IRAILGMar 24, 2024

Complementary Recommendation in E-commerce: Definition, Approaches, and Future Directions

arXiv:2403.16135v14 citationsh-index: 1
Originality Synthesis-oriented
AI Analysis

It offers an updated review for researchers and practitioners in e-commerce recommendation systems, but is incremental as a survey paper.

This paper provides a comprehensive survey of 34 studies on complementary recommendation in e-commerce, summarizing methods for modeling product relationships and comparing experimental results to identify strengths and weaknesses.

In recent years, complementary recommendation has received extensive attention in the e-commerce domain. In this paper, we comprehensively summarize and compare 34 representative studies conducted between 2009 and 2024. Firstly, we compare the data and methods used for modeling complementary relationships between products, including simple complementarity and more complex scenarios such as asymmetric complementarity, the coexistence of substitution and complementarity relationships between products, and varying degrees of complementarity between different pairs of products. Next, we classify and compare the models based on the research problems of complementary recommendation, such as diversity, personalization, and cold-start. Furthermore, we provide a comparative analysis of experimental results from different studies conducted on the same dataset, which helps identify the strengths and weaknesses of the research. Compared to previous surveys, this paper provides a more updated and comprehensive summary of the research, discusses future research directions, and contributes to the advancement of this field.

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