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Approach based upon language model in Bengio et al ICML 09 "Curriculum Learning". You will need my common python library: http://github.com/turian/common and my textSNE wrapper for t-SNE: http://github.com:turian/textSNE You will need Murmur for hashing. easy_install Murmur To train a monolingual language model, probably you should run: [edit hyperparameters.language-model.yaml] ./build-vocabulary.py ./train.py To train word-to-word multilingual model, probably you should run: cd scripts; ln -s hyperparameters.language-model.sample.yaml s hyperparameters.language-model.yaml # Create validation data: ./preprocess-validation.pl > ~/data/SemEval-2-2010/Task\ 3\ -\ Cross-Lingual\ Word\ Sense\ Disambiguation/validation.txt Tokenizer v3 # [optional: Lemmatize] Tadpole --skip=tmp -t ~/dev/python/mt-language-model/neural-language-model/data/filtered-full-bilingual/en-nl/filtered-training.nl | perl -ne 's/\t/ /g; print lc($_);' | chop 3 | from-one-line-per-word-to-one-line-per-sentence.py > ~/dev/python/mt-language-model/neural-language-model/data/filtered-full-bilingual-lemmas/en-nl/filtered-training-lemmas.nl # [TODO: * Initialize using monolingual language model in source language. * Loss = logistic, not margin. ] # [optional: Run the following if your alignment for language pair l1-l2 # is in form l2-l1] ./scripts/preprocess/reverse-alignment.pl ./w2w/build-vocabulary.py # Then see the output with ./w2w/dump-vocabulary.py, to see if you want # to adjust the w2w minfreq hyperparameter ./w2w/build-target-vocabulary.py # Then see the output with ./w2w/dump-target-vocabulary.py ./w2w/build-initial-embeddings.py # [optional: Filter the corpora only to include sentences with certain # focus words.] # You want to make sure this happens AFTER # ./w2w/build-initial-embeddings.py, so you have good embeddings for words # that aren't as common in the filtered corpora. ./scripts/preprocess/filter-sentences-by-lemma.py # You should then move the filtered corpora to a new data directory.] #[optional: This will cache all the training examples onto disk. This will # happen automatically during training anyhow.] ./scripts/w2w/build-example-cache.py ./w2w/train.py TODO: * sqrt scaling of SGD updates * Use normalization of embeddings? * How do we initialize embeddings? * Use tanh, not softsign? * When doing SGD on embeddings, use sqrt scaling of embedding size?
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Implementation of neural language models, in particular Collobert + Weston (2008) and a stochastic margin-based version of Mnih's LBL.
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