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Pavez, J
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title_unstemmed Experiments using machine learning to approximate likelihood ratios for mixture models
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title_sort experiments using machine learning to approximate likelihood ratios for mixture models
topic General Physics and Astronomy
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spelling Cranmer, K Pavez, J Louppe, G Brooks, W K 1742-6588 1742-6596 IOP Publishing General Physics and Astronomy http://dx.doi.org/10.1088/1742-6596/762/1/012034 Experiments using machine learning to approximate likelihood ratios for mixture models Journal of Physics: Conference Series
spellingShingle Cranmer, K, Pavez, J, Louppe, G, Brooks, W K, Journal of Physics: Conference Series, Experiments using machine learning to approximate likelihood ratios for mixture models, General Physics and Astronomy
title Experiments using machine learning to approximate likelihood ratios for mixture models
title_full Experiments using machine learning to approximate likelihood ratios for mixture models
title_fullStr Experiments using machine learning to approximate likelihood ratios for mixture models
title_full_unstemmed Experiments using machine learning to approximate likelihood ratios for mixture models
title_short Experiments using machine learning to approximate likelihood ratios for mixture models
title_sort experiments using machine learning to approximate likelihood ratios for mixture models
title_unstemmed Experiments using machine learning to approximate likelihood ratios for mixture models
topic General Physics and Astronomy
url http://dx.doi.org/10.1088/1742-6596/762/1/012034