Criteria-Aware Graph Filtering: Extremely Fast Yet Accurate Multi-Criteria Recommendation


연구 분야: Verification



학회: WWW '25: Proceedings of the ACM on Web Conference 2025


초록

Multi-criteria (MC) recommender systems, which utilize MC rating information for recommendation, are increasingly widespread in various e-commerce domains. However, the MC recommendation using training-based collaborative filtering, requiring consideration of multiple ratings compared to single-criterion counterparts, often poses practical challenges in achieving state-of-the-art performance along with scalable model training. To solve this problem, we propose CA-GF, a training-free MC recommendation method, which is built upon criteria-aware graph filtering for efficient yet accurate MC recommendations. Specifically, first, we construct an item-item similarity graph using an MC user-expansion graph. Next, we design CA-GF composed of the following key components, including 1) criterion-specific graph filtering where the optimal filter for each criterion is found using various types of polynomial low-pass filters and 2) criteria preference-infused aggregation where the smoothed signals from each criterion are aggregated. We demonstrate that CA-GF is (a) efficient: providing computational efficiency, offering an extremely fast runtime of less than <u>0.2 seconds</u> even on the largest benchmark dataset, (b) accurate: outperforming benchmark MC recommendation methods, achieving substantial accuracy gains up to 24% compared to the best competitor, and (c) interpretable: providing interpretations for the contribution of each criterion to the model prediction based on visualizations.


Author Profile
Jinduk Park

Yonsei University Seoul Republic of Korea

Korea
Author Profile
Jaemin Yoo

KAIST Daejeon Republic of Korea

Korea
Author Profile
Won-yong Shin

Yonsei University &#38

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발행 연도 2025년
인용수 0
출판 국가 Korea
사이트 ACM
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