Login
In Cooperation with:

American Society for Quality Statistics Division

American Statistical Association

Bernoulli Society for Mathematical Statistics and Probability

Institute of Mathematical Statistics

International Biometric Society

International Chinese Statistical Association

International Society for Bayesian Analysis

International Statistical Institute

Royal Statistical Society

Statistical Society of Canada / Société statistique du Canada
Asymptotic Relative Efficiency in Testing
cite|
Asymptotic Relative Efficiency in Testing
Ya. Yu. Nikitin, yanikit47@gmail.com
University of Saint-Petersburg
September, 2010.
Keywords: Pitman efficiency, Bahadur exact slope, Hodges-Lehmann index, Kullback-Leibler information, goodness-of-fit, testing of symmetry, independence test, large deviations. Asymptotic relative efficiency of two tests Making a substantiated choice of the most efficient statistical test of several ones being at the disposal of the statistician is regarded as one of the basic problems of Statistics. This problem became especially important in the middle of XX century when appeared computationally simple but "inefficient" rank tests. Asymptotic relative efficiency (ARE) is a notion which enables to implement in large samples the quantitative comparison of two different tests used for testing of the same statistical hypothesis. The notion of the asymptotic efficiency of tests is more complicated than that of asymptotic efficiency of estimates. Various approaches to this notion were identified only in late fourties and early fifties, hence, 20-25 years later than in the estimation theory. We proceed now to their description. Let It is natural to prefer the sequence with smaller The merits of the relative efficiency as means for comparing the tests are universally acknowledged. Unfortunately it is extremely difficult to explicitly compute Only close alternatives, high powers and small levels are of the most interest from the practical point of view. It keeps one assured that the knowledge of these ARE types will facilitate comparing concurrent tests, thus producing well-founded application recommendations. The calculation of the mentioned three basic types of efficiency is not easy, see the description of theory and many examples in [17], [13] and [20]. We only mention here, that Pitman efficiency is based on the central limit theorem for test statistics. On the contrary, Bahadur efficiency requires the large deviation asymptotics of test statistics under the null-hypothesis, while Hodges-Lehmann efficiency is connected with large deviation asymptotics under the alternative. Each type of efficiency has its own merits and drawbacks. Pitman efficiency Pitman efficiency is the classical notion used most often for the asymptotic comparison of various tests.Under some regularity conditions assuming asymptotic normality of test statistics under We quote now as an example one of the first Pitman's results that stimulated the development of nonparametric statistics. Consider the two-sample problem when under the null-hypothesis both samples have the same continuous distribution and under the alternative differ only in location. Let ![]() Another example is the comparison of independence tests based on Spearman and Pearson correlation coefficients in bivariate normal samples. Then the value of Pitman efficiency is In numerical comparisons, the Pitman efficiency appears to be more relevant for moderate sample sizes than other efficiencies [8]. On the other hand, Pitman ARE can be insufficient for the comparison of tests. Suppose, for instance, that we have a normally distributed sample with the mean If the condition of asymptotic normality fails, considerable difficulties arise when calculating the Pitman ARE as the latter may not at all exist or may depend on Bahadur efficiency The Bahadur approach proposed in [2], [3] to measuring the ARE prescribes one to fix the power of tests and to compare the exponential rate of decrease of their sizes for the increasing number of observations and fixed alternative. This exponential rate for a sequence of statistics It is important to note that there exists an upper bound for exact slopes It is proved that under some regularity conditions the likelihood ratio statistic is asymptotically optimal in Bahadur sense [3], [20, §16.6], [1]. Often the exact Bahadur ARE is uncomputable for any alternative The indisputable merit of Bahadur efficiency consists in that it can be calculated for statistics with non-normal asymptotic distribution such as Kolmogorov-Smirnov, omega-square, Watson and many other statistics. Consider, for instance, the sample with the distribution function (df)
Table 1: Some local Bahadur efficiencies.
We see from Table 1 that the integral statistic See also [13] for the calculation of local Bahadur efficiencies in case of many other statistics. Hodges-Lehmann efficiency This type of the ARE proposed in [9] is in the conformity with the classical Neyman-Pearson approach. In contrast with Bahadur efficiency, let us fix the level of tests and let compare the exponential rate of decrease of their second-kind errors for the increasing number of observations and fixed alternative. This exponential rate for a sequence of statistics The computation of Hodges-Lehmann indices is difficult as requires large deviation asymptotics of test statistics under the alternative. There exists an upper bound for the Hodges-Lehmann indices analogous to the upper bound for Bahadur exact slopes. As in the Bahadur theory the sequence of statistics The drawback of Hodges-Lehmann efficiency is that most two-sided tests like Kolmogorov and Cramér-von Mises tests are asymptotically optimal, and hence this kind of efficiency cannot discriminate between them. On the other hand, under some regularity conditions the one-sided tests like linear rank tests can be compared on the basis of their indices, and their Hodges-Lehmann efficiency coincides locally with Bahadur efficiency, see details in [13]. Coupled with three ``basic" approaches to the ARE calculation described above, intermediate approaches are also possible if the transition to the limit occurs simultaneously for two parameters at a controlled way. Thus emerged the Chernoff ARE introduced by Chernoff [5], see also [12]; the intermediate, or the Kallenberg ARE introduced by Kallenberg [11], and the Borovkov-Mogulskii ARE, proposed in [4]. Large deviation approach to asymptotic efficiency of tests was applied in recent years to more general problems. For instance, the change-point, "signal plus white noise" and regression problems were treated in [16], the tests for spectral density of a stationary process were discussed in [10], while [19] deals with the time series problems, and the empirical likelihood for testing moment conditions is studied in [14]. Bibliography
Based on an article from Lovric, Miodrag (2011), International Encyclopedia of Statistical Science. Heidelberg: Springer Science +Business Media, LLC. |
|||||||||||||||||||||||||||||||||||



