Dimensionality reduction (DR) aims to reveal salient properties of high-dimensional (HD) data in a low-dimensional (LD) representation space. Two elements stipulate success of a DR approach: definition of a notion of pairwise relations in the HD and LD spaces, and measuring the mismatch between these relationships in the HD and LD representations of data. This paper introduces a new DR method, termed Kernel-based entropy dimensionality reduction (KEDR), to measure the embedding quality that is based on stochastic neighborhood preservation, involving a Gram matrix estimation of Renyi's α-entropy. The proposed approach is a data-driven framework for information theoretic learning, based on infinitely divisible matrices. Instead of relying upo...
In most existing dimensionality reduction algorithms, the main objective is to preserve relational s...
Abstract. Dimensionality reduction methods aimed at preserving the data topol-ogy have shown to be s...
AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional space...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Stochastic neighbor embedding (SNE) and its variants are methods of dimensionality reduction (DR) th...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
The direct and inverse projections (DIP) method was proposed to reduce the feature space to the give...
Abstract—We are dealing with large-scale high-dimensional image data sets requiring new approaches f...
AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional space...
Visual category recognition is a difficult task of significant interest to the machine learning and ...
Visual category recognition is a difficult task of significant interest to the machine learning and ...
We are dealing with large-scale high-dimensional image data sets requiring new approaches for data ...
In most existing dimensionality reduction algorithms, the main objective is to preserve relational s...
Abstract. Dimensionality reduction methods aimed at preserving the data topol-ogy have shown to be s...
AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional space...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
Stochastic neighbor embedding (SNE) and its variants are methods of dimensionality reduction (DR) th...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
The direct and inverse projections (DIP) method was proposed to reduce the feature space to the give...
Abstract—We are dealing with large-scale high-dimensional image data sets requiring new approaches f...
AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional space...
Visual category recognition is a difficult task of significant interest to the machine learning and ...
Visual category recognition is a difficult task of significant interest to the machine learning and ...
We are dealing with large-scale high-dimensional image data sets requiring new approaches for data ...
In most existing dimensionality reduction algorithms, the main objective is to preserve relational s...
Abstract. Dimensionality reduction methods aimed at preserving the data topol-ogy have shown to be s...
AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional space...