Wang Xu, Shuo Wang, Weilin Zhao, Xu Han, Yukun Yan, Yudi Zhang, Zhe Tao, Zhiyuan Liu, Wanxiang Che
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引用次数: 0
Abstract
Large language models (LLMs) have demonstrated the ability to improve human
efficiency through conversational interactions. Conventional LLM-powered
dialogue systems, operating on a turn-based paradigm, preclude real-time
interaction during response generation. To address this limitation, researchers
have proposed duplex models. These models can dynamically adapt to user input,
facilitating real-time interactive feedback. However, these methods typically
require substantial computational resources to acquire the ability. To reduce
overhead, this paper presents a new duplex decoding approach that enhances LLMs
with duplex ability, requiring minimal additional training. Specifically, our
method employs parallel decoding of queries and responses in conversations,
effectively implementing a channel-division-multiplexing decoding strategy.
Experimental results indicate that our proposed method significantly enhances
the naturalness and human-likeness of user-AI interactions with minimal
training costs.