AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional spaces, mainly for visualization and exploratory purposes. As an alternative to projections on linear subspaces, nonlinear dimensionality reduction, also known as manifold learning, can provide data representations that preserve structural properties such as pairwise distances or local neighborhoods. Very recently, similarity preservation emerged as a new paradigm for dimensionality reduction, with methods such as stochastic neighbor embedding and its variants. Experimentally, these methods significantly outperform the more classical methods based on distance or transformed distance preservation.This paper explains both theoretically and experimen...
High-dimensional imaging is becoming increasingly relevant in many fields from astronomy and cultura...
We present a systematic approach to the mathematical treatment of the t-distributed stochastic neigh...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional space...
Abstract. Stochastic neighbor embedding (SNE) is a method of di-mensionality reduction (DR) that inv...
Stochastic neighbor embedding (SNE) and its variants are methods of dimensionality reduction (DR) th...
Similarity-based embedding is a paradigm that recently gained interest in the field of nonlinear dim...
Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensio...
Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensio...
Abstract. Dimensionality reduction methods aimed at preserving the data topol-ogy have shown to be s...
Stochastic neighbor embedding (SNE) is a method of dimensionality reduction that involves softmax si...
Abstract. Stochastic neighbor embedding (SNE) is a method of dimen-sionality reduction that involves...
Bunte K, Haase S, Biehl M, Villmann T. Stochastic neighbor embedding (SNE) for dimension reduction a...
High-dimensional imaging is becoming increasingly relevant in many fields from astronomy and cultura...
We present a systematic approach to the mathematical treatment of the t-distributed stochastic neigh...
High-dimensional imaging is becoming increasingly relevant in many fields from astronomy and cultura...
We present a systematic approach to the mathematical treatment of the t-distributed stochastic neigh...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
AbstractDimensionality reduction aims at representing high-dimensional data in low-dimensional space...
Abstract. Stochastic neighbor embedding (SNE) is a method of di-mensionality reduction (DR) that inv...
Stochastic neighbor embedding (SNE) and its variants are methods of dimensionality reduction (DR) th...
Similarity-based embedding is a paradigm that recently gained interest in the field of nonlinear dim...
Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensio...
Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensio...
Abstract. Dimensionality reduction methods aimed at preserving the data topol-ogy have shown to be s...
Stochastic neighbor embedding (SNE) is a method of dimensionality reduction that involves softmax si...
Abstract. Stochastic neighbor embedding (SNE) is a method of dimen-sionality reduction that involves...
Bunte K, Haase S, Biehl M, Villmann T. Stochastic neighbor embedding (SNE) for dimension reduction a...
High-dimensional imaging is becoming increasingly relevant in many fields from astronomy and cultura...
We present a systematic approach to the mathematical treatment of the t-distributed stochastic neigh...
High-dimensional imaging is becoming increasingly relevant in many fields from astronomy and cultura...
We present a systematic approach to the mathematical treatment of the t-distributed stochastic neigh...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...