Automated Chinese Essay Scoring from Multiple Traits
Published in COLING, 2022
Recommended citation: Yaqiong He, Feng Jiang, Xiaomin Chu, Peifeng Li: Automated Chinese Essay Scoring from Multiple Traits. In Proceedings of the 29th International Conference on Computational Linguistics (COLING 2022): 3007-3016. https://aclanthology.org/2022.coling-1.266.pdf
Automatic Essay Scoring (AES) is the task of using the computer to evaluate the quality of essays automatically. Current research on AES focuses on scoring the overall quality or single trait of prompt-specific essays. However, the users not only expect to obtain the overall score but also the instant feedback from different traits to help their writing in the real world. Therefore, we first annotate a mutli-trait dataset ACEA including 1220 argumentative essays from four traits, i.e., essay organization, topic, logic, and language. And then we design a hierarchical multi-task trait scorer HMTS to evaluate the quality of writing by modeling these four traits. Moreover, we propose an inter-sequence attention mechanism to enhance information interaction between different tasks and design the trait-specific features for various tasks in AES. The experimental results on ACEA show that our HMTS can effectively score essays from multiple traits, outperforming several strong models.
Recommended citation:Yaqiong He, Feng Jiang, Xiaomin Chu, Peifeng Li: Automated Chinese Essay Scoring from Multiple Traits. In Proceedings of the 29th International Conference on Computational Linguistics (COLING 2022): 3007-3016.