Domain Adaptation with Nonparametric ProjectionsDownload PDFOpen Website

2019 (modified: 07 Oct 2021)SIU 2019Readers: Everyone
Abstract: Domain adaptation algorithms focus on a setting where the training and test data are sampled from related but different distributions. Various domain adaptation methods aim to align the source and target domains in a new common domain by learning a transformation or projection. In this work, we learn a nonlinear and nonparametric projection of the source and target domains into a common domain along with a linear classifier in the new domain. Experiments on image data sets show that the proposed nonlinear approach outperforms baseline domain adaptation methods based on linear transformations.
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