A novel neural network based method for feature extraction is proposed. The method achieves dimensionality reduction of input vectors used for supervised learning problems. Combinations of the original features are formed that maximize the sensitivity of the network’s outputs with respect to variations of its inputs. The method exhibits some similarity to Principal Component Analysis, but also takes into account supervised character of the learning task. It is applied to classification problems leading to efficient dimensionality reduction and increased generalization ability. 2
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
Classical feature extraction and data projection methods have been extensively investigated in the p...
Feature extraction is the heart of an object recognition system. In recognition problem, features ar...
The paper suggests a statistical framework for the parameter esti-mation problem associated with uns...
Machine learning consists in the creation and development of algorithms that allow a machine to lear...
Dimension reduction can be seen as the transformation from a high order dimension to a low order dim...
The main idea of this paper is to compare feature selection methods for dimension reduction of the o...
As a preprocessing step, dimensionality reduction from high-dimensional data helps reduce unnecessar...
This work considers the applicability of applying the derivatives of stepwise linear regression mode...
Abstract—This article presents the study regarding the prob-lem of dimensionality reduction in train...
A novel unsupervised neural network for dimensionality reduction which seeks directions emphasizing ...
Abstract. We present a modification of the bottleneck neural network for dimensionality reduction. W...
The aim of this paper is to present a comparative study of two linear dimension reduction methods na...
The paper presents a technique for generating concise neural network models of physical systems. The...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
Classical feature extraction and data projection methods have been extensively investigated in the p...
Feature extraction is the heart of an object recognition system. In recognition problem, features ar...
The paper suggests a statistical framework for the parameter esti-mation problem associated with uns...
Machine learning consists in the creation and development of algorithms that allow a machine to lear...
Dimension reduction can be seen as the transformation from a high order dimension to a low order dim...
The main idea of this paper is to compare feature selection methods for dimension reduction of the o...
As a preprocessing step, dimensionality reduction from high-dimensional data helps reduce unnecessar...
This work considers the applicability of applying the derivatives of stepwise linear regression mode...
Abstract—This article presents the study regarding the prob-lem of dimensionality reduction in train...
A novel unsupervised neural network for dimensionality reduction which seeks directions emphasizing ...
Abstract. We present a modification of the bottleneck neural network for dimensionality reduction. W...
The aim of this paper is to present a comparative study of two linear dimension reduction methods na...
The paper presents a technique for generating concise neural network models of physical systems. The...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
Classical feature extraction and data projection methods have been extensively investigated in the p...