资源论文Semi-Supervised Domain Adaptation with Non-Parametric Copulas

Semi-Supervised Domain Adaptation with Non-Parametric Copulas

2020-01-16 | |  96 |   49 |   0

Abstract
A new framework based on the theory of copulas is proposed to address semisupervised domain adaptation problems. The presented method factorizes any multivariate density into a product of marginal distributions and bivariate copula functions. Therefore, changes in each of these factors can be detected and corrected to adapt a density model accross different learning domains. Importantly, we introduce a novel vine copula model, which allows for this factorization in a non-parametric manner. Experimental results on regression problems with real-world data illustrate the efficacy of the proposed approach when compared to state-of-the-art techniques.

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