrow = ฯ + ฮฑ ร (last_returnยฒ) + ฮฒ ร (ฯยฒ_today)- Where ฮฑ โ 0.10 (weight of last shock) and ฮฒ โ 0.85 (persistence of volatility)
- Compare predicted vs realized
- Predicted >> Realized = market is calm but GARCH sees risk coming โ wait
- Predicted << Realized = market is panicking but GARCH says it'll calm down โ buy the dip
No machine learning. No API calls. No cloud. Pure math running locally on the server, $0 cost.
The strategy in the arena
GARCH Volatility is Strategy #60 in the Strategy Arena, competing live against 59 other AI and quantitative strategies on real Bitcoin data.
Entry conditions (all 3 must be true): - Prediction premium < -1.2 (market overpricing risk) - RSI(14) < 35 (oversold confirmation) - Price below Bollinger lower band (technical confirmation)
Exit conditions: - Take profit: +5% - Stop loss: -2.5% (note: TP > SL = positive expected value) - Trailing stop: 1.5% after +2% gain - Volatility normalization: premium returns to 0
Risk management: - Position size: 65% of capital (not all-in) - Cooldown: 12 candles between trades - Only long (no shorting in the arena)
Inspired by freeCodeCamp
This strategy was inspired by Lachezar Haralampiev's Quant Course on freeCodeCamp, which teaches 3 quantitative strategies including GARCH for intraday trading. We adapted the concept for our 10-minute BTC arena.
How it connects to our systems
GARCH Volatility benefits from the full Strategy Arena intelligence stack:
- Nutrition Filter โ once it has enough trades, the filter will grade it and decide if it's healthy enough to teach Meta Intelligence
- Strategy Health Check โ graded on 7 frameworks (Risk-Reward, Consistency, Robustness...)
- Evolution Lab โ Darwin Engine could evolve GARCH parameters (ฮฑ, ฮฒ, thresholds) overnight using the Karpathy autoresearch pattern
- Knowledge Graph โ connected to 126 AI nodes
Why quantitative strategies matter
Most strategies in the arena are AI-designed (Claude, Grok, GPT built them). GARCH is different โ it's math-designed. No AI decided these parameters. The formula comes from Robert Engle (Nobel Prize 2003) and Tim Bollerslev (1986).
Having both AI and math strategies in the same arena is the whole point: which approach trades better? Watch them compete on the live dashboard.
GARCH Volatility is Strategy #60. It joins the arena with $10,000 virtual capital, zero trades, and a Nobel Prize-winning formula. Let's see how math does against AI.
โ ๏ธ Disclaimer โ This article is for informational and educational purposes only. It does not constitute investment advice or a buy/sell recommendation. Past performance does not guarantee future results. Strategy Arena is an educational simulator with virtual capital. Always do your own research before making investment decisions.