Learning Compatibility Across Categories for Heterogeneous Item Recommendation
Ruining He, Charles Packer, Julian McAuley

TL;DR
This paper introduces Monomer, a novel method for learning complex, heterogeneous compatibility relationships between items in recommendation systems, surpassing previous similarity-based approaches especially in diverse and large-scale settings.
Contribution
Monomer relaxes the metricity assumption and models multiple localized notions of relatedness, enabling richer and more accurate compatibility predictions in heterogeneous item domains.
Findings
Achieves state-of-the-art performance on large-scale compatibility prediction tasks.
Effectively models multiple notions of relatedness beyond simple similarity.
Demonstrates improved recommendations of heterogeneous content.
Abstract
Identifying relationships between items is a key task of an online recommender system, in order to help users discover items that are functionally complementary or visually compatible. In domains like clothing recommendation, this task is particularly challenging since a successful system should be capable of handling a large corpus of items, a huge amount of relationships among them, as well as the high-dimensional and semantically complicated features involved. Furthermore, the human notion of "compatibility" to capture goes beyond mere similarity: For two items to be compatible---whether jeans and a t-shirt, or a laptop and a charger---they should be similar in some ways, but systematically different in others. In this paper we propose a novel method, Monomer, to learn complicated and heterogeneous relationships between items in product recommendation settings. Recently, scalable…
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Taxonomy
TopicsRecommender Systems and Techniques · Image Retrieval and Classification Techniques · Multimodal Machine Learning Applications
