Attribute-aware Explainable Complementary Clothing Recommendation
Yang Li, Tong Chen, Zi Huang

TL;DR
This paper introduces AFRec, a novel attribute-aware fashion recommender that improves outfit compatibility predictions and provides intuitive, attribute-based explanations, surpassing existing methods in accuracy and interpretability.
Contribution
The work proposes a new attribute-aware model that explicitly leverages attribute-level representations for compatibility assessment and explanation generation in fashion recommendation.
Findings
Achieves state-of-the-art recommendation accuracy.
Provides fine-grained, attribute-based explanations.
Demonstrates effectiveness through extensive experiments.
Abstract
Modelling mix-and-match relationships among fashion items has become increasingly demanding yet challenging for modern E-commerce recommender systems. When performing clothes matching, most existing approaches leverage the latent visual features extracted from fashion item images for compatibility modelling, which lacks explainability of generated matching results and can hardly convince users of the recommendations. Though recent methods start to incorporate pre-defined attribute information (e.g., colour, style, length, etc.) for learning item representations and improving the model interpretability, their utilisation of attribute information is still mainly reserved for enhancing the learned item representations and generating explanations via post-processing. As a result, this creates a severe bottleneck when we are trying to advance the recommendation accuracy and generating…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Visual Attention and Saliency Detection · Multimodal Machine Learning Applications
