Spectral feature selection identifies relevant features by measuring their capability of preserving sample similarity. It provides a powerful framework for both supervised and unsupervised feature selection, and has been proven to be effective in many real-world applications. One common drawback associated with most existing spectral feature selection algorithms is that they evaluate features individually and cannot identify redundant features. Since redundant features can have significant adverse effect on learning performance, it is necessary to address this limitation for spectral feature selection. To this end, we propose a novel spectral feature selection algorithm to handle feature redundancy, adopting an embedded model. The algorithm...
Abstract. Feature sets in many domains often contain many irrelevant and redundant features, both of...
The problem of selecting a subset of relevant features in a potentially overwhelming quantity of dat...
Feature selection aims to gain relevant features for improved classification performance and remove ...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
Feature selection aims to reduce dimensionality for building comprehensible learning models with goo...
Feature selection is an effective technique for dimensionality reduction to get the most useful info...
This timely introduction to spectral feature selection illustrates the potential of this powerful di...
International audienceThe goal of feature selection (FS) in machine learning is to find the best sub...
Abstract—In this paper, we consider the problem of unsu-pervised feature selection. Recently, spectr...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Sele...
Abstract. Feature sets in many domains often contain many irrelevan-t and redundant features, both o...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
Abstract. Feature sets in many domains often contain many irrelevant and redundant features, both of...
The problem of selecting a subset of relevant features in a potentially overwhelming quantity of dat...
Feature selection aims to gain relevant features for improved classification performance and remove ...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
Feature selection aims to reduce dimensionality for building comprehensible learning models with goo...
Feature selection is an effective technique for dimensionality reduction to get the most useful info...
This timely introduction to spectral feature selection illustrates the potential of this powerful di...
International audienceThe goal of feature selection (FS) in machine learning is to find the best sub...
Abstract—In this paper, we consider the problem of unsu-pervised feature selection. Recently, spectr...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Sele...
Abstract. Feature sets in many domains often contain many irrelevan-t and redundant features, both o...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
Abstract. Feature sets in many domains often contain many irrelevant and redundant features, both of...
The problem of selecting a subset of relevant features in a potentially overwhelming quantity of dat...
Feature selection aims to gain relevant features for improved classification performance and remove ...