DocumentCode :
3164414
Title :
Regularization Paths for Sparse Nonnegative Least Squares Problems with Applications to Life Cycle Assessment Tree Discovery
Author :
Jingu Kim ; Ramakrishnan, N. ; Marwah, M. ; Shah, Aamer ; Haesun Park
fYear :
2013
fDate :
7-10 Dec. 2013
Firstpage :
360
Lastpage :
369
Abstract :
The nonnegative least squares problems are useful in applications where the physical nature of problem domain permits only additive linear combinations. We discuss the l1-regularized nonnegative least squares (L1-NLS) problem, where l1-regularization is used to induce sparsity. Although l1-regularization has been successfully used in least squares regression, when combined with nonnegativity constraints, developments of algorithms and their understandings have been limited. We propose an algorithm that generates the entire regularization paths of the L1-NLS problem. We prove the correctness of the proposed algorithm and illustrate a novel application in environmental sustainability. The application relates to life cycle assessment (LCA), a technique used to estimate environmental impact during the entire lifetime of a product. We address an inverse problem in LCA. Given environmental impact factors of a target product and of a large library of constituents, the goal is to reverse engineer an inventory tree for the product. Using real-world data sets, we demonstrate how our L1-NLS approach controls the size of discovered trees, and how the full regularization paths effectively illustrate the spectrum of discovered trees with varying sparsity and compositions.
Keywords :
data handling; inventory management; inverse problems; least squares approximations; product life cycle management; production engineering computing; regression analysis; reverse engineering; sustainable development; trees (mathematics); L1-NLS problem; LCA technique; environmental impact estimation; environmental impact factors; environmental sustainability; inventory tree; inverse problem; l1-regularized nonnegative least square problem; least squares regression; life cycle assessment tree discovery; nonnegative least squares problems; nonnegativity constraints; product lifetime; real-world data sets; reverse engineer; sparse nonnegative least square problem regularization path; Books; Electronic publishing; Indexes; Libraries; Materials; Vegetation; full regularization path; l1-regularization; life cycle assessment; nonnegative least squares;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Data Mining (ICDM), 2013 IEEE 13th International Conference on
Conference_Location :
Dallas, TX
ISSN :
1550-4786
Type :
conf
DOI :
10.1109/ICDM.2013.125
Filename :
6729520
Link To Document :
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