09. Types of Errors - Part II

Types Of Errors - Part II

Type I Errors

Type I errors have the following features:

  1. You should set up your null and alternative hypotheses, so that the worse of your errors is the type I error.
  2. They are denoted by the symbol \alpha .
  3. The definition of a type I error is: Deciding the alternative ( H_1 ) is true, when actually ( H_0 ) is true.
  4. Type I errors are often called false positives .

Type II Errors

  1. They are denoted by the symbol \beta .
  2. The definition of a type II error is: Deciding the null ( H_0 ) is true, when actually ( H_1 ) is true.
  3. Type II errors are often called false negatives .

In the most extreme case, we can always choose one hypothesis (say always choosing the null) to ensure that a particular error never occurs (never a type I error assuming we always choose the null). However, more generally, there is a relationship where with a single set of data decreasing your chance of one type of error, increases the chance of the other error occurring.