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Answering with Cases: A CBR Approach to Deep Learning

机译:案例解答:深度学习的CBR方法

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Every year tenths of thousands of customer support engineers around the world deal with, and proactively solve, complex help-desk tickets. Daily, almost every customer support expert will turn his/her attention to a prioritization strategy, to achieve the best possible result. To assist with this, in this paper we describe a novel case-based reasoning application to address the tasks of: high solution accuracy and shorter prediction resolution time. We describe how appropriate cases can be generated to assist engineers and how our solution can scale over time to produce domain-specific reusable cases for similar problems. Our work is evaluated using data from 5000 cases from the automotive industry.
机译:每年,全球有成千上万的客户支持工程师处理并主动解决复杂的服务台故障单。每天,几乎每位客户支持专家都会将他/她的注意力转移到优先排序策略上,以实现最佳结果。为了解决这个问题,在本文中,我们描述了一种新颖的基于案例的推理应用程序,以解决以下任务:较高的解决方案精度和较短的预测解决时间。我们描述了如何生成适当的案例以帮助工程师,以及我们的解决方案如何随着时间的推移扩展以针对类似问题生成特定于域的可重用案例。我们使用来自汽车行业的5000个案例的数据对我们的工作进行了评估。

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