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Personalization of Supermarket Product Recommendations

机译:超市产品推荐的个性化

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We describe a personalized recommender system designed to suggest new products to supermarket shoppers. The recommender functions in a pervasive computing environment, namely, a remote shopping system in which supermarket customers use Personal Digital Assistant (PDAs) to compose and transmit their orders to the store, which assembles them for subsequent pickup. The recommender is meant to provide an alternative source of new ideas for customers who now visit the store less frequently. Recommendations are generated by matching products to customers based on the expected appeal of the product and the previous spending of the customer. Associations mining in the product domain is used to determine relationships among product classes for use in characterizing the appeal of individual products. Clustering in the customer domain is used to identify groups of shoppers with similar spending histories. Cluster-specific lists of popular products are then used as input to the matching process. The recommender is currently being used in a pilot program with several hundred customers. Analysis of results to data have shown a 1.8% boost in program revenue as a result of purchases made directly from the list of recommended products. A substantial fraction of the accepted recommendations are from product classes new to the customer, indicating a degree of willingness to expand beyond present purchase patterns in response to reasonable suggestions.
机译:我们描述了一种个性化的推荐系统,旨在向超市购物者推荐新产品。推荐器在普适的计算环境中运行,即在远程购物系统中,超级市场客户使用个人数字助理(PDA)编写订单并将其传输到商店,然后组装它们以进行后续取货。推荐者的目的是为现在访问商店的顾客减少了新想法的替代来源。根据产品的预期吸引力和客户以前的消费,通过将产品与客户匹配来生成建议。产品领域中的关联挖掘用于确定产品类别之间的关系,以表征各个产品的吸引力。客户域中的聚类用于识别具有相似支出历史的购物者群体。然后,将流行产品的特定于群集的列表用作匹配过程的输入。目前,该推荐器已在具有数百个客户的试点计划中使用。对数据结果的分析表明,由于直接从推荐产品清单中进行购买,因此计划收入增长了1.8%。接受的建议中有很大一部分来自对客户来说是新产品,这表明他们对某种合理建议的意愿超出了当前的购买模式。

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