Traditionally, spectral methods such as principal component analysis (PCA) have been applied to many graph embedding and dimensionality reduction tasks. These methods aim to find low-dimensional representations of data that preserve its inherent structure. However, these methods often perform poorly when applied to data which does not lie exactly near a linear manifold. In this thesis, I present a set of novel graph embedding algorithms which extend spectral methods, allowing graph representations of high-dimensional data or networks to be accurately embedded in a low-dimensional space. I first propose minimum volume embedding (MVE) which, like other leading dimensionality reduction algorithms, first encodes the high-dimensional data as a n...
Over the past few decades, a large family of algorithms-supervised or unsupervised; stemming from st...
Graph Embedding for Pattern Analysis covers theory methods, computation, and applications widely use...
Roweis ST, Lawrence LK. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science. 200...
High-dimensional data sets can be difficult to visualize and analyze, while data in low-dimensional ...
Abstract—Over the past few decades, a large family of algorithms—supervised or unsupervised; stemmin...
In this paper, we propose a new dimension reduction (DR) algorithm called ensemble graph-based local...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
In this thesis, we explore applications of spectral graph theory to the analysis of complex datasets...
Network embedding aims to learn the low-dimensional representations of vertexes in a network, while ...
Graph Embedding, a learning paradigm that represents graph vertices, edges, and other semantic infor...
Over the past few decades, a large family of algorithms-supervised or unsupervised; stemming from st...
Graph Embedding for Pattern Analysis covers theory methods, computation, and applications widely use...
Roweis ST, Lawrence LK. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science. 200...
High-dimensional data sets can be difficult to visualize and analyze, while data in low-dimensional ...
Abstract—Over the past few decades, a large family of algorithms—supervised or unsupervised; stemmin...
In this paper, we propose a new dimension reduction (DR) algorithm called ensemble graph-based local...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
Techniques for learning vectorial representations of graphs (graph embeddings) have recently emerged...
In this thesis, we explore applications of spectral graph theory to the analysis of complex datasets...
Network embedding aims to learn the low-dimensional representations of vertexes in a network, while ...
Graph Embedding, a learning paradigm that represents graph vertices, edges, and other semantic infor...
Over the past few decades, a large family of algorithms-supervised or unsupervised; stemming from st...
Graph Embedding for Pattern Analysis covers theory methods, computation, and applications widely use...
Roweis ST, Lawrence LK. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science. 200...