/ConvSeq2Seqv1

Primary LanguagePythonBSD 3-Clause "New" or "Revised" LicenseBSD-3-Clause

Convolutional Sequence to Sequence Learning

Chainer-based Python implementation of a convolutional seq2seq model.

This is derived from Chainer's official seq2seq example.

See Convolutional Sequence to Sequence Learning, Jonas Gehring, Michael Auli, David Grangier, Denis Yarats, Yann N. Dauphin, arxiv, 2017. blog post, Torch code.

Requirement

  • Python 3.6.0+
  • Chainer 2.0.0+ (this version is strictly required)
  • numpy 1.12.1+
  • cupy 1.0.0+ (if using gpu)
  • and their dependencies

Prepare Dataset

You can use any parallel corpus.
For example, run download_wmt.sh which downloads and decompresses training dataset and development dataset from WMT/europal into your current directory. These files and their paths are set in training script seq2seq.py as default.

How to Run

PYTHONIOENCODING=utf-8 python -u seq2seq.py -g=0 -i DATA_DIR -o SAVE_DIR

During training, logs for loss, perplexity, word accuracy and time are printed at a certain internval, in addition to validation tests (perplexity and BLEU for generation) every half epoch. And also, generation test is performed and printed for checking training progress.

Arguments

  • -g: your gpu id. If cpu, set -1.
  • -i DATA_DIR, -s SOURCE, -t TARGET, -svalid SVALID, -tvalid TVALID:
    DATA_DIR directory needs to include a pair of training dataset SOURCE and TARGET with a pair of validation dataset SVALID and TVALID. Each pair should be parallell corpus with line-by-line sentence alignment.
  • -o SAVE_DIR: JSON log report file and a model snapshot will be saved in SAVE_DIR directory (if it does not exist, it will be automatically made).
  • -e: max epochs of training corpus.
  • -b: minibatch size.
  • -u: size of units and word embeddings.
  • -l: number of layers in both the encoder and the decoder.
  • --source-vocab: max size of vocabulary set of source language
  • --target-vocab: max size of vocabulary set of target language