When a human asks questions online, or when a conversational virtual agent asks human questions, questions triggering emotions or with details might more likely to get responses or answers. we explore how to automatically rewrite natural language questions to improve the response rate from people. In particular, a new task of Visual Question Rewriting(VQR) task is introduced to explore how visual information can be used to improve the new questions. A data set containing around 4K bland questions, attractive questions and images triples is collected. We developed some baseline sequence to sequence models and more advanced transformer based models, which take a bland question and a related image as input and output a rewritten question that is expected to be more attractive. Offline experiments and mechanical Turk based evaluations show that it is possible to rewrite bland questions in a more detailed and attractive way to increase the response rate, and images can be helpful.
翻译:当一个人在线提问时,或者当一个对话虚拟代理提出人的问题时,引发情绪或细节的问题更可能得到回应或答案。我们探索如何自动重写自然语言问题以提高人们的回复率。特别是,引入了视觉问题重写(VQR)的新任务,以探讨如何利用视觉信息改进新问题。收集了一套包含大约4kbland问题、有吸引力的问题和图像三重的数据集。我们开发了一些序列序列模型和更先进的变压器模型,这些模型将一个粗糙的问题和相关的图像作为投入和输出出一个预期更吸引人的重写问题。离线实验和基于土耳其的机械评估表明,有可能以更详细和有吸引力的方式重写粗地问题,以提高回复率,图像可以有所帮助。