As the final stage of the multi-stage recommender system (MRS), re-ranking directly affects users' experience and satisfaction by rearranging the input ranking lists, and thereby plays a critical role in MRS. With the advances in deep learning, neural re-ranking has become a trending topic and been widely adopted in industrial applications. This review aims at integrating re-ranking algorithms into a broader picture, and paving ways for more comprehensive solutions for future research. For this purpose, we first present a taxonomy of current methods on neural re-ranking. Then we give a description of these methods along with the historic development according to their objectives. The network structure, personalization, and complexity are also discussed and compared. Next, we provide a benchmark for the major neural re-ranking models and quantitatively analyze their re-ranking performance. Finally, the review concludes with a discussion on future prospects of this field. A list of papers discussed in this review, the benchmark datasets, our re-ranking library LibRerank, and detailed parameter settings are publicly available at https://github.com/LibRerank-Community/LibRerank.
CITATION STYLE
Liu, W., Xi, Y., Qin, J., Sun, F., Chen, B., Zhang, W., … Tang, R. (2022). Neural Re-ranking in Multi-stage Recommender Systems: A Review. In IJCAI International Joint Conference on Artificial Intelligence (pp. 5512–5520). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2022/771
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