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Explainable Outfit Recommendation with Joint Outfit Matching and Comment Generation

机译:可解释与联合服装匹配和评论生成的推荐

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摘要

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.
机译:以前的大多数关于装备建议的工作侧重于设计可视化功能以增强建议。现有的工作忽略了用户对时尚物品的评论,这些项目已被证明是有效地生成解释以及更好的推荐结果。我们提出了一种新颖的神经网络框架,神经推荐推荐(NOR),同时提供推荐的推荐并产生抽象评论。神经推荐推荐(也不)由两部分组成:装备匹配和评论生成。对于搭配匹配,我们提出了一种具有相互关注机制的卷积神经网络,以提取视觉特征。然后将视觉特征解码为匹配预测的评级分数。对于抽象评论生成,我们提出了一个具有跨模型注意机制的门控经常性神经网络,将视觉特征转换为简洁的句子。两部分基于端到端背部传播范例的多任务学习框架联合培训。对现有数据集和收集的现实数据集显示的广泛实验,而不是对填写建议的最先进的基线来实现显着改进。与此同时,与人性书面评论相比,我们生成的评论实现了令人印象深刻的胭脂和BLEU分数。生成的注释可以被视为建议结果的解释。我们释放数据集和代码以促进未来的研究。

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