This is a summary of links recently featured on Quantocracy as of Saturday, 07/04/2026. To see our most recent links, visit the Quant Mashup. Read on readers!
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Your Backtest Is Lying to You: Building a Walk-Forward Validation Harness in Python [Jdiv930]Last year I built a stock scanner in Python. The first backtest said my signals returned +40% over two years. I was, briefly, a genius. Then I fixed three bugs and the same signals returned roughly nothing. None of the bugs were in the strategy. All of them were in the measurement. The strategy hadnt changed; my ruler had. That experience turned into a validation harness that now gates every
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Collinearity in Parameter Sweeps: Plateaus, Not Peaks [Aligrithm]You vary your parameters, watch performance hold up across the range, and conclude the system is robust. The old article "Parameter Stability Beats Best Parameter" told you to prefer the stable region over the lucky peak, and you did. The trap is that you can run a parameter sweep that holds up beautifully and proves nothing, because the sweep never tested the parameter space at all. It
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Jumping back in the pool(ing): pooling by asset class and portfolio weight distance [Investment Idiocy]This is post #10 in my 2026 series on portfolio optimisation. Time for a quick recap. I'm not going to revisit every post but instead summarise what I now think one should be doing when optimising forecast weights before costs (I haven't yet incorporated costs, nor thought about instrument weights). Pool all instrument returns together At a minimum use a 40 year EWM for SR estimates (and
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The Market Regime Filter [Financial Hacker]The market changes all the time. Sometimes it trends, sometimes it oscillates, sometimes it goes sidewards. Trading systems that do not react on market regime change will bring uncomfortable times for their traders (and their wallets). In TASC 9/2026, Gaetano Di Prima and Fabio Baruffa provide a solution. Their market regime filter consists of three components for detecting trend, volatility, and
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Silicon vs. Satoshi: Tactical Asset Rotation Between NASDAQ-100 and Bitcoin [Quantpedia]We investigate a Donchian breakout rotation strategy between QQQ (NASDAQ-100) and Bitcoin (BTC), with a cash fallback during consolidation, and test it across eight lookback horizons (550 trading days) and two priority variants over a seven-year sample spanning 20192026. The strategy consistently outperforms passive benchmarks on a risk-adjusted basis, achieving Sharpe ratios up to 1.69,