Type I Error:An incorrect rejection of a true null hypothesis, also called a 'false positive' or 'alpha error'.
$\alpha$ (Alpha): The significance level in hypothesis testing, representing the probability of making a Type I error.
$\beta$ (Beta): The probability of making a Type II error, failing to reject a false null hypothesis.