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Backtesting

Survivorship bias

Testing only on assets that survived to the present, ignoring those that died.

Survivorship bias is the silent killer of long-horizon backtests: you test your strategy on the current universe of assets, forgetting that the historical universe also included a long tail of names that have since delisted, gone bankrupt, been acquired, or in crypto, been rugged and frozen.

Equity backtests that use only currently-listed S&P 500 tickers ignore the dozens of stocks that fell out of the index over the years. Crypto backtests that use only currently-trading pairs ignore the hundreds of tokens that have died since 2017.

The fix is a 'point-in-time' dataset: at each historical date, you can only see assets that existed and traded at that date, including names that are now gone. Good data vendors price this in; cheap CSV dumps generally do not.

Cómo Noon Barbari usa Survivorship bias

Cada concepto aquí está implementado en la plataforma. Abre la documentación o la herramienta correspondiente para verlo en acción.

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