Entropy (Dec 2018)

Likelihood Ratio Testing under Measurement Errors

  • Michel Broniatowski,
  • Jana Jurečková,
  • Jan Kalina

DOI
https://doi.org/10.3390/e20120966
Journal volume & issue
Vol. 20, no. 12
p. 966

Abstract

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We consider the likelihood ratio test of a simple null hypothesis (with density f 0 ) against a simple alternative hypothesis (with density g 0 ) in the situation that observations X i are mismeasured due to the presence of measurement errors. Thus instead of X i for i = 1 , … , n , we observe Z i = X i + δ V i with unobservable parameter δ and unobservable random variable V i . When we ignore the presence of measurement errors and perform the original test, the probability of type I error becomes different from the nominal value, but the test is still the most powerful among all tests on the modified level. Further, we derive the minimax test of some families of misspecified hypotheses and alternatives. The test exploits the concept of pseudo-capacities elaborated by Huber and Strassen (1973) and Buja (1986). A numerical experiment illustrates the principles and performance of the novel test.

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