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Deep Neural Network Incorporating CNN and MF for Item-Based Fashion Recommendation

机译:融合了基于项目的时装推荐CNN和MF的深神经网络

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In fashion electronic commerce services, two item-based recommendation approaches, image similarity-based and click likelihood-based, are used to improve the revenue of a website. To improve accuracy, in this paper, we propose a hybrid model, a deep neural network (DNN) that predicts click probability of a target fashion item by incorporating both image similarity and click likelihood. To create an image similarity feature, we acquire a latent image feature through a CNN-based classification of fashion color, type and pattern. To create a click likelihood feature, we calculate matrix factorization (MF) and use decomposed item features as latent click log feature. To solve a cold-start problem (recommendation of new items), we complement the latent log features of new items with those of existing ones. An offline evaluation shows that the accuracy of proposed model (both log and image) improved by 14% compared with matrix factorization (log only) and 56% the image-only model. Moreover, the complement of latent log features changes the new item ratio to six times.
机译:在时尚电子商务服务中,两种基于项目的推荐方法,基于图像相似性和基于似然的,用于改善网站的收入。为了提高准确性,在本文中,我们提出了一种混合模型,通过结合图像相似性并点击可能性来预测目标时尚项目的点击概率的深神经网络(DNN)。要创建图像相似性功能,我们通过基于CNN的时尚颜色,类型和图案的分类获取潜像功能。要创建单击似然功能,我们计算矩阵分解(MF),并使用分解的项目功能作为潜在点击日志功能。要解决冷启动问题(新项目的推荐),我们将新项目的潜在日志特征与现有的问题相结合。离线评估表明,与矩阵分组相比,所提出的模型(日志和图像)的准确性提高了14%,仅为56%的图像模型。此外,潜在日志功能的补充将新的项目比率更改为六次。

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