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Extending Feature Decay Algorithms Using Alignment Entropy

机译:使用对齐熵扩展特征衰减算法

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In machine-learning applications, data selection is of crucial importance if good runtime performance is to be achieved. Feature Decay Algorithms (FDA) have demonstrated excellent performance in a number of tasks. While the decay function is at the heart of the success of FDA, its parameters are initialised with the same weights. In this paper, we investigate the effect on Machine Translation of assigning more appropriate weights to words using word-alignment entropy. In experiments on German to English, we show the effect of calculating these weights using two popular alignment methods, GIZA++ and FastAlign, using both automatic and human evaluations. We demonstrate that our novel FDA model is a promising research direction.
机译:在机器学习应用中,如果要实现良好的运行时性能,则数据选择是至关重要的。特征衰减算法(FDA)在许多任务中展示了出色的性能。虽然衰减功能是FDA成功的核心,但其参数以相同的权重初始化。在本文中,我们调查了使用字对准熵分配更适合权重的机器翻译的影响。在德语到英语的实验中,我们使用自动和人类评估来计算使用两个流行的对齐方法计算这些权重的效果。我们证明我们的新型FDA模型是一个有前途的研究方向。

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