Original paper
Distance-Preserving Vector Space Embedding for Consensus Learning
Volume: 51, Issue: 2, Pages: 1244 - 1257
Published: Feb 21, 2019
Abstract
Learning a prototype from a set of given objects is a core problem in machine learning and pattern recognition. A commonly used approach for consensus learning is to formulate it as an optimization problem in terms of generalized median computation. Recently, a prototype-embedding approach has been proposed to transform the objects into a vector space, compute the geometric median, and then inversely transform back into the original space. This...
Paper Details
Title
Distance-Preserving Vector Space Embedding for Consensus Learning
Published Date
Feb 21, 2019
Volume
51
Issue
2
Pages
1244 - 1257
References
No data available