On Regularization Parameter Estimation under Covariate Shift

31 Jul 2016Wouter M. KouwMarco Loog

This paper identifies a problem with the usual procedure for L2-regularization parameter estimation in a domain adaptation setting. In such a setting, there are differences between the distributions generating the training data (source domain) and the test data (target domain)... (read more)

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