Practical applications of sparse modeling /

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Bibliographic Details
Imprint:Cambridge, Massachusetts : The MIT Press, [2014]
©2014
Description:1 online resource (xii, 249 pages)
Language:English
Series:Neural information processing series
Neural information processing series.
Subject:
Format: E-Resource Book
URL for this record:http://pi.lib.uchicago.edu/1001/cat/bib/11357913
Hidden Bibliographic Details
Other authors / contributors:Rish, Irina, 1969- editor.
Cecchi, Guillermo A., editor.
Lozano, Aurélie Chloé, 1975- editor.
Niculescu-Mizil, Alexandru, editor.
ISBN:9780262325325
0262325322
9780262027724
0262027720
Notes:Includes bibliographical references and index.
English.
Print version record.
Summary:"Sparse modeling is a rapidly developing area at the intersection of statistical learning and signal processing, motivated by the age-old statistical problem of selecting a small number of predictive variables in high-dimensional datasets. This collection describes key approaches in sparse modeling, focusing on its applications in fields including neuroscience, computational biology, and computer vision. Sparse modeling methods can improve the interpretability of predictive models and aid efficient recovery of high-dimensional unobserved signals from a limited number of measurements. Yet despite significant advances in the field, a number of open issues remain when sparse modeling meets real-life applications. The book discusses a range of practical applications and state-of-the-art approaches for tackling the challenges presented by these applications. Topics considered include the choice of method in genomics applications; analysis of protein mass-spectrometry data; the stability of sparse models in brain imaging applications; sequential testing approaches; algorithmic aspects of sparse recovery; and learning sparse latent models"--MIT CogNet
Target Audience:Scholarly & Professional MIT Press.
Other form:Print version: Practical applications of sparse modeling. Cambridge, Massachusetts : The MIT Press, [2014] 9780262027724
Standard no.:9780262325325