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Multi-Source Domain Adaptation with Mixture of Experts

7 September 2018
Jiang Guo
Darsh J. Shah
Regina Barzilay
ArXiv (abs)PDFHTML
Abstract

We propose a mixture-of-experts approach for unsupervised domain adaptation from multiple sources. The key idea is to explicitly capture the relationship between a target example and different source domains. This relationship, expressed by a point-to-set metric, determines how to combine predictors trained on various domains. The metric is learned in an unsupervised fashion using meta-training. Experimental results on sentiment analysis and part-of-speech tagging demonstrate that our approach consistently outperforms multiple baselines and can robustly handle negative transfer.

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