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FAN vs Transfomer

Requirements

  • Python 3
  • PyTorch 0.4

Data

First download the data from Linzen's paper

$ ./download_data.sh

Then split the data into train/dev/test to expr_data directory.

$ python split_data.py data/agr_50_mostcommon_10K.tsv expr_data

Create dictionary

$ python build_dictionary.py expr_data

This script will write a vocab.pkl file to expr_data

Language Model

DATA=~/path/to/expr_data
EXPR=~/path/to/save_models

Train FAN LM with -arch fan

$ python lm.py -train $DATA/train.tsv -valid $DATA/valid.tsv \
-dict $DATA/vocab.pkl -word_vec_size 32 -rnn_size 32 -optim adam -layers 2 -epochs 50 -dropout 0.2 \
-batch_size 16 -n_words -1 -tied -save_model $EXPR/lm_fan.pt  -arch fan -lr 0.001 -num_heads 2

Verb Prediction

$ python vp.py -train $DATA/train.tsv -valid $DATA/valid.tsv \
    -dict $DATA/vocab.pkl -word_vec_size 32 -rnn_size 32 -optim adam -layers 2 -epochs 50 -dropout 0.2 \
    -batch_size 16 -n_words -1 -save_model $EXPR/vp_fan.pt  -arch rnn -lr 0.001 -num_heads 2

Logical Inference

First, we generate the data for logical inference task

$ cd propositionallogic
$ python generate_neg_set_data.py

The script is a modified version of Bowman's code


$ python logic.py -word_vec_size 32 -rnn_size 32 -optim adam -layers 2 -epochs 50 -dropout 0.2  -batch_size 64 -data_dir $DATA/propositionallogic/ \
    -save_model $EXPR/logic_fan.pt  -arch fan -lr 0.001  -max_bin 13  -report_every 100 -num_heads 2

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The Importance of Being Recurrent for Modeling Hierarchical Structure

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