Goodness-of-fit testing the error distribution in multivariate indirect regression
classification
📊 stat.ME
keywords
testgoodness-of-fitdistributionindirectmultivariaterateregressionroot-n
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We propose a goodness-of-fit test for the distribution of errors from a multivariate indirect regression model. The test statistic is based on the Khmaladze transformation of the empirical process of standardized residuals. This goodness-of-fit test is consistent at the root-n rate of convergence, and the test can maintain power against local alternatives converging to the null at a root-n rate.
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