Research about recommender systems emerges over the last decade and comprises valuable services to increase different companies' revenue. Several approaches exist in handling paper recommender systems. While most existing recommender systems rely either on a content-based approach or a collaborative approach, there are hybrid approaches that can improve recommendation accuracy using a combination of both approaches. Even though many algorithms are proposed using such methods, it is still necessary for further improvement. In this paper, we propose a recommender system method using a graph-based model associated with the similarity of users' ratings, in combination with users' demographic and location information. By utilizing the advantages of Autoencoder feature extraction, we extract new features based on all combined attributes. Using the new set of features for clustering users, our proposed approach (GHRS) has gained a significant improvement, which dominates other methods' performance in the cold-start problem. The experimental results on the MovieLens dataset show that the proposed algorithm outperforms many existing recommendation algorithms on recommendation accuracy.
翻译:过去十年来,关于推荐者系统的研究出现了,它包含增加不同公司收入的宝贵服务。处理纸质建议系统有几种方法。虽然大多数现有推荐者系统依靠基于内容的方法或协作方法,但有混合方法可以使用两种方法的结合来提高推荐准确性。尽管提出了许多使用这种方法的算法,但仍需要进一步改进。在本文中,我们提出了一个推荐者系统方法,使用与用户的统计和位置信息相似的图表模型。通过利用自动编码器特征提取的优势,我们根据所有组合特性提取新的特征。利用集群用户的新特征,我们提议的方法(GHRS)取得了显著的改进,在冷点问题中主宰了其他方法的性能。MoviceLens数据集的实验结果显示,提议的算法在建议准确性方面超越了许多现有的建议算法。