Litcius/Paper detail

S<scp>oloist</scp>: BuildingTask Bots at Scale with Transfer Learning and Machine Teaching

Baolin Peng, Chunyuan Li, Jinchao Li, Shahin Shayandeh, Lars Lidén, Jianfeng Gao

2021Transactions of the Association for Computational Linguistics94 citationsDOIOpen Access PDF

Abstract

Abstract We present a new method, Soloist,1 that uses transfer learning and machine teaching to build task bots at scale. We parameterize classical modular task-oriented dialog systems using a Transformer-based auto-regressive language model, which subsumes different dialog modules into a single neural model. We pre-train, on heterogeneous dialog corpora, a task-grounded response generation model, which can generate dialog responses grounded in user goals and real-world knowledge for task completion. The pre-trained model can be efficiently adapted to accomplish new tasks with a handful of task-specific dialogs via machine teaching, where training samples are generated by human teachers interacting with the system. Experiments show that (i)Soloist creates new state-of-the-art on well-studied task-oriented dialog benchmarks, including CamRest676 and MultiWOZ; (ii) in the few-shot fine-tuning settings, Soloist significantly outperforms existing methods; and (iii) the use of machine teaching substantially reduces the labeling cost of fine-tuning. The pre-trained models and codes are available at https://aka.ms/soloist.

Topics & Concepts

Dialog boxComputer scienceTask (project management)Modular designAKAArtificial intelligenceTransformerTransfer of learningMachine translationNatural language processingDialog systemHuman–computer interactionSpeech recognitionProgramming languageWorld Wide WebQuantum mechanicsEconomicsLibrary scienceManagementPhysicsVoltageTopic ModelingNatural Language Processing TechniquesSpeech and dialogue systems