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From Recommendation to Generation: A Novel Fashion Clothing Advising Framework

机译:从推荐到一代:一种新颖的时尚服装建议框架

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In the field of clothing recommendation, building a successful recommendation system means giving each user an optimal personalized recommending list. The top ranked clothing in the list are expected to meet a series of user's needs such as preference, taste, style, and consumption level. In online shopping, the most common way is to use user's explicit rating of items. However, user's implicit feedback such as browsing log, collection, and reviews may contains extra information to help model user's preference more accurately. In addition, the recommended clothing should also meet user's consumption level, which is an important factor easily overlooked in recommendation system. In this paper, we combine visual features of clothing images, user's implicit feedback and the price factor to construct a recommendation model based on Siamese network and Bayesian personalized ranking to recommend clothing satisfying user's preference and consumption level. Then on the basis of recommending clothing, we use Generative Adversarial Networks to generate new clothing images and use them to form a compatible collocation to provide fashion suggestions out of datasets.
机译:在服装推荐领域,建立成功的推荐系统意味着为每个用户提供最佳的个性化推荐列表。列表中排名最高的服装有望满足一系列用户需求,例如偏好,口味,款式和消费水平。在在线购物中,最常见的方法是使用用户对商品的明确评价。但是,用户的隐式反馈(例如浏览日志,收集和评论)可能包含额外的信息,以帮助更准确地建模用户的偏好。另外,推荐服装还应满足用户的消费水平,这是推荐系统中容易忽略的重要因素。本文结合服装图像的视觉特征,用户的隐性反馈和价格因素,构建了基于连体网络和贝叶斯个性化排名的推荐模型,以满足用户的喜好和消费水平。然后,在推荐服装的基础上,我们使用Generative Adversarial Networks生成新的服装图像,并使用它们形成兼容的搭配,以从数据集中提供时尚建议。

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