A Type I error, also called a false positive or Alpha Risk, is a key concept in statistical hypothesis testing. It occurs when a true null hypothesis is incorrectly rejected, suggesting that an effect or difference exists when in fact it does not.
Hypothesis testing is built on two competing statements:
A Type I error arises when evidence appears to support H₁, but H₀ is actually true.
Type I errors are significant in:
Managing Type I error is essential for scientific reliability and decision-making. Strategies include: