Recommender systems have become an essential tool for providers and users of online services and goods, especially with the increased use of the Internet to access information and purchase products and services. This work proposes a novel recommendation method based on complex networks generated by a similarity-popularity model to predict ones. We first construct a model of a network having users and items as nodes from observed ratings and then use it to predict unseen ratings. The prospect of producing accurate rating predictions using a similarity-popularity model with hidden metric spaces and dot-product similarity is explored. The proposed approach is implemented and experimentally compared against baseline and state-of-the-art recommendation methods on 21 datasets from various domains. The experimental results demonstrate that the proposed method produces accurate predictions and outperforms existing methods. We also show that the proposed approach produces superior results in low dimensions, proving its effectiveness for data visualization and exploration.
翻译:建议系统已成为在线服务和货物提供者和用户的一个重要工具,特别是随着更多地利用互联网获取信息和购买产品和服务,建议系统已成为在线服务和货物提供者和用户的一个重要工具,这项工作提出了基于类似-大众模式产生的复杂网络的新建议方法,以预测这些网络;我们首先建立一个网络模式,将用户和项目作为观察评级的节点,然后用它来预测看不见的评分;探索利用类似-大众模式、隐蔽的计量空间和点产品相似性作出准确的评分预测的前景;与21个不同领域数据集的基线和最新建议方法进行实验性比较,并进行实验性比较;实验结果显示,拟议方法产生准确的预测,并超越现有方法;我们还表明,拟议方法在低维方面产生优异的结果,证明它对于数据可视化和探索的有效性。