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arxiv: 2108.01547 · v1 · pith:VN44IHTPnew · submitted 2021-08-03 · 💻 cs.CL · cs.AI

EVA: An Open-Domain Chinese Dialogue System with Large-Scale Generative Pre-Training

classification 💻 cs.CL cs.AI
keywords dialoguechinesemodelpre-trainedcontainsdatasetlargestmodels
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Although pre-trained language models have remarkably enhanced the generation ability of dialogue systems, open-domain Chinese dialogue systems are still limited by the dialogue data and the model size compared with English ones. In this paper, we propose EVA, a Chinese dialogue system that contains the largest Chinese pre-trained dialogue model with 2.8B parameters. To build this model, we collect the largest Chinese dialogue dataset named WDC-Dialogue from various public social media. This dataset contains 1.4B context-response pairs and is used as the pre-training corpus of EVA. Extensive experiments on automatic and human evaluation show that EVA outperforms other Chinese pre-trained dialogue models especially in the multi-turn interaction of human-bot conversations.

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