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Modeling Buying Motives for Personalized Product Bundle Recommendation

机译:为个性化产品捆绑推荐建模购买动机

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Product bundling is a marketing strategy that offers several products/items for sale as one bundle. While the bundling strategy has been widely used, less efforts have been made to understand how items should be bundled with respect to consumers' preferences and buying motives for product bundles. This article investigates the relationships between the items that are bought together within a product bundle. To that end, each purchased product bundle is formulated as a bundle graph with items as nodes and the associations between pairs of items in the bundle as edges. The relationships between items can be analyzed by the formation of edges in bundle graphs, which can be attributed to the associations of feature aspects. Then, a probabilistic model BPM (Bundle Purchases with Motives) is proposed to capture the composition of each bundle graph, with two latent factors node-type and edge-type introduced to describe the feature aspects and relationships respectively. Furthermore, based on the preferences inferred from the model, an approach for recommending items to form product bundles is developed by estimating the probability that a consumer would buy an associative item together with the item already bought in the shopping cart. Finally, experimental results on real-world transaction data collected from well-known shopping sites show the effectiveness advantages of the proposed approach over other baseline methods. Moreover, the experiments also show that the proposed model can explain consumers' buying motives for product bundles in terms of different node-types and edge-types.
机译:产品捆绑销售是一种营销策略,可将多个产品/商品作为一个捆绑销售。尽管捆绑策略已被广泛使用,但人们在了解如何根据消费者的喜好和产品捆绑的购买动机来捆绑商品方面所做的工作很少。本文研究了产品捆绑销售中一起购买的商品之间的关系。为此,将每个购买的产品捆绑包公式化为捆绑图,以商品为节点,捆绑中的商品对之间的关​​联为边。项目之间的关系可以通过束图中边的形成来分析,这可以归因于特征方面的关联。然后,提出了一个概率模型BPM(带有动机的捆绑购买)来捕获每个捆绑图的组成,并引入了两个潜在因素节点类型和边缘类型来分别描述特征方面和关系。此外,基于从模型推断出的偏好,通过估计消费者将购买关联商品与已经在购物车中购买的商品一起购买的可能性,开发了一种推荐商品以形成产品捆绑的方法。最后,从知名购物网站收集的真实交易数据的实验结果表明,与其他基准方法相比,该方法具有较高的有效性。此外,实验还表明,所提出的模型可以根据节点类型和边缘类型的不同来解释消费者购买产品包的动机。

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