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Статья

Improved statistical alignment models

Franz Josef OchUniversity of Technology, Aachen, GermanyHermann NeyUniversity of Technology, Aachen, Germany
2000en
ABI

Аннотация

In this paper, we present and compare various single-word based alignment models for statistical machine translation. We discuss the five IBM alignment models, the Hidden-Markov alignment model, smoothing techniques and various modifications. We present different methods to combine alignments. As evaluation criterion we use the quality of the resulting Viterbi alignment compared to a manually produced reference alignment. We show that models with a first-order dependence and a fertility model lead to significantly better results than the simple models IBM-1 or IBM-2, which are not able to go beyond zero-order dependencies.

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Цитирований: 2Использованных источников: 0