Original title:
Comparison of mixture-based classification with the data-dependent pointer model for various types of components
Authors:
Likhonina, Raissa ; Suzdaleva, Evgenia ; Nagy, Ivan Document type: Research reports
Year:
2016
Language:
eng Series:
Research Report, volume: 2355 Abstract:
The presented report is devoted to the analysis of a data-dependent pointer model, whether it brings some advantages in comparison with a data-independent pointer model at simulation and estimation of components referring to different types of distribution, including categorical, uniform, exponential and state-space components for a dynamic data-dependent model, and normal components for a static data-dependent pointer model.
Keywords:
data-dependent pointer; mixture-based classification; recurisive mixture estimation Project no.: GA15-03564S (CEP) Funding provider: GA ČR