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Linking Multi-Category Purchases to Latent Activities of Shoppers: Analysing Market Baskets by Topic Models

机译:将多类别购买链接到购物者的潜在活动:按主题模型分析市场篮

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We investigate the application of two topic models, latent Dirichlet allocation (LDA) and the correlated topic model (CTM), to market basket analysis. Topic models measure the association between observed purchases and underlying latent activities of shoppers by conceiving each basket as random mixture of latent activities. We explain the structure of the two topic models used. We discuss estimation of LDA models by blocked Gibbs sampling. In addition, we show how to evaluate the performance of topic models on estimation and holdout data. In the empirical study, we analyse a total of 18,000 purchases made at a medium-sized supermarket which refer to 60 product categories. The LDA model performs better than the CTM in terms of log likelihood values. Latent activities inferred by these models are intuitive and interpretable, e.g., related to shopping of beverages or personal care, to baking or to an inclination towards luxury food. To illustrate the managerial relevance of estimated topic models we sketch the core of a recommender system which ranks purchase probabilities of other product categories conditional on the basket of a shopper.
机译:我们调查了潜在的Dirichlet分配(LDA)和相关主题模型(CTM)这两个主题模型在市场购物篮分析中的应用。主题模型通过将每个购物篮视为潜在活动的随机混合物,来衡量观察到的购买与潜在潜在顾客活动之间的关联。我们解释了所使用的两个主题模型的结构。我们讨论通过阻塞的吉布斯采样来估计LDA模型。此外,我们展示了如何评估主题模型在估计和保留数据上的性能。在实证研究中,我们分析了在一家中型超市中进行的18,000笔采购,涉及60种产品类别。就对数似然值而言,LDA模型的性能优于CTM。由这些模型推断出的潜在活动是直观且可解释的,例如,与饮料或个人护理的购物,烘焙或对奢侈食品的偏好有关。为了说明估计的主题模型在管理上的相关性,我们绘制了一个推荐系统的核心,该系统根据购物者的购物篮对其他产品类别的购买概率进行排名。

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