Litcius/Paper detail

Open-domain clarification question generation without question examples

Julia White, Gabriel Poesia, Robert D. Hawkins, Dorsa Sadigh, Noah D. Goodman

2021Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing14 citationsDOIOpen Access PDF

Abstract

An overarching goal of natural language processing is to enable machines to communicate seamlessly with humans. However, natural language can be ambiguous or unclear. In cases of uncertainty, humans engage in an interactive process known as repair: asking questions and seeking clarification until their uncertainty is resolved. We propose a framework for building a visually grounded questionasking model capable of producing polar (yesno) clarification questions to resolve misunderstandings in dialogue. Our model uses an expected information gain objective to derive informative questions from an off-the-shelf image captioner without requiring any supervised question-answer data. We demonstrate our model's ability to pose questions that improve communicative success in a goal-oriented 20 questions game with synthetic and human answerers.

Topics & Concepts

Computer scienceNatural (archaeology)Natural languageProcess (computing)Domain (mathematical analysis)Open domainNatural language generationArtificial intelligenceQuestion answeringHuman–computer interactionData scienceArchaeologyOperating systemHistoryMathematicsMathematical analysisMultimodal Machine Learning ApplicationsTopic ModelingSpeech and dialogue systems