Recommender Systems (RSs) are used to provide users with personalized item recommendations and help them overcome the problem of information overload. Currently, recommendation methods based on deep learning are gaining ground over traditional methods such as matrix factorization due to their ability to represent the complex relationships between users and items and to incorporate additional information. The fact that these data have a graph structure and the greater capability of Graph Neural Networks (GNNs) to learn from these structures has led to their successful incorporation into recommender systems. However, the bias amplification issue needs to be investigated while using these algorithms. Bias results in unfair decisions, which can negatively affect the company reputation and financial status due to societal disappointment and environmental harm. In this paper, we aim to comprehensively study this problem through a literature review and an analysis of the behavior against biases of different GNN-based algorithms compared to state-of-the-art methods. We also intend to explore appropriate solutions to tackle this issue with the least possible impact on the model performance.
翻译:目前,基于深层学习的推荐方法,由于能够代表用户和项目之间的复杂关系,并能够纳入更多的信息,因此在传统方法(如矩阵化因子化)之上,正在获得立足点,因为这些方法能够代表用户和项目之间的复杂关系,并能够纳入更多的信息。这些数据有一个图表结构,图形神经网络(GNN)从这些结构中学习的能力更大,因此能够成功地将其纳入推荐系统。然而,在使用这些算法时,需要调查偏见扩大的问题。偏见扩大问题导致不公平的决定,因为社会失望和环境损害可能会对公司声誉和财务地位产生负面影响。在本文件中,我们的目标是通过文献审查和分析基于GNN的不同算法相对于最新方法的偏向性,全面研究这一问题。我们还打算探索适当的解决办法,以尽可能对模型性能影响最小的方式解决这一问题。