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Personalized Travel Product Recommendation Based on Embedding of Multi-Behavior Interaction Network and Product Information Knowledge Graph

机译:基于嵌入多行为互动网络和产品信息知识图的个性化旅行产品推荐

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In this paper, we proposed a hybrid recommendation model to tackle two challenges in the recommendation system. First, many of the products have been browsed frequently but may not consequentially be ordered. As a result, the users’ actions may not directly be considered as the preference on a specific item. Second, the popularity of sold products has a highly skewed distribution which results in the cold start problem in the recommendation. In order to extract knowledge from users’ implicit feedback, we develop the neighborhood structure of users and behaviors on products in the multi-behavior interaction network (MBIN) that incorporates the multiple behaviors simultaneously. To deal with the cold product issue and the skewed distribution problem, we take the product information into consideration by using the metadata of products and extracting more features from the textual contents to form a knowledge graph. By applying embedding algorithms to the multi-behavior interaction network and the knowledge graph, we are able to catch the user’s preference from the collaborative implicit feedback aspect and the product information aspect. To evaluate the performance of our model, we conduct extensive experiments on the real-world dataset. The result of our approaches outperforms several widely used methods for the recommendation systems.
机译:在本文中,我们提出了一种混合推荐模型来解决推荐系统中的两个挑战。首先,许多产品经常被浏览,但可能不会被排序。结果,用户的动作可能不会被视为对特定项的偏好。其次,销售产品的普及具有高度倾斜的分布,导致建议中的冷启动问题。为了从用户的隐式反馈中提取知识,我们在多行为交互网络(MBIN)中,在多行为交互网络(MBIN)中,在多行为交互网络(MBIN)中的邻域结构和行为同时制作。要处理冷产品问题和歪曲分布问题,我们通过使用产品元数据来考虑产品信息,并从文本内容中提取更多功能以形成知识图形。通过将嵌入算法应用于多行为交互网络和知识图形,我们能够从协作隐式反馈方面和产品信息方面捕获用户的偏好。为了评估我们模型的表现,我们对现实世界数据集进行了广泛的实验。我们方法的结果优于推荐系统的几种广泛使用的方法。

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