# Simple and Effective Noisy Channel Modeling for Neural Machine Translation (Yee et al., 2019) This page contains pointers to pre-trained models as well as instructions on how to run the reranking scripts. ## Citation: ```bibtex @inproceedings{yee2019simple, title = {Simple and Effective Noisy Channel Modeling for Neural Machine Translation}, author = {Kyra Yee and Yann Dauphin and Michael Auli}, booktitle = {Conference on Empirical Methods in Natural Language Processing}, year = {2019}, } ``` ## Pre-trained Models: Model | Description | Download ---|---|--- `transformer.noisychannel.de-en` | De->En Forward Model | [download (.tar.gz)](https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/forward_de2en.tar.bz2) `transformer.noisychannel.en-de` | En->De Channel Model | [download (.tar.gz)](https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/backward_en2de.tar.bz2) `transformer_lm.noisychannel.en` | En Language model | [download (.tar.gz)](https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/reranking_en_lm.tar.bz2) Test Data: [newstest_wmt17](https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/wmt17test.tar.bz2) ## Example usage ``` mkdir rerank_example curl https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/forward_de2en.tar.bz2 | tar xvjf - -C rerank_example curl https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/backward_en2de.tar.bz2 | tar xvjf - -C rerank_example curl https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/reranking_en_lm.tar.bz2 | tar xvjf - -C rerank_example curl https://dl.fbaipublicfiles.com/fairseq/models/noisychannel/wmt17test.tar.bz2 | tar xvjf - -C rerank_example beam=50 num_trials=1000 fw_name=fw_model_ex bw_name=bw_model_ex lm_name=lm_ex data_dir=rerank_example/hyphen-splitting-mixed-case-wmt17test-wmt14bpe data_dir_name=wmt17 lm=rerank_example/lm/checkpoint_best.pt lm_bpe_code=rerank_example/lm/bpe32k.code lm_dict=rerank_example/lm/dict.txt batch_size=32 bw=rerank_example/backward_en2de.pt fw=rerank_example/forward_de2en.pt # reranking with P(T|S) P(S|T) and P(T) python examples/noisychannel/rerank_tune.py $data_dir --tune-param lenpen weight1 weight3 \ --lower-bound 0 0 0 --upper-bound 3 3 3 --data-dir-name $data_dir_name \ --num-trials $num_trials --source-lang de --target-lang en --gen-model $fw \ -n $beam --batch-size $batch_size --score-model2 $fw --score-model1 $bw \ --backwards1 --weight2 1 \ -lm $lm --lm-dict $lm_dict --lm-name en_newscrawl --lm-bpe-code $lm_bpe_code \ --model2-name $fw_name --model1-name $bw_name --gen-model-name $fw_name # reranking with P(T|S) and P(T) python examples/noisychannel/rerank_tune.py $data_dir --tune-param lenpen weight3 \ --lower-bound 0 0 --upper-bound 3 3 --data-dir-name $data_dir_name \ --num-trials $num_trials --source-lang de --target-lang en --gen-model $fw \ -n $beam --batch-size $batch_size --score-model1 $fw \ -lm $lm --lm-dict $lm_dict --lm-name en_newscrawl --lm-bpe-code $lm_bpe_code \ --model1-name $fw_name --gen-model-name $fw_name # to run with a preconfigured set of hyperparameters for the lenpen and model weights, using rerank.py instead. python examples/noisychannel/rerank.py $data_dir \ --lenpen 0.269 --weight1 1 --weight2 0.929 --weight3 0.831 \ --data-dir-name $data_dir_name --source-lang de --target-lang en --gen-model $fw \ -n $beam --batch-size $batch_size --score-model2 $fw --score-model1 $bw --backwards1 \ -lm $lm --lm-dict $lm_dict --lm-name en_newscrawl --lm-bpe-code $lm_bpe_code \ --model2-name $fw_name --model1-name $bw_name --gen-model-name $fw_name ```