2016 - 2017High 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...
© 2010 Dr. Hugh Richard MillerHigh-dimensional statistics has captured the imagination of many stati...
Variable screening and variable selection methods play important roles in modeling high dimensional ...
We propose a ranking-based variable selection (RBVS) technique that identifies important variables i...
Advancements in information technology have enabled scientists to collect data of unprecedented size...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
In the first part of this thesis, we address the question of how new testing methods can be develope...
International audienceWe address the issue of variable selection in the regression model with very h...
Variable selection becomes more crucial than before, since high dimensional data are frequently seen...
This thesis concerns the analysis of high-dimensional and large-scale data that have become ubiq-uit...
We review variable selection and variable screening in high-dimensional linear models. Thereby, a ma...
With the prevalence of high dimensional data, variable selection is crucial in many real application...
Over the last few years, significant developments have been taking place in highdimensional data ana...
Data with a large number of variables relative to the sample size—"high-dimensional data"—are readil...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...
High-throughput technologies nowadays are leading to massive availability of data to be explored. T...
© 2010 Dr. Hugh Richard MillerHigh-dimensional statistics has captured the imagination of many stati...
Variable screening and variable selection methods play important roles in modeling high dimensional ...
We propose a ranking-based variable selection (RBVS) technique that identifies important variables i...
Advancements in information technology have enabled scientists to collect data of unprecedented size...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
In the first part of this thesis, we address the question of how new testing methods can be develope...
International audienceWe address the issue of variable selection in the regression model with very h...
Variable selection becomes more crucial than before, since high dimensional data are frequently seen...
This thesis concerns the analysis of high-dimensional and large-scale data that have become ubiq-uit...
We review variable selection and variable screening in high-dimensional linear models. Thereby, a ma...
With the prevalence of high dimensional data, variable selection is crucial in many real application...
Over the last few years, significant developments have been taking place in highdimensional data ana...
Data with a large number of variables relative to the sample size—"high-dimensional data"—are readil...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...
High-throughput technologies nowadays are leading to massive availability of data to be explored. T...
© 2010 Dr. Hugh Richard MillerHigh-dimensional statistics has captured the imagination of many stati...
Variable screening and variable selection methods play important roles in modeling high dimensional ...
We propose a ranking-based variable selection (RBVS) technique that identifies important variables i...