PERT: Pre-training BERT with Permuted Language Model

14 Mar 2022  ·  Yiming Cui, Ziqing Yang, Ting Liu ·

Pre-trained Language Models (PLMs) have been widely used in various natural language processing (NLP) tasks, owing to their powerful text representations trained on large-scale corpora. In this paper, we propose a new PLM called PERT for natural language understanding (NLU). PERT is an auto-encoding model (like BERT) trained with Permuted Language Model (PerLM). The formulation of the proposed PerLM is straightforward. We permute a proportion of the input text, and the training objective is to predict the position of the original token. Moreover, we also apply whole word masking and N-gram masking to improve the performance of PERT. We carried out extensive experiments on both Chinese and English NLU benchmarks. The experimental results show that PERT can bring improvements over various comparable baselines on some of the tasks, while others are not. These results indicate that developing more diverse pre-training tasks is possible instead of masked language model variants. Several quantitative studies are carried out to better understand PERT, which might help design PLMs in the future. Resources are available: https://github.com/ymcui/PERT

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Stock Market Prediction Astock Chinese Pert Large (News+Factors) Accuray 67.37 # 4
F1-score 67.27 # 4
Recall 67.73 # 4
Precision 67.28 # 4
Stock Market Prediction Astock Chinese Pert Large (News) Accuray 65.09 # 8
F1-score 65.03 # 8
Recall 65.07 # 8
Precision 65.02 # 8

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