With the huge growth in e-commerce domain, product recommendations have become an increasing field of interest amongst e-commerce companies. One of the more difficult tasks in product recommendations is size and fit predictions. There are a lot of size related returns and refunds in e-fashion domain which causes inconvenience to the customers as well as costs the company. Thus having a good size and fit recommendation system, which can predict the correct sizes for the customers will not only reduce size related returns and refunds but also improve customer experience. Early works in this field used traditional machine learning approaches to estimate customer and product sizes from purchase history. These methods suffered from cold start problem due to huge sparsity in the customer-product data. More recently, people have used deep learning to address this problem by embedding customer and product features. But none of them incorporates valuable customer feedback present on product pages along with the customer and product features. We propose a novel approach which can use information from customer reviews along with customer and product features for size and fit predictions. We demonstrate the effectiveness of our approach compared to using just product and customer features on 4 datasets. Our method shows an improvement of 1.37% - 4.31% in F1 (macro) score over the baseline across the 4 different datasets.
翻译:随着电子商务领域的大幅增长,产品建议已成为电子商务公司日益感兴趣的领域。产品建议是一项较为困难的任务,即产品建议的规模和预测是否合适。电子时装领域的收益和退款规模很大,给客户造成不便,也给公司造成成本。因此,拥有一个良好的规模和合适的建议系统,可以预测客户的正确规模,不仅可以减少与规模有关的回报和退款,而且可以改善客户的经验。该领域早期的工作使用传统的机器学习方法来估计购买历史中的客户和产品规模。这些方法因客户产品数据过于分散而出现寒冷的起始问题。最近,人们通过嵌入客户和产品特征,利用深度学习来解决这一问题。但是,没有一个将产品页面上的宝贵客户反馈与客户和产品特征一起纳入。我们提出了一个新颖的方法,可以使用客户审查的信息以及客户和产品特征来进行规模和适当预测。我们展示了与4个数据集中只使用产品和客户特征相比,我们的方法是有效的。这些方法因最初出现问题而出现问题。最近,人们通过嵌入客户和产品特性,利用深造,利用深度学习来解决这一问题。我们的方法显示1.31%至3.1%的基线数据有改进。