High-dimensional statistics for complex data
Abstract
High dimensional data analysis has become a popular research topic in the
recent years, due to the emergence of various new applications in several fields
of sciences underscoring the need for analysing massive data sets.
One of the main challenge in analysing high dimensional data regards the
interpretability of estimated models as well as the computational efficiency of
procedures adopted. Such a purpose can be achieved through the identification of relevant variables that really affect the phenomenon of interest, so that
effective models can be subsequently constructed and applied to solve practical
problems. The first two chapters of the thesis are devoted in studying high
dimensional statistics for variable selection. We firstly introduce a short but
exhaustive review on the main developed techniques for the general problem
of variable selection using nonparametric statistics. Lastly in chapter 3 we will
present our proposal regarding a feature screening approach for non additive
models developed by using of conditional information in the estimation procedure... [edited by Author]