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Learning Non-linear Features for Machine Translation Using Gradient Boosting Machines

机译:使用梯度提升机学习用于机器翻译的非线性特征

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In this paper we show how to automatically induce non-linear features for machine translation. The new features are selected to approximately maximize a Bleu-related objective and decompose on the level of local phrases, which guarantees that the asymptotic complexity of machine translation decoding does not increase. We achieve this by applying gradient boosting machines (Friedman, 2000) to learn new weak learners (features) in the form of regression trees, using a differen-tiable loss function related to Bleu. Our results indicate that small gains in performance can be achieved using this method but we do not see the dramatic gains observed using feature induction for other important machine learning tasks.
机译:在本文中,我们展示了如何为机器翻译自动引入非线性特征。选择新功能以使与Bleu相关的目标达到最大程度,并在局部短语的级别上进行分解,这确保了机器翻译解码的渐进复杂性不会增加。我们通过使用梯度提升机(Friedman,2000)使用与Bleu相关的微分损失函数,以回归树的形式学习新的弱学习者(特征),从而实现了这一目标。我们的结果表明,使用这种方法可以实现较小的性能提升,但是对于其他重要的机器学习任务,使用特征归纳法无法观察到显着的提升。

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