Finite Mixture Model Diagnostics Using Resampling Methods
نویسندگان
چکیده
This paper illustrates the implementation of resampling methods in flexmix as well as the application of resampling methods for model diagnostics of fitted finite mixture models. Convenience functions to perform these methods are available in package flexmix. The use of the methods is illustrated with an artificial example and the seizure data set.
منابع مشابه
Complement: Finite Mixture Model Diagnostics Using Resampling Methods
This paper illustrates the application of resampling methods for model diagnostics of fitted finite mixture models. Convenience functions to perform these methods are available in package flexmix. The results of the application to an artificial example and the seizure data set as described in Grün and Leisch (2010) are reproduced.
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