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Predictive Approaches for Sparse Model Learning (2004)

Abstract
In this paper we investigate cross validation and Geisser’s sample reuse approaches for designing linear regression models. These approaches generate sparse models by optimizing multiple smoothing parameters. Within certain approximation, we establish equivalence relationships that exist among these approaches. The computational complexity, sparseness and performance on some benchmark data sets are compared with those obtained using relevance vector machine.

Publication details
Download http://eprints.iisc.ernet.in/10093/1/Predictive_BC_Feb23rd.pdf
Publisher Springer Verlag
Contributors Pal, Nikhil R, Kasabov, Nikola, Mudi, Rajani K, Pal, Srimanta, Parui, Swapan K
Repository ePrints@iisc (India)
Keywords Computer Science & Automation
Type Conference Paper, PeerReviewed
Relation http://eprints.iisc.ernet.in/10093/