Ho-Lam Chung


2022

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Keyword Provision Question Generation for Facilitating Educational Reading Comprehension Preparation
Ying-Hong Chan | Ho-Lam Chung | Yao-Chung Fan
Proceedings of the 15th International Conference on Natural Language Generation

2020

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A BERT-based Distractor Generation Scheme with Multi-tasking and Negative Answer Training Strategies.
Ho-Lam Chung | Ying-Hong Chan | Yao-Chung Fan
Findings of the Association for Computational Linguistics: EMNLP 2020

In this paper, we investigate the following two limitations for the existing distractor generation (DG) methods. First, the quality of the existing DG methods are still far from practical use. There are still room for DG quality improvement. Second, the existing DG designs are mainly for single distractor generation. However, for practical MCQ preparation, multiple distractors are desired. Aiming at these goals, in this paper, we present a new distractor generation scheme with multi-tasking and negative answer training strategies for effectively generating multiple distractors. The experimental results show that (1) our model advances the state-of-the-art result from 28.65 to 39.81 (BLEU 1 score) and (2) the generated multiple distractors are diverse and shows strong distracting power for multiple choice question.