使用图神经网络的旅游推荐系统

Sravani Prakki, Moayed Daneshyari
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引用次数: 0

摘要

推荐系统有很多应用和用途。对于任何推荐系统,用户与项目的交互都很重要,这也可以被看作是图形。我们专注于旅游或地点推荐。很少有关于使用图神经网络(GNN)利用用户与物品交互的旅行或旅行推荐系统的工作。在这项工作中,我们使用LightGCN模型实现了旅行或地点推荐,并将其与传统的非基于图的协同过滤矩阵分解(MF)方法的实现进行了比较。然后,我们证明了LightGCN模型在旅行或地点推荐方面比矩阵分解方法表现得更好。与矩阵分解方法相比,我们使用基于图的LightGCN模型进行旅行或地点推荐,获得了非常好的结果[精度提高了203%,召回率提高了167%,指标NDCG提高了98.6%]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Travel recommendation system using graph neural networks
There are many applications and uses of recommendation systems. For any recommendation system, the user-to-item interactions are important which can also be seen as graphs. We are focusing on travel or place recommendations. There are very few works on travel or trip recommendation systems using Graph Neural Networks (GNN) leveraging user-to- item interactions. In this work, we have implemented travel or place recommendations using the LightGCN model and compared it with the implementation of the traditional non-graph-based collaborative filtering Matrix Factorization (MF) approach. We have then shown that the LightGCN model performs better for travel or place recommendations than the Matrix Factorization approach. We achieved very good results [203% increase in precision, a 167% increase in recall, and a 98.6% NDCG increase in metrics] using a graph based LightGCN model for travel or place recommendations compared to the Matrix Factorization approach.
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