Multi-Agent Cross-Translated Diversification for Unsupervised Machine Translation

3 Jun 2020Xuan-Phi NguyenShafiq JotyWu KuiAi Ti Aw

Recent unsupervised machine translation (UMT) systems usually employ three main principles: initialization, language modeling and iterative back-translation, though they may apply these principles differently. This work introduces another component to this framework: Multi-Agent Cross-translated Diversification (MACD)... (read more)

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