Back to Search Start Over

Simulated Chats for Building Dialog Systems: Learning to Generate Conversations from Instructions

Authors :
Mohapatra, Biswesh
Pandey, Gaurav
Contractor, Danish
Joshi, Sachindra
Publication Year :
2020

Abstract

Popular dialog datasets such as MultiWOZ are created by providing crowd workers an instruction, expressed in natural language, that describes the task to be accomplished. Crowd workers play the role of a user and an agent to generate dialogs to accomplish tasks involving booking restaurant tables, calling a taxi etc. In this paper, we present a data creation strategy that uses the pre-trained language model, GPT2, to simulate the interaction between crowd workers by creating a user bot and an agent bot. We train the simulators using a smaller percentage of actual crowd-generated conversations and their corresponding instructions. We demonstrate that by using the simulated data, we achieve significant improvements in low-resource settings on two publicly available datasets - the MultiWOZ dataset and the Persona chat dataset.<br />Comment: Accepted in the Findings of EMNLP 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2010.10216
Document Type :
Working Paper