Euclidean Embedding of Co-Occurrence Data
Globerson, Amir, Chechik, Gal, Pereira, Fernando, Tishby, Naftali
–Neural Information Processing Systems
Embedding algorithms search for low dimensional structure in complex data, but most algorithms only handle objects of a single type for which pairwise distances are specified. This paper describes a method for embedding objects of different types, such as images and text, into a single common Euclidean space based on their co-occurrence statistics. The joint distributions are modeled as exponentials of Euclidean distances in the low-dimensional embedding space, which links the problem to convex optimization over positive semidefinite matrices.
Neural Information Processing Systems
Dec-31-2005