Dimensionality-reduced estimation of primaries by sparse inversion

Data-driven methods—such as the estimation of primaries by sparse inversion suffer from the 'curse of dimensionality’ that leads to disproportional growth in computational and storage demands when moving to realistic 3D field data. To remove this fundamental impediment, we propose a dimensional...

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Main Author: Jumah, Bander K.
Language:English
Published: University of British Columbia 2012
Online Access:http://hdl.handle.net/2429/40723
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-BVAU.2429-407232014-03-26T03:38:30Z Dimensionality-reduced estimation of primaries by sparse inversion Jumah, Bander K. Data-driven methods—such as the estimation of primaries by sparse inversion suffer from the 'curse of dimensionality’ that leads to disproportional growth in computational and storage demands when moving to realistic 3D field data. To remove this fundamental impediment, we propose a dimensionality-reduction technique where the 'data matrix' is approximated adaptively by a randomized low-rank factorization. Compared to conventional methods, which need passes through all the data possibly including on-the-fly interpolations for each iteration, our approach has the advantage that the passes are reduced to one to three. In addition, the low-rank matrix factorization leads to considerable reductions in storage and computational costs of the matrix multiplies required by the sparse inversion. Application of the proposed formalism to synthetic and real data shows that significant performance improvements in speed and memory use are achievable at a low computational overhead required by the low-rank factorization. 2012-02-16T18:15:26Z 2012-02-16T18:15:26Z 2012 2012-02-16 2012-05 Electronic Thesis or Dissertation http://hdl.handle.net/2429/40723 eng University of British Columbia
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language English
sources NDLTD
description Data-driven methods—such as the estimation of primaries by sparse inversion suffer from the 'curse of dimensionality’ that leads to disproportional growth in computational and storage demands when moving to realistic 3D field data. To remove this fundamental impediment, we propose a dimensionality-reduction technique where the 'data matrix' is approximated adaptively by a randomized low-rank factorization. Compared to conventional methods, which need passes through all the data possibly including on-the-fly interpolations for each iteration, our approach has the advantage that the passes are reduced to one to three. In addition, the low-rank matrix factorization leads to considerable reductions in storage and computational costs of the matrix multiplies required by the sparse inversion. Application of the proposed formalism to synthetic and real data shows that significant performance improvements in speed and memory use are achievable at a low computational overhead required by the low-rank factorization.
author Jumah, Bander K.
spellingShingle Jumah, Bander K.
Dimensionality-reduced estimation of primaries by sparse inversion
author_facet Jumah, Bander K.
author_sort Jumah, Bander K.
title Dimensionality-reduced estimation of primaries by sparse inversion
title_short Dimensionality-reduced estimation of primaries by sparse inversion
title_full Dimensionality-reduced estimation of primaries by sparse inversion
title_fullStr Dimensionality-reduced estimation of primaries by sparse inversion
title_full_unstemmed Dimensionality-reduced estimation of primaries by sparse inversion
title_sort dimensionality-reduced estimation of primaries by sparse inversion
publisher University of British Columbia
publishDate 2012
url http://hdl.handle.net/2429/40723
work_keys_str_mv AT jumahbanderk dimensionalityreducedestimationofprimariesbysparseinversion
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