Publication | Open Access
Answerer in Questioner's Mind: Information Theoretic Approach to Goal-Oriented Visual Dialog
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2018
Year
Artificial IntelligenceEngineeringMachine LearningCognitionSpoken Dialog SystemCommunicationSocial SciencesNatural Language ProcessingVisual LanguageComputational LinguisticsGoal-oriented DialogVisual Question AnsweringConversation AnalysisRobot LearningCognitive ScienceDialogue ManagementQuestion AnsweringInformation Theoretic ApproachConversational Recommender SystemComputer ScienceVisual ReasoningEye TrackingGoal-oriented Visual DialogHuman-computer Interaction
Goal-oriented dialog has been given attention due to its numerous applications in artificial intelligence. Goal-oriented dialogue tasks occur when a questioner asks an action-oriented question and an answerer responds with the intent of letting the questioner know a correct action to take. To ask the adequate question, deep learning and reinforcement learning have been recently applied. However, these approaches struggle to find a competent recurrent neural questioner, owing to the complexity of learning a series of sentences. Motivated by theory of mind, we propose "Answerer in Questioner's Mind" (AQM), a novel information theoretic algorithm for goal-oriented dialog. With AQM, a questioner asks and infers based on an approximated probabilistic model of the answerer. The questioner figures out the answerer's intention via selecting a plausible question by explicitly calculating the information gain of the candidate intentions and possible answers to each question. We test our framework on two goal-oriented visual dialog tasks: "MNIST Counting Dialog" and "GuessWhat?!". In our experiments, AQM outperforms comparative algorithms by a large margin.