Hypothesis testing is a structured statistical method used to make decisions about data. It evaluates whether evidence supports or contradicts an assumption, called a hypothesis, and helps determine if observed effects are due to chance or reflect real differences.
The method emerged in the early 20th century through the work of Ronald Fisher, Jerzy Neyman, and Egon Pearson. Combining probability theory with decision-making, hypothesis testing became a cornerstone of modern scientific research, quality management, and Six Sigma practice. It provides a systematic way to separate signal from noise in data.
Hypothesis testing is central to evidence-based decision-making. It: