Multiclass classification with high-dimensional data is an applied topic both in statistics and machine learning. The classification procedure could be done in various ways. In this thesis, we review the theory of the Lasso procedure which provides a parameter estimator while simultaneously achieving dimension reduction due to a property of the L1 norm. Lasso with elastic net penalty and sparse group lasso are also reviewed. Our data is high-dimensional proteomic data (iTRAQ ratios) of breast cancer patients with four subtypes of breast cancer. We use the multinomial logistic regression to train our classifier and use the false classification rates obtained from cross validation to compare models
Building effective prediction models from high-dimensional data is an important problem in several d...
With the genomic revolution and the new era of precision medicine, the identification of biomarkers ...
In this article, we propose a method called sequential Lasso (SLasso) for feature selection in spars...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
peer-reviewedWe develop a Smooth Lasso for sparse, high dimensional, contingency tables and compare ...
Urda, D., Franco, L. and Jerez, J.M. (2017). Classification of high dimensional data using LASSO ens...
© 2010 Dr. Tung Huy PhamThe bloom of economics and technology has had an enormous impact on society....
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Penalized logistic regression is extremely useful for binary classiffication with a large number of ...
peer-reviewedWe consider several least absolute shrinkage and selection operator (LASSO) penalized ...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
In data envelopment analysis (DEA), the curse of dimensionality problem may jeopardize the accuracy ...
This research aims to integrate linear structures of genetic networks into genomewide analysis studi...
High dimensional and ultrahigh dimensional variable selection is a formidable challenge in biomedica...
This thesis presents a detailed study of multinomial regression, with a special focus on its applica...
Building effective prediction models from high-dimensional data is an important problem in several d...
With the genomic revolution and the new era of precision medicine, the identification of biomarkers ...
In this article, we propose a method called sequential Lasso (SLasso) for feature selection in spars...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
peer-reviewedWe develop a Smooth Lasso for sparse, high dimensional, contingency tables and compare ...
Urda, D., Franco, L. and Jerez, J.M. (2017). Classification of high dimensional data using LASSO ens...
© 2010 Dr. Tung Huy PhamThe bloom of economics and technology has had an enormous impact on society....
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Penalized logistic regression is extremely useful for binary classiffication with a large number of ...
peer-reviewedWe consider several least absolute shrinkage and selection operator (LASSO) penalized ...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
In data envelopment analysis (DEA), the curse of dimensionality problem may jeopardize the accuracy ...
This research aims to integrate linear structures of genetic networks into genomewide analysis studi...
High dimensional and ultrahigh dimensional variable selection is a formidable challenge in biomedica...
This thesis presents a detailed study of multinomial regression, with a special focus on its applica...
Building effective prediction models from high-dimensional data is an important problem in several d...
With the genomic revolution and the new era of precision medicine, the identification of biomarkers ...
In this article, we propose a method called sequential Lasso (SLasso) for feature selection in spars...