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Publication Detail
Informative features for model comparison
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Publication Type:Conference
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Authors:Jitkrittum W, Sangkloy P, Schölkopf B, Kanagawa H, Hays J, Gretton A
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Publisher:ACM
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Publication date:03/12/2018
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Pagination:808, 819
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Published proceedings:Advances in Neural Information Processing Systems
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Volume:2018-December
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Status:Published
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Name of conference:32nd International Conference on Neural Information Processing Systems
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Conference place:Montréal, Canada
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Conference start date:03/12/2018
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Conference finish date:08/12/2018
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Print ISSN:1049-5258
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Publisher URL:
Abstract
© 2018 Curran Associates Inc..All rights reserved. Given two candidate models, and a set of target observations, we address the problem of measuring the relative goodness of fit of the two models. We propose two new statistical tests which are nonparametric, computationally efficient (runtime complexity is linear in the sample size), and interpretable. As a unique advantage, our tests can produce a set of examples (informative features) indicating the regions in the data domain where one model fits significantly better than the other. In a real-world problem of comparing GAN models, the test power of our new test matches that of the state-of-the-art test of relative goodness of fit, while being one order of magnitude faster.
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