Product2Vec: Understanding Product-Level Competition Using Representation Learning

Fanglin Chen, Xiao Liu, Davide Proserpio, Isamar Troncoso
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引用次数: 9

Abstract

Studying competition and market structure at the product level instead of brand level can provide firms with insights on cannibalization and product line optimization. We introduce Product2Vec, a method based on representation learning, to study product-level competition when the number of products is large. The proposed model takes shopping baskets as inputs and, for every product, generates a low-dimensional vector that preserves important product information. Using these product vectors, we present several findings. First, we show that these vectors can recover analogies between product pairs. Second, we create two measures, complementarity and exchangeability, that allow us to determine whether product pairs are complements or substitutes. Third, we combine these vectors with traditional choice models to study product-level competition. To accurately estimate price elasticities, we modify the representation learning algorithm to remove the influence of price from the product vectors. We show that, compared with state-of-the-art choice models, our approach is faster and can produce more accurate demand forecasts and price elasticities. Fourth, we present two applications of Product2Vec to marketing problems: 1) analyzing intra- and inter-brand competition and 2) analyzing market structure. Overall, our results demonstrate that machine learning algorithms, such as representation learning, can be useful tools to augment and improve traditional marketing methods.
Product2Vec:使用表征学习理解产品级竞争
在产品层面而不是品牌层面研究竞争和市场结构,可以为企业提供同类相食和产品线优化的洞见。引入基于表示学习的Product2Vec方法来研究产品数量较大时的产品级竞争。该模型将购物篮作为输入,并为每个产品生成一个低维向量,该向量保留了重要的产品信息。使用这些积向量,我们提出了几个发现。首先,我们证明这些向量可以恢复乘积对之间的类比。其次,我们创建了两个度量,互补性和互换性,这使我们能够确定产品对是互补还是替代。第三,我们将这些向量与传统的选择模型结合起来研究产品级竞争。为了准确估计价格弹性,我们修改了表征学习算法,从产品向量中去除价格的影响。我们表明,与最先进的选择模型相比,我们的方法更快,可以产生更准确的需求预测和价格弹性。第四,我们提出了Product2Vec在营销问题上的两种应用:1)分析品牌内部和品牌间的竞争;2)分析市场结构。总的来说,我们的研究结果表明,机器学习算法,如表示学习,可以成为增强和改进传统营销方法的有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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