Style in the long tail: discovering unique interests with latent variable models in large scale social E-commerce

D. Hu, Robert J. Hall, Josh Attenberg
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引用次数: 45

Abstract

Purchasing decisions in many product categories are heavily influenced by the shopper's aesthetic preferences. It's insufficient to simply match a shopper with popular items from the category in question; a successful shopping experience also identifies products that match those aesthetics. The challenge of capturing shoppers' styles becomes more difficult as the size and diversity of the marketplace increases. At Etsy, an online marketplace for handmade and vintage goods with over 30 million diverse listings, the problem of capturing taste is particularly important -- users come to the site specifically to find items that match their eclectic styles. In this paper, we describe our methods and experiments for deploying two new style-based recommender systems on the Etsy site. We use Latent Dirichlet Allocation (LDA) to discover trending categories and styles on Etsy, which are then used to describe a user's "interest" profile. We also explore hashing methods to perform fast nearest neighbor search on a map-reduce framework, in order to efficiently obtain recommendations. These techniques have been implemented successfully at very large scale, substantially improving many key business metrics.
长尾中的风格:利用潜在变量模型发现大型社交电子商务中的独特兴趣
许多产品类别的购买决策在很大程度上受到购物者审美偏好的影响。简单地将购物者与相关类别中的热门商品匹配是不够的;成功的购物体验也能识别出符合这些审美的产品。随着市场规模和多样性的增加,捕捉消费者风格的挑战变得更加困难。Etsy是一个手工和复古商品的在线市场,拥有超过3000万种不同的商品,捕捉品味的问题尤为重要——用户来到这个网站是专门为了找到符合他们折衷风格的商品。在本文中,我们描述了在Etsy网站上部署两种新的基于风格的推荐系统的方法和实验。我们使用潜在狄利克雷分配(LDA)来发现Etsy上的趋势类别和风格,然后用于描述用户的“兴趣”配置文件。我们还探索了在map-reduce框架上执行快速最近邻搜索的哈希方法,以有效地获得推荐。这些技术已经在非常大的规模上成功地实现,极大地改进了许多关键的业务指标。
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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