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A picture is worth a thousand words: Introducing visual similarity into recommendation

机译:一幅图片价值一千个字:将视觉相似性引入推荐

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Recent recommender systems work well in terms of prediction accuracy, making use of a variety of features, such as users' personal information, purchasing history, browsing history and comments. However, traditional recommendation models have not made full use of item information and met difficulties with cold-start problems. On the other hands, visual information on item images is one of the most basic and informative features of the item, which has not been well-studied and applied in recommendation yet. In this paper, we introduce “visual similarity” between different items into recommendation, which measures the probability between items that are similar in terms of visual effect or “styles”. Observations on real e-commercial site data show that users tend to buy similar items, or items with similar “style”, indicating that visual information can be considered as a reliable feature in recommending process. Furthermore, a new matrix supplement approach is proposed to integrate item-item similarity matrix and traditional user-item matrix for collaborative filtering. Finally, a novel recommendation model is proposed which leverages visual similarity to collaborative filtering. Experiments on e-commercial website data shows that the proposed approaches result in superior performance compared with traditional recommendation algorithms, including Baseline Predictor, KNN (k-nearest-neighbors) and SVD (Singular Value Decomposition). Results also verifies that visual information does help relieve the “cold-start” problem in recommendation.
机译:最近的推荐器系统在预测准确性方面很好地发挥了作用,它利用了多种功能,例如用户的个人信息,购买历史记录,浏览历史记录和评论。然而,传统的推荐模型没有充分利用项目信息,并且遇到了冷启动问题。另一方面,商品图像上的视觉信息是商品的最基本和最丰富的特征之一,尚未对其进行深入研究并应用于推荐中。在本文中,我们将不同项目之间的“视觉相似性”引入推荐中,以衡量在视觉效果或“样式”方面相似的项目之间的概率。对真实电子商务网站数据的观察表明,用户倾向于购买相似的商品或具有类似“风格”的商品,这表明可视信息可以被视为推荐过程中的可靠功能。此外,提出了一种新的矩阵补充方法,将项目-项目相似度矩阵和传统的用户-项目矩阵进行集成,以进行协同过滤。最后,提出了一种新颖的推荐模型,该模型利用视觉相似性进行协作过滤。电子商务网站数据的实验表明,与传统的推荐算法(包括基线预测器,KNN(k最近邻)和SVD(奇异值分解))相比,所提出的方法具有更好的性能。结果还验证了视觉信息确实有助于缓解推荐中的“冷启动”问题。

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