GLGE: A New General Language Generation Evaluation Benchmark
- Dayiheng Liu ,
- Yu Yan ,
- Yeyun Gong ,
- Weizhen Qi ,
- Hang Zhang ,
- Jian Jiao ,
- Wei Chen ,
- Jie Fu ,
- Linjun Shou ,
- Ming Gong (YIMING) ,
- Pengcheng Wang ,
- Jiusheng Chen ,
- Daxin Jiang (姜大昕) ,
- Jiancheng Lv ,
- Ruofei Zhang ,
- Winnie Wu ,
- Ming Zhou ,
- Nan Duan
ACL-IJCNLP 2021 |
Multi-task benchmarks such as GLUE and SuperGLUE have driven great progress of pretraining and transfer learning in Natural Language Processing (NLP). These benchmarks mostly focus on a range of Natural Language Understanding (NLU) tasks, without considering the Natural Language Generation (NLG) models. In this paper, we present the General Language Generation Evaluation (GLGE), a new multi-task benchmark for evaluating the generalization capabilities of NLG models across eight language generation tasks. For each task, we continue to design three subtasks in terms of task difficulty (GLGE-Easy, GLGE-Medium, and GLGE-Hard). This introduces 24 subtasks to comprehensively compare model performance. To encourage research on pretraining and transfer learning on NLG models, we make GLGE publicly available and build a leaderboard with strong baselines including MASS, BART, and ProphetNet (The source code and dataset will be publicly available at this https URL).
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GLGE
May 13, 2021
General Language Generation Evaluation (GLGE) benchmark is a new multi-task benchmark for evaluating the generalization capabilities of NLG across eight language generation tasks.