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Muecke/etal/2019a: Learning Bit by Bit: Extracting the Essence of Machine Learning

Bibtype Inproceedings
Bibkey Muecke/etal/2019a
Author Mücke, Sascha and Piatkowski, Nico and Morik, Katharina
Ls8autor Morik, Katharina
Mücke, Sascha
Piatkowski, Nico
Editor Jäschke, Robert and Weidlich, Matthias
Title Learning Bit by Bit: Extracting the Essence of Machine Learning
Booktitle Proceedings of the Conference on "Lernen, Wissen, Daten, Analysen" ({LWDA})
Series {CEUR} Workshop Proceedings
Volume 2454
Pages 144--155
Abstract Data mining and Machine Learning research has led to a wide variety of training methods and algorithms for different types of models.
Many of these methods solve or approximate NP-hard optimization problems at their core, using vastly different approaches, some algebraic, others heuristic.
This paper demonstrates another way of solving these problems by reducing them to quadratic polynomial optimization problems on binary variables.
This class of parametric optimization problems is well-researched and powerful, and offers a unifying framework for many relevant ML problems that can all be tackled with one efficient solver.
Because of the friendly domain of binary values, such a solver lends itself particularly well to hardware acceleration, as we further demonstrate in this paper by evaluating our problem reductions using FPGAs.
Month 09
Year 2019
Projekt ML2R
Url http://ceur-ws.org/Vol-2454/paper_51.pdf
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