Embedding algorithms are a method for revealing low dimensional structure in complex data. Most embedding algorithms are designed to handle objects of a single type for which pairwise distances are specified. Here we describe a method for embedding objects of different types (such as authors and terms) into a single common Euclidean space based on their co-occurrence statistics. The joint distributions of the heterogenous objects are modeled as exponentials of squared Euclidean distances in a low-dimensional embedding space. This construction links the problem to convex optimization over positive semidefinite matrices. We quantify the performance of our method on two text datasets, and show that it consistently and significantly outperforms...
As a general framework, Laplacian embedding, based on a pairwise similarity matrix, infers low dimen...
Fusion and inference from multiple and massive disparate data sources – the requirement for our most...
Fusion and inference from multiple and massive disparate data sources – the requirement for our most...
Embedding algorithms are a method for revealing low di-mensional structure in complex data. Most emb...
Embedding algorithms search for a low dimensional continuous representation of data, but most algori...
Dimensionality reduction and data embedding methods generate low dimensional representations of a si...
Abstract. Pairwise proximities describe the properties of objects in terms of their similarities. By...
We present a novel approach for embedding general metric and nonmetric spaces into lowdimensional Eu...
We present a general framework for association learning, where entities are embedded in a common lat...
We present a general framework for association learning, where entities are embedded in a common lat...
We describe a probabilistic approach to the task of placing objects, de-scribed by high-dimensional ...
Strickert M, Bunte K, Schleif F-M, Huellermeier E. Correlation-based embedding of pairwise score dat...
Multi-dimensional scaling is an analysis tool which transforms pairwise distances between points to ...
Classical multidimensional scaling only works well when the noisy distances observed in a high dimen...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
As a general framework, Laplacian embedding, based on a pairwise similarity matrix, infers low dimen...
Fusion and inference from multiple and massive disparate data sources – the requirement for our most...
Fusion and inference from multiple and massive disparate data sources – the requirement for our most...
Embedding algorithms are a method for revealing low di-mensional structure in complex data. Most emb...
Embedding algorithms search for a low dimensional continuous representation of data, but most algori...
Dimensionality reduction and data embedding methods generate low dimensional representations of a si...
Abstract. Pairwise proximities describe the properties of objects in terms of their similarities. By...
We present a novel approach for embedding general metric and nonmetric spaces into lowdimensional Eu...
We present a general framework for association learning, where entities are embedded in a common lat...
We present a general framework for association learning, where entities are embedded in a common lat...
We describe a probabilistic approach to the task of placing objects, de-scribed by high-dimensional ...
Strickert M, Bunte K, Schleif F-M, Huellermeier E. Correlation-based embedding of pairwise score dat...
Multi-dimensional scaling is an analysis tool which transforms pairwise distances between points to ...
Classical multidimensional scaling only works well when the noisy distances observed in a high dimen...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
As a general framework, Laplacian embedding, based on a pairwise similarity matrix, infers low dimen...
Fusion and inference from multiple and massive disparate data sources – the requirement for our most...
Fusion and inference from multiple and massive disparate data sources – the requirement for our most...