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Multi-campaign Assignment Problem and Optimizing Lagrange Multipliers

机译:多竞​​选分配问题和优化拉格朗日乘数

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Customer relationship management is crucial in acquiring and maintaining royal customers. To maximize revenue and customer satisfaction, companies try to provide personalized services for customers. A representative effort is one-to-one marketing. The fast development of Internet and mobile communication boosts up th market of one-to-one marketing. A personalized campaign targets the most attractive customers with respect to the subject of the campaign. So it is important to expect customer preferences for campaigns. Collaborative Filtering (CF) and various data mining techniques are used to expect customer preferences for campaigns. Especially, since CF is fast and simple, it is widely used for personalization in e-commerce. There have been a number of customer-preference estimation methods based on CF. As personalized campaigns are frequently performed, several campaigns often happen to run simultaneously. It is often the case that an attractive customer for a specific campaign tends to be attractive for other campaigns. If we perform separate campaigns without considering this problem, some customers may be bombarded by a considerable number of campaigns. We call this overlapped recommendation problem. The larger the number of recommendations for a customer, the lower the customer interest for campaigns. In the long run, the customer response for campaigns drops. It lowers the marketing efficiency as well as customer satisfaction. Unfortunately, traditional methods only focused on the effectiveness of a single campaign and did not consider the problem with respect to the overlapped recommendations. In this paper, we define the multi-campaign assignment problem (MCAP) considering the overlapped recommendation problem and propose a number of methods for the issue including a genetic approach. We also verify the effectiveness of the proposed methods with field data.
机译:客户关系管理对于获取和维护皇家客户至关重要。为了最大限度地提高收入和客户满意度,公司试图为客户提供个性化服务。代表性的努力是一对一的营销。互联网和移动通信的快速发展提升了一对一营销的市场。一个个性化的竞选人员在竞选主题方面针对最有吸引力的客户。因此,期望客户偏好对广告系列非常重要。协作过滤(CF)和各种数据挖掘技术用于期望客户偏好进行广告系列。特别是,由于CF快速简单,因此广泛用于电子商务中的个性化。基于CF的客户偏好估算方法存在许多客户偏好估算方法。随着个性化的广告系列经常进行,若干广告系列经常碰巧同时运行。对于特定活动的有吸引力的客户往往是对其他运动的吸引力。如果我们在不考虑这个问题的情况下执行单独的广告系列,可能会通过相当数量的广告系列轰炸一些客户。我们称之为重叠的推荐问题。客户的建议数量越大,广告系列的客户兴趣越低。从长远来看,广告系列的客户响应掉落。它降低了营销效率以及客户满意度。不幸的是,传统方法只关注单一运动的有效性,并没有考虑关于重叠建议的问题。在本文中,我们定义了考虑重叠的推荐问题的多竞选分配问题(MCAP),并提出了许多用于包括遗传方法的问题的方法。我们还验证了具有现场数据的提出方法的有效性。

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