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Project on automatic sound law derivation using reinforcement learning (Luo 2021)

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Benchmark Sound Law LSTM

Part of a project that tries to automatically derive sound laws from a list of cognates.

This project uses the ielex dataset as provided in Jäger et al. 2017, "Using support vector machines and state-of-the-art algorithms for phonetic alignment to ientify cognates in multi-lingual wordlists".

Prepare data

  • Obtain NorthEuraLex dataset by running wget http://www.sfs.uni-tuebingen.de/~jdellert/northeuralex/0.9/northeuralex-0.9-forms.tsv.
  • Obtain cognate set dataset and merge it with NorthEuraLex by using wikt_reader library. You would get a family file.
  • Prepare input data by running
python scripts/process_data_wikt.py --data_path <path_to_family_file> --source <src> --targets <tgt_langs> --no_need_transcriber

For instance, for the Germanic language family, run

python scripts/process_data_wikt.py --data_path data/Germanic.tsv --source gem-pro --targets eng deu isl nor swe dan nld --no_need_transcriber

Dependencies

  • various packages in requirements.txt. Run pip install -r requirements.txt.
  • boost packages are needed. On Ubuntu, run sudo apt-get install libboost-all-dev.
  • Install spdlog with the static lib version.

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Project on automatic sound law derivation using reinforcement learning (Luo 2021)

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  • Python 73.1%
  • C++ 26.9%