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Analysis of the Co-purchase Network of Products to Predict Amazon Sales-Rank

机译:分析产品的共同购买网络预测亚马逊销售排名

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Amazon sales-rank gives a relative estimate of a product item's popularity among other items in the same category. An early prediction of the Amazon sales-rank of a product would imply an early guess of its sales-popularity relative to the other products on Amazon, which is one of the largest e-commerce hub across the globe. Traditional methods suggest use of product review related features, e.g., volume of reviews, text content of the reviews etc. for the purpose of prediction. In contrast, we propose in this paper for the first time a network-assisted approach to construct suitable features for prediction. In particular, we build a co-purchase network treating the individual products as nodes, with edges in between if two products are bought with one another. The way a product is positioned in this network (e.g., its centrality, clustering coefficient etc.) turns out to be a strong indicator of its sales-rank. This network-assisted approach has two distinct advantages over the traditional baseline method based on review analysis - (i) it works even if the product has no reviews (relevant especially in the early stages of the product launch) and (ii) it is notably more discriminative in classifying a popular (i.e., low sales-rank) product from an unpopular (i.e., high sales-rank) one. Based on this observation, we build a supervised model to early classify a popular product from an unpopular one. We report our results on two different product categories (CDs and cell phones) and obtain remarkably better classification accuracy compared to the baseline scheme. When the top 100 (700) products based on sales-rank are labelled as popular and the bottom 100 (700) are labelled as unpopular, the classification accuracy of our method is 89.85% (82.1%) for CDs and 84.11% (84.8%) for cell phones compared to 46.37% (68.75%) and 83.17% (71.95%) respectively from the baseline method.
机译:亚马逊销售排名在同一类别中的其他物品中提供了对产品项目的普及的相对估计。早期预测亚马逊销售级别的产品将意味着早期猜测其相对于亚马逊上的其他产品的销售流行,这是全球最大的电子商务中心之一。传统方法建议使用产品审查相关功能,例如评价的评论,文本内容的评价,文本内容,以便预测。相比之下,我们在本文中提出了第一次网络辅助方法来构建适当的预测特征。特别是,我们建立一个协同购买网络将各个产品视为节点,如果两个产品彼此买到两者之间的边缘。产品在该网络中定位的方式(例如,其中心地位,聚类系数等)证明是其销售排名的强大指标。这种网络辅助方法具有两个基于审查分析的传统基线方法的不同优势 - (i)即使产品没有评论,它也可以使用(特别是在产品发布的早期阶段)和(ii)的情况下在从不受欢迎的(即高销售级别)一个人中分类流行(即低销售级别)产品的歧视性更为歧视。基于这一观察,我们建立了一个监督模型,提前分类了一个不受欢迎的产品。我们在两种不同的产品类别(CDS和手机)上报告我们的结果,与基线方案相比,获得了更好的分类准确性。当基于销售秩的前100名(700)产品被标记为流行且底部100(700)被标记为不受欢迎,CDS的方法的分类准确性为89.85%(82.1%),84.11%(84.8%) )对于Cell电话,分别与基线方法分别为46.37%(68.75%)和83.17%(71.95%)。

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