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Accelerating the Original Profile Kernel

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  • Tobias Hamp
  • Tatyana Goldberg
  • Burkhard Rost

Abstract

One of the most accurate multi-class protein classification systems continues to be the profile-based SVM kernel introduced by the Leslie group. Unfortunately, its CPU requirements render it too slow for practical applications of large-scale classification tasks. Here, we introduce several software improvements that enable significant acceleration. Using various non-redundant data sets, we demonstrate that our new implementation reaches a maximal speed-up as high as 14-fold for calculating the same kernel matrix. Some predictions are over 200 times faster and render the kernel as possibly the top contender in a low ratio of speed/performance. Additionally, we explain how to parallelize various computations and provide an integrative program that reduces creating a production-quality classifier to a single program call. The new implementation is available as a Debian package under a free academic license and does not depend on commercial software. For non-Debian based distributions, the source package ships with a traditional Makefile-based installer. Download and installation instructions can be found at https://rostlab.org/owiki/index.php/Fast_Profile_Kernel. Bugs and other issues may be reported at https://rostlab.org/bugzilla3/enter_bug.cgi?product=fastprofkernel.

Suggested Citation

  • Tobias Hamp & Tatyana Goldberg & Burkhard Rost, 2013. "Accelerating the Original Profile Kernel," PLOS ONE, Public Library of Science, vol. 8(6), pages 1-1, June.
  • Handle: RePEc:plo:pone00:0068459
    DOI: 10.1371/journal.pone.0068459
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