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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Online adaptation strategies for statistical machine translation in post-editing scenarios
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Online adaptation strategies for statistical machine translation in post-editing scenarios

机译:编辑后场景中统计机器翻译的在线适应策略

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摘要

One of the most promising approaches to machine translation consists in formulating the problem by means of a pattern recognition approach. By doing so, there are some tasks in which online adaptation is needed in order to adapt the system to changing scenarios. In the present work, we perform an exhaustive comparison of four online learning algorithms when combined with two adaptation strategies for the task of online adaptation in statistical machine translation. Two of these algorithms are already well-known in the pattern recognition community, such as the perceptron and passive-aggressive algorithms, but here they are thoroughly analyzed for their applicability in the statistical machine translation task. In addition, we also compare them with two novel methods, i.e., Bayesian predictive adaptation and discriminative ridge regression. In statistical machine translation, the most successful approach is based on a log-linear approximation to a posteriori distribution. According to experimental results, adapting the scaling factors of this log-linear combination of models using discriminative ridge regression or Bayesian predictive adaptation yields the best performance.
机译:机器翻译最有前途的方法之一是通过模式识别方法来表达问题。通过这样做,有一些任务需要在线调整以使系统适应不断变化的情况。在目前的工作中,我们将四种在线学习算法与两种适应策略相结合,对统计机器翻译中的在线适应任务进行了详尽的比较。这些算法中的两种已经在模式识别社区中广为人知,例如感知器算法和被动攻击性算法,但在此对它们在统计机器翻译任务中的适用性进行了全面分析。另外,我们还将它们与两种新颖的方法进行比较,即贝叶斯预测适应和判别岭回归。在统计机器翻译中,最成功的方法是基于对后验分布的对数线性近似。根据实验结果,使用判别岭回归或贝叶斯预测适应来适应模型的这种对数线性组合的比例因子可获得最佳性能。

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