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Extraction of Visual Features for Recommendation of Products via Deep Learning

机译:通过深入学习提取产品推荐的视觉特征

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In this paper (The first author is the 1st place winner of the Open HSE Student Research Paper Competition (NIRS) in 2017, Computer Science nomination, with the topic "Extraction of Visual Features for Recommendation of Products", as alumni of 2017 "Data Science" master program at Computer Science Faculty, HSE, Moscow), we describe a special recommender approach based on features extracted from the clothes' images. The method of feature extraction relies on pretrained deep neural network that follows transfer learning on the dataset. Recommendations are generated by the neural network as well. All the experiments are based on the items of category Clothing, Shoes and Jewelry from Amazon product dataset. It is demonstrated that the proposed approach outperforms the baseline collaborative filtering method.
机译:本文(第一作者是2017年开放式HSE学生研究论文竞赛(NIRS)的第一名获胜者,计算机科学提名,主题“提取了产品推荐产品”,作为2017年的校友“数据科学“计算机科学教师硕士计划,HSE,Moscow),我们描述了一种基于衣服图像中提取的功能的特殊推荐方法。特征提取方法依赖于在数据集上进行转移学习的预磨削深神经网络。建议也由神经网络产生。所有实验均基于亚马逊产品数据集的类别衣服,鞋子和珠宝物品。证明所提出的方法优于基线协同滤波方法。

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