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Volumn , Issue , 2011, Pages

Dimensionality reduction using the sparse linear model

Author keywords

[No Author keywords available]

Indexed keywords

DIMENSIONALITY REDUCTION; INNER PRODUCT; LINEAR MODELING; LINEAR PROJECTIONS; LOW DIMENSIONAL; NONLINEAR EXTENSION; OPTIMIZATION PROBLEMS; ORIGINAL SIGNAL; SIGNAL DOMAIN; SPARSE CODING;

EID: 85162357470     PISSN: None     EISSN: None     Source Type: Conference Proceeding    
DOI: None     Document Type: Conference Paper
Times cited : (26)

References (52)
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