Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

One Model to Serve All: Star Topology Adaptive Recommender for Multi-Domain CTR Prediction

About

Traditional industrial recommenders are usually trained on a single business domain and then serve for this domain. However, in large commercial platforms, it is often the case that the recommenders need to make click-through rate (CTR) predictions for multiple business domains. Different domains have overlapping user groups and items. Thus, there exist commonalities. Since the specific user groups have disparity and the user behaviors may change in various business domains, there also have distinctions. The distinctions result in domain-specific data distributions, making it hard for a single shared model to work well on all domains. To learn an effective and efficient CTR model to handle multiple domains simultaneously, we present Star Topology Adaptive Recommender (STAR). Concretely, STAR has the star topology, which consists of the shared centered parameters and domain-specific parameters. The shared parameters are applied to learn commonalities of all domains, and the domain-specific parameters capture domain distinction for more refined prediction. Given requests from different business domains, STAR can adapt its parameters conditioned on the domain characteristics. The experimental result from production data validates the superiority of the proposed STAR model. Since 2020, STAR has been deployed in the display advertising system of Alibaba, obtaining averaging 8.0% improvement on CTR and 6.0% on RPM (Revenue Per Mille).

Xiang-Rong Sheng, Liqin Zhao, Guorui Zhou, Xinyao Ding, Binding Dai, Qiang Luo, Siran Yang, Jingshan Lv, Chi Zhang, Hongbo Deng, Xiaoqiang Zhu• 2021

Related benchmarks

TaskDatasetResultRank
CTR PredictionSQS
AUC90.81
16
Click predictionProduction dataset Single-column Search
QAUC66
14
When predictionIntTravel
Accuracy83.33
9
Where predictionIntTravel
HR@164.93
9
Via predictionIntTravel
HR@165.2
9
How predictionIntTravel
Acc67.41
9
Multi-task RecommendationTenrec QK-video
Click AUC82.37
9
Click-Through Rate PredictionHP
AUC76.69
8
Click-Through Rate PredictionPHF
AUC0.7821
8
Click-Through-and-Conversion Rate PredictionPHF
AUC0.8688
8
Showing 10 of 21 rows

Other info

Follow for update