Transfer Learning for Nonparametric Classification: Minimax Rate and Adaptive Classifier
Tony Cai and Hongji Wei
We first establish the minimax rate of convergence and construct a rate-optimal two-sample weighted K-NN classifier. The results characterize precisely the contribution of the observations from the source distribution to the classification task under the target distribution. A data-driven adaptive classifier is then proposed and is shown to simultaneously attain within a logarithmic factor of the optimal rate over a large collection of parameter spaces. Simulation studies are carried out and the numerical results further illustrate the theoretical analysis. Extensions to the case of multiple source distributions are also considered.