Goodness of Fit Tests Based on Kernel Density Estimators
Volume 24, Issue 3 (2013), pp. 447–460
Pub. online: 1 January 2013
Type: Research Article
Received
1 September 2012
1 September 2012
Accepted
1 December 2012
1 December 2012
Published
1 January 2013
1 January 2013
Abstract
The paper is devoted to goodness of fit tests based on probability density estimates generated by kernel functions. The test statistic is considered in the form of maximum of the normalized deviation of the estimate from its expected value or a hypothesized distribution density function. A comparative Monte Carlo power study of the investigated criterion is provided. Simulation results show that the proposed test is a powerful competitor to the existing classical criteria testing goodness of fit against a specific type of alternative hypothesis. An analytical way for establishing the asymptotic distribution of the test statistic is proposed, using the theory of high excursions of close to Gaussian random processes and fields introduced by Rudzkis (1992, 2012).