Error exponents in hypothesis testing
In statistical hypothesis testing, the error exponent of a hypothesis testing procedure is the rate at which the probabilities of Type I and Type II decay exponentially with the size of the sample used in the test. For example, if the probability of error of a test decays as, where is the sample size, the error exponent is.
Formally, the error exponent of a test is defined as the limiting value of the ratio of the negative logarithm of the error probability to the sample size for large sample sizes: . Error exponents for different hypothesis tests are computed using Sanov's theorem and other results from large deviations theory.
Error exponents in binary hypothesis testing
Consider a binary hypothesis testing problem in which observations are modeled as independent and identically distributed random variables under each hypothesis. Let denote the observations. Let denote the probability density function of each observation under the null hypothesis and let denote the probability density function of each observation under the alternate hypothesis.In this case there are two possible error events. Error of type 1, also called false positive, occurs when the null hypothesis is true and it is wrongly rejected. Error of type 2, also called false negative, occurs when the alternate hypothesis is true and null hypothesis is not rejected. The probability of type 1 error is denoted and the probability of type 2 error is denoted.