On Optimal Generalizability in Parametric Learning
Beirami, Ahmad, Razaviyayn, Meisam, Shahrampour, Shahin, Tarokh, Vahid
–Neural Information Processing Systems
We consider the parametric learning problem, where the objective of the learner is determined by a parametric loss function. Employing empirical risk minimization with possibly regularization, the inferred parameter vector will be biased toward the training samples. Such bias is measured by the cross validation procedure in practice where the data set is partitioned into a training set used for training and a validation set, which is not used in training and is left to measure the out-of-sample performance. A classical cross validation strategy is the leave-one-out cross validation (LOOCV) where one sample is left out for validation and training is done on the rest of the samples that are presented to the learner, and this process is repeated on all of the samples. LOOCV is rarely used in practice due to the high computational complexity.
Neural Information Processing Systems
Feb-14-2020, 13:12:34 GMT
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