Code for the paper A Theoretical Analysis of the Repetition Problem in Text Generation

Overview

A Theoretical Analysis of the Repetition Problem in Text Generation

This repository share the code for the paper "A Theoretical Analysis of the Repetition Problem in Text Generation" in AAAI 2021. The repetition problem has been observed in nearly all text generation models. We theoretically prove that this problem is, unfortunately, caused by the traits of our language itself. There exists too many words predicting the same word as the subsequent word with high probability. Consequently, it is easy to go back to that word and form repetitions. We dub this problem as the high inflow problem. Based on the theoretical analysis, we propose a novel rebalanced encoding approach to alleviate the high inflow problem.

[arXiv]

Requirements

  • GCC >= 4.8
  • Python >= 3.7

Install

git clone https://github.com/fuzihaofzh/repetition-problem-nlg.git
cd repetition-problem-nlg
./scripts/setup.sh

iwslt14

Preprocess Data

./scripts/iwslt14_preprocess.sh

Train

./scripts/iwslt14_train.sh iwslt14deen_fastbpe_10000
./scripts/iwslt14_train.sh iwslt14deen_fastbpe_10000_re0.1

Test

./scripts/iwslt14_test.sh

Results can be found in output/eval/*

wiki103

Download the preprocessed data

git clone https://github.com/fuzihaofzh/preprocessed_wiki103.git output/preprocessed/wiki103

This may take few minutes to complete.

Preprocess Data

./scripts/wiki103_preprocess.sh

Train

./scripts/wiki103_train.sh wiki103_fastbpe_10000
./scripts/wiki103_train.sh wiki103_fastbpe_10000_re0.1

Test

./scripts/wiki103_test.sh

Results can be found in output/eval/*

Cite

@inproceedings{fu2020a,
  title={A Theoretical Analysis of the Repetition Problem in Text Generation.},
  author={Fu, Zihao and Lam, Wai and So, Anthony Man-Cho and Shi, Bei },
  booktitle={Thirty-Fifth AAAI Conference on Artificial Intelligence},
  year={2021}
}
Owner
Zihao Fu
Zihao Fu
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