Aiming to ensure chatbot quality by predicting chatbot failure and enabling human-agent collaboration, Machine-Human Chatting Handoff (MHCH) has attracted lots of attention from both industry and academia in recent years. However, most existing methods mainly focus on the dialogue context or assist with global satisfaction prediction based on multi-task learning, which ignore the grounded relationships among the causal variables, like the user state and labor cost. These variables are significantly associated with handoff decisions, resulting in prediction bias and cost increasement. Therefore, we propose Causal-Enhance Module (CEM) by establishing the causal graph of MHCH based on these two variables, which is a simple yet effective module and can be easy to plug into the existing MHCH methods. For the impact of users, we use the user state to correct the prediction bias according to the causal relationship of multi-task. For the labor cost, we train an auxiliary cost simulator to calculate unbiased labor cost through counterfactual learning so that a model becomes cost-aware. Extensive experiments conducted on four real-world benchmarks demonstrate the effectiveness of CEM in generally improving the performance of existing MHCH methods without any elaborated model crafting.
翻译:为了通过预测聊天室失灵和促成人类代理协作来确保聊天室质量,机器-人类聊天交接(MHCH)近年来吸引了业界和学术界的极大关注,然而,大多数现有方法主要侧重于对话背景,或协助基于多任务学习的全球满意度预测,这些学习忽视了因果变量之间的根基关系,如用户状态和劳动力成本等。这些变量与搭接决定密切相关,从而导致预测偏差和成本增加。因此,我们提议以这两个变量为基础建立Causal-Enthance模块(CEM),这是一个简单而有效的模块,很容易插入现有的MHCH方法。关于用户的影响,我们利用用户状态根据多任务和劳动力成本的因果关系纠正预测偏差。关于劳动成本,我们培训一个辅助成本模拟器,通过反事实学习计算无偏见的劳动成本,从而形成成本意识模型。在四个现实世界基准上进行的广泛实验表明,CEM在普遍改进现有MHCH方法的绩效方面,没有制定任何模型。