The ticket automation provides crucial support for the normal operation of IT software systems. An essential task of ticket automation is to assign experts to solve upcoming tickets. However, facing thousands of tickets, inappropriate assignments will make tickets transfer frequently among experts, which causes time delays and wasted resources. Effectively and efficiently finding an appropriate expert in fewer steps is vital to ticket automation. In this paper, we proposed a sequence to sequence based translation model combined with a recurrent recommendation network to recommend appropriate experts for tickets. The sequence to sequence model transforms the ticket description into the corresponding resolution for capturing the potential and useful features of representing tickets. The recurrent recommendation network recommends the appropriate expert based on the assumption that the previous expert in the recommendation sequence cannot solve the expert. To evaluate the performance, we conducted experiments to compare several baselines with SSR-TA on two real-world datasets, and the experimental results show that our proposed model outperforms the baselines. The comparative experiment results also show that SSR-TA has a better performance of expert recommendations for user-generated tickets.
翻译:机票自动化为信息技术软件系统的正常运行提供了关键支持。机票自动化的基本任务是指派专家解决即将到来的机票问题。然而,面对数千张机票,不适当的派任会经常在专家之间转让机票,造成时间延误和浪费资源。从少步寻找合适的专家对于机票自动化至关重要。在本文中,我们提议了按顺序排列的翻译模式的顺序,同时建议一个经常性建议网络,以推荐适当的机票专家。排序模式的顺序将票单说明转换为相应的解决方案,以捕捉代表机票的潜在和有用特征。经常性推荐网络根据建议序列中前任专家无法解决专家问题的假设推荐合适的专家。为了评估业绩,我们进行了实验,在两个真实世界数据集上将几个基线与SSR-TA进行比较,实验结果显示我们提议的模型比基准要好。比较实验结果还显示,SSR-TA对用户生成机票的专家建议表现更好。