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Alleviating the New Item Cold-Start Problem by Combining Image Similarity

机译:通过组合图像相似性来缓解新的项目冷启动问题

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Cold-start scenarios in recommender systems are situations in which no historical behavior, like ratings or clicks, are known for certain users or items. Aiming at the cold-start problem caused by the addition of the new item in the recommender system, this paper proposed a collaborative filtering recommendation model (USPMF-CFIA) based on matrix factorization model, which combines the similarity of item image and category attributes. First, it used the matrix factorization model based on users' preference to predict and fill the missing rating items. Then, it used the VGG16 neural network to extract the features of the item images and combined category attributes to calculate the similarity between the new item and the historical items, then got the item's neighbors. Finally, the new item's score was predicted based on the similarity between the new item and the neighbors, and the top N items with high scores are recommended to the user. The experiment on the dataset provided by GroupLens proved that this model is more accurate.
机译:推荐系统中的冷启动方案是某些用户或物品的历史行为,即其他用户或单击的情况。针对推荐系统中添加新项目引起的冷启动问题,本文提出了一种基于矩阵分解模型的协同过滤推荐模型(USPMF-CFIA),其结合了项目图像和类别属性的相似性。首先,它基于用户偏好预测和填充缺失评级项目的矩阵分子化模型。然后,它使用VGG16神经网络来提取项目图像和组合类别属性的功能来计算新项目和历史项目之间的相似性,然后获取项目的邻居。最后,基于新项目和邻居之间的相似性来预测新项目的分数,并向用户建议具有高分的顶部N项。 Grouplens提供的数据集上的实验证明了该模型更准确。

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