Semi-Supervised Training for Statistical Word AlignmentDownload PDFOpen Website

2006 (modified: 13 Nov 2022)ACL 2006Readers: Everyone
Abstract: We introduce a semi-supervised approach to training for statistical machine translation that alternates the traditional Expectation Maximization step that is applied on a large training corpus with a discriminative step aimed at increasing word-alignment quality on a small, manually word-aligned sub-corpus. We show that our algorithm leads not only to improved alignments but also to machine translation outputs of higher quality.
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