目标个性化产品包生成

Okan Tunali, Ahmet Tugrul Bayrak
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引用次数: 1

摘要

在当今的商业世界中,随着产品和服务多样性的增加,竞争也在加剧,公司正在寻找智能方法,将合适的产品带给他们的客户。产品束生成是其中一种方法,其中收集并呈现可能一起购买的产品。在我们的研究中,产品捆绑生产引擎开发基于销售数据的先驱连锁快餐行业。该研究是产品推荐系统的一个组成部分,通过提取产品篮统计数据并根据目标使用定制的高斯混合模型来学习数据模式。采用混合模型作为优先排序工具的深度优先搜索算法生成目标的合适产品束。该研究还通过考虑特定客户群体的加权目标、一般购买偏好和销售周期来产生产出。虽然开发的模型独立于部门,但它允许根据业务需求进行扩展,因为它由离散的模块组成。
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Targeted Personalized Product Bundle Generation
In today’s business world, where competition is increasing with the increase in product and service diversity, companies are in search of smart methods to bring the right products to their customers. Product bundle generation, in which products that are likely to be purchased together, are collected and presented is one of these methods. In our study, a product bundle production engine is developed based on the sales data of a pioneering chain in the fast-food industry. In the study, which is a component of the product recommendation system, data patterns are learned by extracting product basket statistics and using a customized Gaussian Mixture Model according to the targets. Suitable product bundles for the targets are produced with the depth-first search algorithm, which uses mixture models as a prioritization tool. The study also produces output by considering weighted targets specific to certain customer groups, general purchasing preferences and sales periods. Although the developed model is independent of the sector, it allows for expansion according to business needs, as it consists of discrete modules.
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