Explainable outfit recommendation with joint outfit matching and comment generation

Y Lin, P Ren, Z Chen, Z Ren, J Ma… - IEEE Transactions on …, 2019 - ieeexplore.ieee.org
Y Lin, P Ren, Z Chen, Z Ren, J Ma, M De Rijke
IEEE Transactions on Knowledge and Data Engineering, 2019ieeexplore.ieee.org
Most previous work on outfit recommendation focuses on designing visual features to
enhance recommendations. Existing work neglects user comments of fashion items, which
have been proven to be effective in generating explanations along with better
recommendation results. We propose a novel neural network framework, neural outfit
recommendation (NOR), that simultaneously provides outfit recommendations and
generates abstractive comments. Neural outfit recommendation (NOR) consists of two parts …
Most previous work on outfit recommendation focuses on designing visual features to enhance recommendations. Existing work neglects user comments of fashion items, which have been proven to be effective in generating explanations along with better recommendation results. We propose a novel neural network framework, neural outfit recommendation (NOR), that simultaneously provides outfit recommendations and generates abstractive comments. Neural outfit recommendation (NOR) consists of two parts: outfit matching and comment generation. For outfit matching, we propose a convolutional neural network with a mutual attention mechanism to extract visual features. The visual features are then decoded into a rating score for the matching prediction. For abstractive comment generation, we propose a gated recurrent neural network with a cross-modality attention mechanism to transform visual features into a concise sentence. The two parts are jointly trained based on a multi-task learning framework in an end-to-end back-propagation paradigm. Extensive experiments conducted on an existing dataset and a collected real-world dataset show NOR achieves significant improvements over state-of-the-art baselines for outfit recommendation. Meanwhile, our generated comments achieve impressive ROUGE and BLEU scores in comparison to human-written comments. The generated comments can be regarded as explanations for the recommendation results. We release the dataset and code to facilitate future research.
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