Accurate intent classification is critical for efficient routing in customer service, ensuring customers are connected with the most suitable agents while reducing handling times and operational costs. However, as companies expand their product lines, intent classification faces scalability challenges due to the increasing number of intents and variations in taxonomy across different verticals. In this paper, we introduce REIC, a Retrieval-augmented generation Enhanced Intent Classification approach, which addresses these challenges effectively. REIC leverages retrieval-augmented generation (RAG) to dynamically incorporate relevant knowledge, enabling precise classification without the need for frequent retraining. Through extensive experiments on real-world datasets, we demonstrate that REIC outperforms traditional fine-tuning, zero-shot, and few-shot methods in large-scale customer service settings. Our results highlight its effectiveness in both in-domain and out-of-domain scenarios, demonstrating its potential for real-world deployment in adaptive and large-scale intent classification systems.
翻译:准确的意图分类对于客户服务中的高效路由至关重要,它确保客户被连接到最合适的客服人员,同时减少处理时间和运营成本。然而,随着企业产品线的扩展,意图分类面临可扩展性挑战,这源于意图数量的不断增加以及不同垂直领域中分类体系的变化。本文提出REIC,一种基于检索增强生成的增强型意图分类方法,有效应对了这些挑战。REIC利用检索增强生成技术动态整合相关知识,实现精确分类而无需频繁重新训练。通过在真实数据集上进行大量实验,我们证明REIC在大规模客户服务场景中优于传统的微调、零样本和少样本方法。我们的结果突显了其在领域内和领域外场景中的有效性,展示了其在自适应和大规模意图分类系统中实际部署的潜力。