Neural Network-based Word Alignment through Score Aggregation
About
We present a simple neural network for word alignment that builds source and target word window representations to compute alignment scores for sentence pairs. To enable unsupervised training, we use an aggregation operation that summarizes the alignment scores for a given target word. A soft-margin objective increases scores for true target words while decreasing scores for target words that are not present. Compared to the popular Fast Align model, our approach improves alignment accuracy by 7 AER on English-Czech, by 6 AER on Romanian-English and by 1.7 AER on English-French alignment.
Joel Legrand, Michael Auli, Ronan Collobert• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Word Alignment | English-French (test) | AER9.7 | 37 | |
| Word Alignment | Romanian-English (Ro-En) (test) | AER26 | 34 | |
| Word Alignment | Czech-English English-Czech direction | Precision78.9 | 8 | |
| Machine Translation | RO-EN | BLEU21.6 | 7 | |
| Word Alignment | Czech-English direction | Precision79.1 | 4 | |
| Word Alignment | Romanian-English En-Ro (test) | Precision78.4 | 3 | |
| Machine Translation | French-English | BLEU25.5 | 2 | |
| Machine Translation | Czech-English | BLEU17.6 | 2 |
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