Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional data with high degree of interpretability, at low computational cost. The approach has been successfully used in many areas, such as signal and image processing. In sparse learning classification, for example, the prediction accuracy or some other classical measure of performance is not the sole concern: we also wish to be able to better understand which few features are relevant as markers for classification. Furthermore, many of sparse learning tasks in practice, including cross-validation, parameter search, or leave-one-out analysis, involve multiple instances of similar problems, each instance sharing a large part of learning data with the...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...
In energy-efficient schemes, finding the optimal size of deep learning models is very important and ...
In this paper, we review state-of-the-art methods for feature selection in statistics with an applic...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
Significant recent advances in many areas of data collection and processing have introduced many cha...
Nowadays, the explosive data scale increase provides an unprecedented opportunity to apply machine l...
<p>The development of modern information technology has enabled collecting data of unprecedented siz...
Sparsity plays a key role in machine learning for several reasons including interpretability. Interp...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
Low-rank approximation a b s t r a c t Advances of modern science and engineering lead to unpreceden...
Classifiers favoring sparse solutions, such as support vector machines, relevance vector machines, L...
The era of machine learning features large datasets that have high dimension of features. This leads...
We formulate the sparse classification problem of n samples with p features as a binary convex optim...
A vector or matrix is said to be sparse if the number of non-zero elements is significantly smaller ...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...
In energy-efficient schemes, finding the optimal size of deep learning models is very important and ...
In this paper, we review state-of-the-art methods for feature selection in statistics with an applic...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
Significant recent advances in many areas of data collection and processing have introduced many cha...
Nowadays, the explosive data scale increase provides an unprecedented opportunity to apply machine l...
<p>The development of modern information technology has enabled collecting data of unprecedented siz...
Sparsity plays a key role in machine learning for several reasons including interpretability. Interp...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
Low-rank approximation a b s t r a c t Advances of modern science and engineering lead to unpreceden...
Classifiers favoring sparse solutions, such as support vector machines, relevance vector machines, L...
The era of machine learning features large datasets that have high dimension of features. This leads...
We formulate the sparse classification problem of n samples with p features as a binary convex optim...
A vector or matrix is said to be sparse if the number of non-zero elements is significantly smaller ...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...
In energy-efficient schemes, finding the optimal size of deep learning models is very important and ...
In this paper, we review state-of-the-art methods for feature selection in statistics with an applic...