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Beyond Goldfish Memory: Long-Term Open-Domain Conversation

Annual Meeting of the Association for Computational Linguistics (ACL), 2021
Main:10 Pages
6 Figures
Bibliography:2 Pages
10 Tables
Appendix:3 Pages
Abstract

Despite recent improvements in open-domain dialogue models, state of the art models are trained and evaluated on short conversations with little context. In contrast, the long-term conversation setting has hardly been studied. In this work we collect and release a human-human dataset consisting of multiple chat sessions whereby the speaking partners learn about each other's interests and discuss the things they have learnt from past sessions. We show how existing models trained on existing datasets perform poorly in this long-term conversation setting in both automatic and human evaluations, and we study long-context models that can perform much better. In particular, we find retrieval-augmented methods and methods with an ability to summarize and recall previous conversations outperform the standard encoder-decoder architectures currently considered state of the art.

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