Matching and recommending products is beneficial for both customers and companies. With the rapid increase in home goods e-commerce, there is an increasing demand for quantitative methods for providing such recommendations for millions of products. This approach is facilitated largely by online stores such as Amazon and Wayfair, in which the goal is to maximize overall sales. Instead of focusing on overall sales, we take a product design perspective, by employing big-data analysis for determining the design qualities of a highly recommended product. Specifically, we focus on the visual style compatibility of such products. We build off previous work which implemented a style-based similarity metric for thousands of furniture products. Using analysis and visualization, we extract attributes of furniture products that are highly compatible style-wise. We propose a designer in-the-loop workflow that mirrors methods of displaying similar products to consumers browsing e-commerce websites. Our findings are useful when designing new products, since they provide insight regarding what furniture will be strongly compatible across multiple styles, and hence, more likely to be recommended.
翻译:匹配和推荐产品既有益于客户,也有益于公司。随着家用商品电子商务的迅速增长,对为数百万产品提供这类建议的数量方法的需求不断增加。这一方法主要由亚马逊和Wayfair等在线商店推动,其目标就是最大限度地实现总体销售。我们不注重整体销售,而是从产品设计角度出发,采用大数据分析来确定高推荐产品的设计质量。具体地说,我们侧重于这类产品的视觉风格兼容性。我们从以往工作中积累出对数千家家具产品采用基于风格的类似度度指标。我们利用分析和可视化,提取高度兼容风格的家具产品的属性。我们推荐一个将类似产品展示给浏览电子商务网站的消费者的现场工作流程设计师。我们的研究结果在设计新产品时非常有用,因为它们有助于深入了解什么家具在多种类型中将非常兼容,因此更有可能被推荐。