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GODEL: Large-Scale Pre-Training for Goal-Directed Dialog

Authors :
Peng, Baolin
Galley, Michel
He, Pengcheng
Brockett, Chris
Liden, Lars
Nouri, Elnaz
Yu, Zhou
Dolan, Bill
Gao, Jianfeng
Publication Year :
2022

Abstract

We introduce GODEL (Grounded Open Dialogue Language Model), a large pre-trained language model for dialog. In contrast with earlier models such as DialoGPT, GODEL leverages a new phase of grounded pre-training designed to better support adapting GODEL to a wide range of downstream dialog tasks that require information external to the current conversation (e.g., a database or document) to produce good responses. Experiments against an array of benchmarks that encompass task-oriented dialog, conversational QA, and grounded open-domain dialog show that GODEL outperforms state-of-the-art pre-trained dialog models in few-shot fine-tuning setups, in terms of both human and automatic evaluation. A novel feature of our evaluation methodology is the introduction of a notion of utility that assesses the usefulness of responses (extrinsic evaluation) in addition to their communicative features (intrinsic evaluation). We show that extrinsic evaluation offers improved inter-annotator agreement and correlation with automated metrics. Code and data processing scripts are publicly available.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2206.11309
Document Type :
Working Paper