Adversarial and Safely Scaled Question Generation
Sreehari Sankar, Zhihang Dong

TL;DR
This paper presents an adversarial, scalable question generation system that significantly improves the quality and safety of generated questions, reducing misinformation and harmful content while increasing output volume.
Contribution
It introduces an adversarial approach for safe, scalable question generation that prunes unanswerable questions and enhances quality, suitable for large-scale applications.
Findings
Generated over six times more questions than baseline methods.
Perceived question quality increased by 44%.
System effectively filters hate speech, profanity, and misinformation.
Abstract
Question generation has recently gained a lot of research interest, especially with the advent of large language models. In and of itself, question generation can be considered 'AI-hard', as there is a lack of unanimously agreed sense of what makes a question 'good' or 'bad'. In this paper, we tackle two fundamental problems in parallel: on one hand, we try to solve the scaling problem, where question-generation and answering applications have to be applied to a massive amount of text without ground truth labeling. The usual approach to solve this problem is to either downsample or summarize. However, there are critical risks of misinformation with these approaches. On the other hand, and related to the misinformation problem, we try to solve the 'safety' problem, as many public institutions rely on a much higher level of accuracy for the content they provide. We introduce an…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques
