Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication
Recent theoretical study shows that the sparsest solution to an underdetermined linear system is unique, provided the solution vector is sufficiently sparse, and the operator matrix has sufficiently incoherent column vectors. In addition, efficient algorithms have been discovered to find such soluti...
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ndltd-harvard.edu-oai-dash.harvard.edu-1-122743212015-08-14T15:43:06ZStable and Efficient Sparse Recovery for Machine Learning and Wireless CommunicationLin, Tsung-HanComputer scienceMatching pursuitMutiuser MIMORepresentation learningSparse recoveryRecent theoretical study shows that the sparsest solution to an underdetermined linear system is unique, provided the solution vector is sufficiently sparse, and the operator matrix has sufficiently incoherent column vectors. In addition, efficient algorithms have been discovered to find such solutions. This intriguing result opens a new door for many potential applications. In this thesis, we study the design of a class of greedy algorithms that are extremely efficient, e.g., Orthogonal Matching Pursuit (OMP). These greedy algorithms suffer from a stability issue that the greedy selection approach always make locally optimal decisions, thereby easily biasing and mistaking the solutions in particular under data noise. We propose a solution approach that in designing greedy algorithms, new constraints can be devised by leveraging application-specific insights and incorporated into the algorithms. Given that sparse recovery problems by definition are underdetermined, introducing additional constraints can significantly improve the stability of greedy algorithms, yet retain their efficiency.Engineering and Applied SciencesKung, H. T.2014-06-06T19:13:24Z2014-06-0620142014-06-06T19:13:24ZThesis or DissertationLin, Tsung-Han. 2014. Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication. Doctoral dissertation, Harvard University.http://dissertations.umi.com/gsas.harvard:11572http://nrs.harvard.edu/urn-3:HUL.InstRepos:12274321en_USopenhttp://nrs.harvard.edu/urn-3:HUL.InstRepos:dash.current.terms-of-use#LAAHarvard University |
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Computer science Matching pursuit Mutiuser MIMO Representation learning Sparse recovery |
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Computer science Matching pursuit Mutiuser MIMO Representation learning Sparse recovery Lin, Tsung-Han Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication |
description |
Recent theoretical study shows that the sparsest solution to an underdetermined linear system is unique, provided the solution vector is sufficiently sparse, and the operator matrix has sufficiently incoherent column vectors. In addition, efficient algorithms have been discovered to find such solutions. This intriguing result opens a new door for many potential applications. In this thesis, we study the design of a class of greedy algorithms that are extremely efficient, e.g., Orthogonal Matching Pursuit (OMP). These greedy algorithms suffer from a stability issue that the greedy selection approach always make locally optimal decisions, thereby easily biasing and mistaking the solutions in particular under data noise. We propose a solution approach that in designing greedy algorithms, new constraints can be devised by leveraging application-specific insights and incorporated into the algorithms. Given that sparse recovery problems by definition are underdetermined, introducing additional constraints can significantly improve the stability of greedy algorithms, yet retain their efficiency. === Engineering and Applied Sciences |
author2 |
Kung, H. T. |
author_facet |
Kung, H. T. Lin, Tsung-Han |
author |
Lin, Tsung-Han |
author_sort |
Lin, Tsung-Han |
title |
Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication |
title_short |
Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication |
title_full |
Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication |
title_fullStr |
Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication |
title_full_unstemmed |
Stable and Efficient Sparse Recovery for Machine Learning and Wireless Communication |
title_sort |
stable and efficient sparse recovery for machine learning and wireless communication |
publisher |
Harvard University |
publishDate |
2014 |
url |
http://dissertations.umi.com/gsas.harvard:11572 http://nrs.harvard.edu/urn-3:HUL.InstRepos:12274321 |
work_keys_str_mv |
AT lintsunghan stableandefficientsparserecoveryformachinelearningandwirelesscommunication |
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1716816897848115200 |