This book presents recent results in finite mixtures of skewed
distributions to prepare readers to undertake mixture models using scale
mixtures of skew normal distributions (SMSN). For this purpose, the
authors consider maximum likelihood estimation for univariate and
multivariate finite mixtures where components are members of the
flexible class of SMSN distributions. This subclass includes the entire
family of normal independent distributions, also known as scale mixtures
of normal distributions (SMN), as well as the skew-normal and skewed
versions of some other classical symmetric distributions: the skew-t
(ST), the skew-slash (SSL) and the skew-contaminated normal (SCN), for
example. These distributions have heavier tails than the typical normal
one, and thus they seem to be a reasonable choice for robust inference.
The proposed EM-type algorithm and methods are implemented in the R
package mixsmsn, highlighting the applicability of the techniques
presented in the book.
This work is a useful reference guide for researchers analyzing
heterogeneous data, as well as a textbook for a graduate-level course in
mixture models. The tools presented in the book make complex techniques
accessible to applied researchers without the advanced mathematical
background and will have broad applications in fields like medicine,
biology, engineering, economic, geology and chemistry.