In this paper, we present a new adaptive feature scaling scheme for ultrahigh-dimensional feature selection on Big Data, and then reformulate it as a convex semi-infinite programming (SIP) problem. To address the SIP, we propose an eficient feature generating paradigm. Different from traditional gradient-based approaches that conduct optimization on all input features, the proposed paradigm iteratively activates a group of features, and solves a sequence of multiple kernel learning (MKL) subproblems. To further speed up the training, we propose to solve the MKL subproblems in their primal forms through a modified accelerated proximal gradient approach. Due to such optimization scheme, some eficient cache techniques are also developed. The f...
For supervised and unsupervised learning, positive definite kernels allow to use large and potential...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
We present the Parallel, Forward-Backward with Pruning (PFBP) algorithm for feature selection (FS) i...
In this paper, we present a new adaptive feature scaling scheme for ultrahigh-dimensional feature se...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In the High-dimensional data analysis there are several challenges in the fields of machine learning...
International audienceWe present the Parallel, Forward–Backward with Pruning (PFBP) algorithm for fe...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
To date, the world continues to generate quintillion bytes of data daily, leading to the pressing ne...
National Research Foundation (NRF) Singapore under International Research Centre @ Singapore Funding...
With the rapid development of the Internet, the last decade has witnessed explosive growth in data. ...
Nowadays, the advanced technologies make amounts of data growing in a fast paced way. In many applic...
More and more high-dimensional data appears in machine learning, especially in classification tasks....
With the proliferation of the data, the dimensions of data have increased significantly, producing w...
For supervised and unsupervised learning, positive definite kernels allow to use large and potential...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
We present the Parallel, Forward-Backward with Pruning (PFBP) algorithm for feature selection (FS) i...
In this paper, we present a new adaptive feature scaling scheme for ultrahigh-dimensional feature se...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In the High-dimensional data analysis there are several challenges in the fields of machine learning...
International audienceWe present the Parallel, Forward–Backward with Pruning (PFBP) algorithm for fe...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
To date, the world continues to generate quintillion bytes of data daily, leading to the pressing ne...
National Research Foundation (NRF) Singapore under International Research Centre @ Singapore Funding...
With the rapid development of the Internet, the last decade has witnessed explosive growth in data. ...
Nowadays, the advanced technologies make amounts of data growing in a fast paced way. In many applic...
More and more high-dimensional data appears in machine learning, especially in classification tasks....
With the proliferation of the data, the dimensions of data have increased significantly, producing w...
For supervised and unsupervised learning, positive definite kernels allow to use large and potential...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
We present the Parallel, Forward-Backward with Pruning (PFBP) algorithm for feature selection (FS) i...