Abstract
Observations $y_i$ are made at points $x_i$ according to the model $y_i = F(x_i) + e_i$, where the $e_i$ are independent normals with constant variance. In order to decide whether or not $F(x)$ is constant, a likelihood ratio test is constructed, comparing $F(x) \equiv \mu$ with $F(x) = \mu + Z(x)$, where $Z(x)$ is a Brownian motion. The ratio of error variance to Brownian motion variance is chosen to maximize the likelihood, and the resulting maximum likelihood statistic $B$ is used to test departures from constant mean. Its asymptotic distribution is derived and its finite sample size behavior is compared with five other tests. The $B$-statistic is comparable or superior to each of the tests on the five alternatives considered.
Citation
Daniel Barry. J. A. Hartigan. "An Omnibus Test for Departures from Constant Mean." Ann. Statist. 18 (3) 1340 - 1357, September, 1990. https://doi.org/10.1214/aos/1176347753
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