CHIC:基于组合的推荐系统

Manasi Vartak, S. Madden
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引用次数: 15

摘要

目前的推荐系统主要是基于相似性来推荐项目。例如,Netflix可以推荐与之前看过的电影相似的电影,亚马逊可以根据类似用户的评分推荐商品。尽管基于相似性的推荐对书籍和电影很有效,但它对服装或家具等物品提供了一个不完整的解决方案,这些物品本质上是与其他相同类型的物品结合使用的,例如衬衫和裤子,桌子和椅子。因此,购买衣服或家具的决定不仅取决于物品本身,还取决于它与其他同类物品的搭配效果。因此,推荐这样的项目需要一个基于组合的推荐系统,给定一个项目,可以建议包含该项目的有趣和多样化的组合。这个问题具有挑战性,因为影响组合质量的特征通常难以识别;质量是所有项目组合的函数,不能单独计算;并且有指数级的组合需要探索。在这个演示中,我们展示了CHIC,这是首个基于组合的服装推荐系统。观众将通过CHIC移动应用程序与我们的系统进行互动,该应用程序允许用户拍摄一件衣服的照片,并立即搜索包含该物品的有趣组合。观众还可以与CHIC竞争,创造不同的组合,并比较质量。最后,我们通过可视化强调了CHIC的核心模块,包括模型构建和我们新颖的搜索和分类算法C-Search。
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CHIC: a combination-based recommendation system
Current recommender systems are focused largely on recommending items based on similarity. For instance, Netflix can recommend movies similar to previously viewed movies, and Amazon can recommend items based on ratings of similar users. Although similarity-based recommendation works well for books and movies, it provides an incomplete solution for items such as clothing or furniture which are inherently used in combination with other items of the same type, e.g., shirt with pants, and desk with a chair. As a result, the decision to buy a clothing or furniture item depends not only on the item itself, but also on how well it works with other items of that type. Recommending such items therefore requires a combination-based recommendation system that given an item, can suggest interesting and diverse combinations containing that item. This problem is challenging because features affecting combination quality are often difficult to identify; quality, being a function of all items in the combination, cannot be computed independently; and there are an exponential number of combinations to explore. In this demonstration, we present CHIC, a first-of-its-kind, combination-based recommendation system for clothing. The audience will interact with our system through the CHIC mobile app which allows the user to take a picture of a clothing item and search for interesting combinations containing the item instantly. The audience can also compete with CHIC to create alternate ensembles and compare quality. Finally, we highlight via visualizations the core modules of CHIC including model building and our novel search and classification algorithm, C-Search.
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