Christoph Tillmann, Tong Zhang
ACM Transactions on Speech and Language Processing
In this paper, we present a unigram segmentation model for statistical machine translation where the segmentation units are blocks: pairs of phrases without internal structure. The segmentation model uses a novel orientation component to handle swapping of neighbor blocks. During training, we collect block unigram counts with orientation: we count how often a block occurs to the left or to the right of some predecessor block. The orientation model is shown to improve translation performance over two models: 1) no block re-ordering is used, and 2) the block swapping is controlled only by a language model. We show experimental results on a standard Arabic-English translation task.
Christoph Tillmann, Tong Zhang
ACM Transactions on Speech and Language Processing
Christoph Tillmann, Sanjika Hewavitharana
INTERSPEECH 2011
R. Florian, H. Hassan, et al.
NAACL-HLT 2004
Christoph Tillmann
ACL-IJCNLP 2009