% IMPORTANT: The following is UTF-8 encoded. This means that in the presence % of non-ASCII characters, it will not work with BibTeX 0.99 or older. % Instead, you should use an up-to-date BibTeX implementation like “bibtex8” or % “biber”. @ARTICLE{Willsch:866292, author = {Willsch, D. and Willsch, M. and De Raedt, Hans and Michielsen, K.}, title = {{S}upport vector machines on the {D}-{W}ave quantum annealer}, journal = {Computer physics communications}, volume = {248}, issn = {0010-4655}, address = {Amsterdam}, publisher = {North Holland Publ. Co.}, reportid = {FZJ-2019-05451}, pages = {107006 -}, year = {2020}, abstract = {Kernel-based support vector machines (SVMs) are supervised machine learning algorithms for classification and regression problems. We introduce a method to train SVMs on a D-Wave 2000Q quantum annealer and study its performance in comparison to SVMs trained on conventional computers. The method is applied to both synthetic data and real data obtained from biology experiments. We find that the quantum annealer produces an ensemble of different solutions that often generalizes better to unseen data than the single global minimum of an SVM trained on a conventional computer, especially in cases where only limited training data is available. For cases with more training data than currently fits on the quantum annealer, we show that a combination of classifiers for subsets of the data almost always produces stronger joint classifiers than the conventional SVM for the same parameters.}, cin = {JSC}, ddc = {530}, cid = {I:(DE-Juel1)JSC-20090406}, pnm = {511 - Computational Science and Mathematical Methods (POF3-511) / PhD no Grant - Doktorand ohne besondere Förderung (PHD-NO-GRANT-20170405)}, pid = {G:(DE-HGF)POF3-511 / G:(DE-Juel1)PHD-NO-GRANT-20170405}, typ = {PUB:(DE-HGF)16}, UT = {WOS:000509613900006}, doi = {10.1016/j.cpc.2019.107006}, url = {https://juser.fz-juelich.de/record/866292}, }