This is a summary of links recently featured on Quantocracy as of Sunday, 06/28/2026. To see our most recent links, visit the Quant Mashup. Read on readers!
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Trend Following (4/4): The Poor Man s Trend Program [Beyond Passive]The first three parts of this series built a trend-following program and took it apart: sixty-two futures markets replicated, distilled to one contract per sector, then measured for what trend actually adds to a risk-premia core. All of it sized to a volatility target, indifferent to the account behind it. This closing part asks the question that indifference skips what can a private investor
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Estimating the Capacity of a Trading Strategy [Concretum Group]Recently, we shared a deep-dive on the importance of modeling transaction costs correctly, an exercise that inevitably forces us to confront the non-linear nature of market frictions. The Non-Linear Costs of Trading The Non-Linear Costs of Trading Concretum Research Jun 6 Read full story If you have ever worked on quant-trading desks, or been involved in advisory work, you already know that
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Systematic FX trading with regression learning and transaction cost analysis [Macrosynergy]Regression-based statistical learning is a convenient and transparent method for combining trading factors into composite signals. Sequential statistical learning considers only the data available at each time point to choose and parameterize the best model and to generate signals without hindsight bias. Yet assessing PnL potential in backtests also requires estimates of transaction costs as
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The Impressive Markets Hypothesis: Prices Still Know the Future [Alpha Architect]Evidence-based investors have long debated the efficient market hypothesis (EMH), popularized by Gene Fama. In the new era of social media echo chambers, meme stocks, and information overload, it has become fashionable to argue that markets are growing less rational. BlackRocks William Ezratty, Gerald Garvey, Timothy McDade, and Andrew Robinson, authors of the study The Impressive Markets
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Why Mean-Variance Optimization Breaks Down [Quantpedia]Mean-Variance Optimization remains the intellectual cornerstone of modern portfolio theory, yet its real-world deployment via plug-in MVO often delivers unstable, over-leveraged portfolios that collapse out-of-sample. The core insight from VertoxQuants analysis is profound: raw plug-in MVO does not merely propagate estimation errorit systematically amplifies it. This error-maximization
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FX Trend-Following: A Walk-Forward Validation Study [Quant Insti]TL;DR This project tests whether trend-following, a strategy family with decades of documented success in futures markets, transfers to spot FX. Three approaches (time-series momentum, moving-average crossover, and channel breakout) were backtested across the seven major currency pairs from 2003 to 2025, using 23 rolling walk-forward windows (3-year train, 1-year test), with parameters chosen for