Litcius/Paper detail

MovieChats: Chat like Humans in a Closed Domain

Hui Su, Xiaoyu Shen, Xiao Zhou, Zheng Zhang, Ernie Chang, Cheng Zhang, Cheng Niu, Jie Zhou

202024 citationsDOIOpen Access PDF

Abstract

Being able to perform in-depth chat with humans in a closed domain is a precondition before an open-domain chatbot can ever be claimed. In this work, we take a close look at the movie domain and present a large-scale high-quality corpus with fine-grained annotations in hope of pushing the limit of moviedomain chatbots. We propose a unified, readily scalable neural approach which reconciles all subtasks like intent prediction and knowledge retrieval. The model is first pretrained on the huge general-domain data, then finetuned on our corpus. We show this simple neural approach trained on high-quality data is able to outperform commercial systems replying on complex rules. On both the static and interactive tests, we find responses generated by our system exhibits remarkably good engagement and sensibleness close to human-written ones.

Topics & Concepts

Computer scienceDomain (mathematical analysis)ScalabilityChatbotQuality (philosophy)Artificial intelligencePoint (geometry)Domain knowledgeScale (ratio)Open domainSimple (philosophy)Limit (mathematics)Natural language processingHuman–computer interactionQuestion answeringDatabasePhysicsEpistemologyPhilosophyMathematical analysisQuantum mechanicsGeometryMathematicsTopic ModelingMisinformation and Its ImpactsMultimodal Machine Learning Applications
MovieChats: Chat like Humans in a Closed Domain | Litcius