Phase 13 // Course Syllabus Chapter

Sample Size — How Many Trades Before Your Data Means Something.

Part of our masterclass path. We systematically cover risk, logic, and mechanics to build professional edge.

Floor Tier Access 20 min read / 12 min video
01_Curriculum_Brief

What is covered in this chapter

The Mathematics of Sample Sizes

A common rookie mistake is backtesting 20 trades, seeing a 70% win rate, and assuming they have found an edge. Under probability theory, a 20-trade sample size is statistically meaningless; it is noise.

The Laws of Large Numbers

To achieve statistical validity, you need a minimum sample size of 100 to 200 trades, spanning at least 12 months of market data. This ensures your strategy is tested across different market environments: uptrends, downtrends, consolidations, and high-impact news weeks.

We explain how variance behaves across different sample sizes, proving why a larger dataset protects you from choosing a failing strategy.

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