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Sparse Regression as a Sparse Eigenvalue ProblemWe extend the l0-norm "subspectral" algorithms for sparse-LDA [5] and sparse-PCA [6] to general quadratic costs such as MSE in linear (kernel) regression. The resulting "Sparse Least Squares" (SLS) problem is also NP-hard, by way of its equivalence to a rank-1 sparse eigenvalue problem (e.g., binary sparse-LDA [7]). Specifically, for a general quadratic cost we use a highly-efficient technique for direct eigenvalue computation using partitioned matrix inverses which leads to dramatic x103 speed-ups over standard eigenvalue decomposition. This increased efficiency mitigates the O(n4) scaling behaviour that up to now has limited the previous algorithms' utility for high-dimensional learning problems. Moreover, the new computation prioritizes the role of the less-myopic backward elimination stage which becomes more efficient than forward selection. Similarly, branch-and-bound search for Exact Sparse Least Squares (ESLS) also benefits from partitioned matrix inverse techniques. Our Greedy Sparse Least Squares (GSLS) generalizes Natarajan's algorithm [9] also known as Order-Recursive Matching Pursuit (ORMP). Specifically, the forward half of GSLS is exactly equivalent to ORMP but more efficient. By including the backward pass, which only doubles the computation, we can achieve lower MSE than ORMP. Experimental comparisons to the state-of-the-art LARS algorithm [3] show forward-GSLS is faster, more accurate and more flexible in terms of choice of regularization
Document ID
20110013197
Acquisition Source
Jet Propulsion Laboratory
Document Type
Conference Paper
External Source(s)
Authors
Moghaddam, Baback
(Jet Propulsion Lab., California Inst. of Tech. Pasadena, CA, United States)
Gruber, Amit
(Hebrew Univ. Jerusalem, Israel)
Weiss, Yair
(Hebrew Univ. Jerusalem, Israel)
Avidan, Shai
(Adobe Systems, Inc. Newton, MA, United States)
Date Acquired
August 25, 2013
Publication Date
January 31, 2008
Subject Category
Numerical Analysis
Meeting Information
Meeting: Information Theory and Applications Workshop (ITA''08)
Location: La Jolla, CA
Country: United States
Start Date: January 1, 2008
Distribution Limits
Public
Copyright
Other
Keywords
Exact Sparse Least Squares (ESLS)
branch-and-bound
Greedy Sparse Least Squares (GSLS)
Natarajan's algorithm

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