Example: When HMM detects "low volatility range," disable trend-following strategies and activate mean-reversion Bollinger Band trades. Instead of fixed lookbacks (e.g., 20-period SMA), train a small RL agent that adjusts strategy parameters daily based on recent win rate and Sharpe ratio.
| Family | Examples | AI Optimization Angle | |--------|----------|------------------------| | | Moving Average Crossovers, Parabolic SAR, Donchian Channels | LSTM prediction of trend durability | | Mean Reversion | Bollinger Band squeezes, RSI extremes, Z-score models | Clustering to identify regime changes | | Momentum | MACD divergences, ROC breakouts, Volume-weighted momentum | Reinforcement learning for entry timing | | Pattern Recognition | Head & Shoulders, Flags, Gartley harmonics | CNN-based pattern detection from raw OHLCV | | Statistical Arbitrage | Pairs trading, Cointegration, Calendar spreads | Bayesian online learning for spread decay | 51 Trading Strategies - Optimise Your Trades wi...
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