What is Type I and Type II Errors?

Priyanka Dave
May 18, 2022

Let’s first understand NULL(H0) and ALTERNATE(HA) hypothesis:

  • Here the assumption needs to be made for population, not sample.
  • Initially we assume that the null hypothesis is true.
  • Based on outcome of statistical tests, either we “reject the null hypothesis” or we “failed to reject the null hypothesis”.
Type I and type II Errors
  • Type I Error: Rejecting the null hypothesis when it’s true
  • Type II Error: Not rejecting the null hypothesis when it’s false
  • Here our goal is to control both the errors simulteneously by maximizing the power of a test by holding (α) to be low.
  • For example we controll type I error at 5% that means when α=5%, our analysis has been done at the confidence level of 95%.

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