In this paper, we propose a new unsupervised feature selection algorithm by considering the nonlinear and similarity relationships within the data. To achieve this, we apply the kernel method and local structure learning to consider the nonlinear relationship between features and the local similarity between features. Specifically, we use a kernel function to map each feature of the data into the kernel space. In the high-dimensional kernel space, different features correspond to different weights, and zero weights are unimportant features (e.g. redundant features). Furthermore, we consider the similarity between features through local structure learning, and propose an effective optimization method to solve it. The experimental results sho...
Most feature selection methods first compute a similarity matrix by assigning a fixed value to pairs...
Feature selection (FS) methods have commonly been used as a main way to select the relevant features...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In order to reduce dimensionality of high-dimensional data, a series of feature selection algorithms...
Conventional graph-based unsupervised feature selection approaches carry out the feature selection r...
Feature selection is an effective technique for dimensionality reduction to get the most useful info...
There are a lot of redundant and irrelevant features in high-dimensional data,which seriously affect...
Since amounts of unlabelled and high-dimensional data needed to be processed, unsupervised feature s...
<p> Since amounts of unlabelled and high-dimensional data needed to be processed, unsupervised feat...
© 1989-2012 IEEE. Many pattern analysis and data mining problems have witnessed high-dimensional dat...
Dimensionality reduction techniques such as feature extraction and feature selection are critical to...
The recent literature indicates that preserving global pairwise sample similarity is of great import...
In this paper, we propose a unified framework for improved structure estimation and feature selectio...
Traditional nonlinear feature selection methods map the data from an original space into a kernel sp...
Thesis (Master's)--University of Washington, 2018Feature selection methods play important roles in t...
Most feature selection methods first compute a similarity matrix by assigning a fixed value to pairs...
Feature selection (FS) methods have commonly been used as a main way to select the relevant features...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In order to reduce dimensionality of high-dimensional data, a series of feature selection algorithms...
Conventional graph-based unsupervised feature selection approaches carry out the feature selection r...
Feature selection is an effective technique for dimensionality reduction to get the most useful info...
There are a lot of redundant and irrelevant features in high-dimensional data,which seriously affect...
Since amounts of unlabelled and high-dimensional data needed to be processed, unsupervised feature s...
<p> Since amounts of unlabelled and high-dimensional data needed to be processed, unsupervised feat...
© 1989-2012 IEEE. Many pattern analysis and data mining problems have witnessed high-dimensional dat...
Dimensionality reduction techniques such as feature extraction and feature selection are critical to...
The recent literature indicates that preserving global pairwise sample similarity is of great import...
In this paper, we propose a unified framework for improved structure estimation and feature selectio...
Traditional nonlinear feature selection methods map the data from an original space into a kernel sp...
Thesis (Master's)--University of Washington, 2018Feature selection methods play important roles in t...
Most feature selection methods first compute a similarity matrix by assigning a fixed value to pairs...
Feature selection (FS) methods have commonly been used as a main way to select the relevant features...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...