Beyond-accuracy: a review on diversity, serendipity, and fairness in recommender systems based on graph neural networks

Front Big Data. 2023 Dec 19:6:1251072. doi: 10.3389/fdata.2023.1251072. eCollection 2023.

Abstract

By providing personalized suggestions to users, recommender systems have become essential to numerous online platforms. Collaborative filtering, particularly graph-based approaches using Graph Neural Networks (GNNs), have demonstrated great results in terms of recommendation accuracy. However, accuracy may not always be the most important criterion for evaluating recommender systems' performance, since beyond-accuracy aspects such as recommendation diversity, serendipity, and fairness can strongly influence user engagement and satisfaction. This review paper focuses on addressing these dimensions in GNN-based recommender systems, going beyond the conventional accuracy-centric perspective. We begin by reviewing recent developments in approaches that improve not only the accuracy-diversity trade-off but also promote serendipity, and fairness in GNN-based recommender systems. We discuss different stages of model development including data preprocessing, graph construction, embedding initialization, propagation layers, embedding fusion, score computation, and training methodologies. Furthermore, we present a look into the practical difficulties encountered in assuring diversity, serendipity, and fairness, while retaining high accuracy. Finally, we discuss potential future research directions for developing more robust GNN-based recommender systems that go beyond the unidimensional perspective of focusing solely on accuracy. This review aims to provide researchers and practitioners with an in-depth understanding of the multifaceted issues that arise when designing GNN-based recommender systems, setting our work apart by offering a comprehensive exploration of beyond-accuracy dimensions.

Keywords: beyond-accuracy; diversity; fairness; graph neural networks; novelty; recommender systems; serendipity; survey.

Publication types

  • Review

Grants and funding

This work was supported by the “DDIA” COMET Module within the COMET—Competence Centers for Excellent Technologies Programme, funded by the Austrian Federal Ministry for Transport, Innovation and Technology (bmvit), the Austrian Federal Ministry for Digital and Economic Affairs (bmdw), FFG, SFG, and partners from industry and academia. The COMET Programme is managed by FFG. This research received support by the TU Graz Open Access Publishing Fund. Additional credit is given to OpenAI for the generative AI models, GPT-4, and ChatGPT, used in this work for text summarization and sentence rephrasing. Verification of accuracy and originality was performed for all content generated by these tools.