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Image-based Recommendations on Styles and Substitutes

About

Humans inevitably develop a sense of the relationships between objects, some of which are based on their appearance. Some pairs of objects might be seen as being alternatives to each other (such as two pairs of jeans), while others may be seen as being complementary (such as a pair of jeans and a matching shirt). This information guides many of the choices that people make, from buying clothes to their interactions with each other. We seek here to model this human sense of the relationships between objects based on their appearance. Our approach is not based on fine-grained modeling of user annotations but rather on capturing the largest dataset possible and developing a scalable method for uncovering human notions of the visual relationships within. We cast this as a network inference problem defined on graphs of related images, and provide a large-scale dataset for the training and evaluation of the same. The system we develop is capable of recommending which clothes and accessories will go well together (and which will not), amongst a host of other applications.

Julian McAuley, Christopher Targett, Qinfeng Shi, Anton van den Hengel• 2015

Related benchmarks

TaskDatasetResultRank
Fill-in-the-blank fashion recommendationPolyvore (test)
FITB Accuracy50.91
9
Compatibility predictionPolyvore (test)
AUC0.6782
9
Link Prediction (Also bought)Amazon Men v1 (test)
AUC95.1
8
Personalized RankingAmazon Phones Cold Start
AUC63.19
6
Personalized RankingAmazon Women (All Items)
AUC71.63
6
Personalized RankingAmazon Women (Cold Start)
AUC0.6673
6
Personalized RankingAmazon Men (All Items)
AUC71.85
6
Personalized RankingAmazon Men Cold Start
AUC67.87
6
Personalized RankingAmazon Phones (All Items)
AUC73.97
6
Link Prediction (Also bought)Amazon Women v1 (test)
AUC91.2
4
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