Proactive Guidance of Multi-Turn Conversation in Industrial Search
Xiaoyu Li, Xiao Li, Li Gao, Yiding Liu, Xiaoyang Wang, Shuaiqiang Wang, Junfeng Wang, Dawei Yin

TL;DR
This paper introduces a two-phase framework for proactive guidance in industrial multi-turn search conversations, improving goal adaptation, interaction quality, and real-time performance in large-scale systems.
Contribution
It presents a novel goal-adaptive fine-tuning method and reinforcement learning approach tailored for industrial search, enhancing user engagement and system efficiency.
Findings
Achieved 86.10% accuracy in offline goal tracking
Improved click-through rate by 149.06% online
Reduced inference latency by 69.55%
Abstract
The evolution of Large Language Models (LLMs) has significantly advanced multi-turn conversation systems, emphasizing the need for proactive guidance to enhance users' interactions. However, these systems face challenges in dynamically adapting to shifts in users' goals and maintaining low latency for real-time interactions. In the Baidu Search AI assistant, an industrial-scale multi-turn search system, we propose a novel two-phase framework to provide proactive guidance. The first phase, Goal-adaptive Supervised Fine-Tuning (G-SFT), employs a goal adaptation agent that dynamically adapts to user goal shifts and provides goal-relevant contextual information. G-SFT also incorporates scalable knowledge transfer to distill insights from LLMs into a lightweight model for real-time interaction. The second phase, Click-oriented Reinforcement Learning (C-RL), adopts a generate-rank paradigm,…
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Taxonomy
TopicsDigital Communication and Language
