Generalized Multiview Analysis: A discriminative latent space
University of Maryland, College Park · Center for Advancing Health
Abstract
This paper presents a general multi-view feature extraction approach that we call Generalized Multiview Analysis or GMA. GMA has all the desirable properties required for cross-view classification and retrieval: it is supervised, it allows generalization to unseen classes, it is multi-view and kernelizable, it affords an efficient eigenvalue based solution and is applicable to any domain. GMA exploits the fact that most popular supervised and unsupervised feature extraction techniques are the solution of a special form of a quadratic constrained quadratic program (QCQP), which can be solved efficiently as a generalized eigenvalue problem. GMA solves a joint, relaxed QCQP over different feature spaces to obtain…
Citation impact
- FWCI
- 33.84
- Percentile
- 100%
- References
- 34
Authors
4- ASAbhishek SharmaCorresponding
University of Maryland, College Park, Center for Advancing Health
- AKAnurag Kumar
Center for Advancing Health, University of Maryland, College Park
- HDHal Daumé
University of Maryland, College Park, Center for Advancing Health
- DWD. W. Jacobs
Center for Advancing Health, University of Maryland, College Park
Topics & keywords
- Computer science
- Artificial intelligence
- Pattern recognition (psychology)
- Discriminative model
- Pascal (unit)
- Subspace topology
- Canonical correlation
- Feature extraction
- Reduced inequalities