Publication | Closed Access
A Reinforcement Learning Framework for Natural Question Generation using Bi-discriminators
33
Citations
34
References
2018
Year
Artificial IntelligenceEngineeringMachine LearningQuestion GeneratorSequential LearningLanguage ProcessingNatural Language ProcessingMultimodal LlmVisual GroundingComputational LinguisticsVisual Question AnsweringLanguage StudiesMachine TranslationCognitive ScienceQuestion AnsweringNlp TaskVision Language ModelDeep LearningNatural QuestionsRetrieval Augmented GenerationLanguage GenerationReinforcement Learning FrameworkLinguisticsVisual Question Generation
Visual Question Generation (VQG) aims to ask natural questions about an image automatically. Existing research focus on training model to fit the annotated data set that makes it indifferent from other language generation tasks. We argue that natural questions need to have two specific attributes from the perspectives of content and linguistic respectively, namely, natural and human-written. Inspired by the setting of discriminator in adversarial learning, we propose two discriminators, one for each attribute, to enhance the training. We then use the reinforcement learning framework to incorporate scores from the two discriminators as the reward to guide the training of the question generator. Experimental results on a benchmark VQG dataset show the effectiveness and robustness of our model compared to some state-of-the-art models in terms of both automatic and human evaluation metrics.
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