Uniformly most powerful test

In statistical hypothesis testing, a uniformly most powerful (UMP) test is a hypothesis test which has the greatest power among all possible tests of a given size α. For example, according to the Neyman–Pearson lemma, the likelihood-ratio test is UMP for testing simple (point) hypotheses.

Setting edit

Let   denote a random vector (corresponding to the measurements), taken from a parametrized family of probability density functions or probability mass functions  , which depends on the unknown deterministic parameter  . The parameter space   is partitioned into two disjoint sets   and  . Let   denote the hypothesis that  , and let   denote the hypothesis that  . The binary test of hypotheses is performed using a test function   with a reject region   (a subset of measurement space).

 

meaning that   is in force if the measurement   and that   is in force if the measurement  . Note that   is a disjoint covering of the measurement space.

Formal definition edit

A test function   is UMP of size   if for any other test function   satisfying

 

we have

 

The Karlin–Rubin theorem edit

The Karlin–Rubin theorem can be regarded as an extension of the Neyman–Pearson lemma for composite hypotheses.[1] Consider a scalar measurement having a probability density function parameterized by a scalar parameter θ, and define the likelihood ratio  . If   is monotone non-decreasing, in  , for any pair   (meaning that the greater   is, the more likely   is), then the threshold test:

 
where   is chosen such that  

is the UMP test of size α for testing  

Note that exactly the same test is also UMP for testing  

Important case: exponential family edit

Although the Karlin-Rubin theorem may seem weak because of its restriction to scalar parameter and scalar measurement, it turns out that there exist a host of problems for which the theorem holds. In particular, the one-dimensional exponential family of probability density functions or probability mass functions with

 

has a monotone non-decreasing likelihood ratio in the sufficient statistic  , provided that   is non-decreasing.

Example edit

Let   denote i.i.d. normally distributed  -dimensional random vectors with mean   and covariance matrix  . We then have

 

which is exactly in the form of the exponential family shown in the previous section, with the sufficient statistic being

 

Thus, we conclude that the test

 

is the UMP test of size   for testing   vs.  

Further discussion edit

Finally, we note that in general, UMP tests do not exist for vector parameters or for two-sided tests (a test in which one hypothesis lies on both sides of the alternative). The reason is that in these situations, the most powerful test of a given size for one possible value of the parameter (e.g. for   where  ) is different from the most powerful test of the same size for a different value of the parameter (e.g. for   where  ). As a result, no test is uniformly most powerful in these situations.

References edit

  1. ^ Casella, G.; Berger, R.L. (2008), Statistical Inference, Brooks/Cole. ISBN 0-495-39187-5 (Theorem 8.3.17)

Further reading edit

  • Ferguson, T. S. (1967). "Sec. 5.2: Uniformly most powerful tests". Mathematical Statistics: A decision theoretic approach. New York: Academic Press.
  • Mood, A. M.; Graybill, F. A.; Boes, D. C. (1974). "Sec. IX.3.2: Uniformly most powerful tests". Introduction to the theory of statistics (3rd ed.). New York: McGraw-Hill.
  • L. L. Scharf, Statistical Signal Processing, Addison-Wesley, 1991, section 4.7.