ENCODE: Breaking the Trade-Off Between Performance and Efficiency in Long-Term User Behavior Modeling
Wenji Zhou, Yuhang Zheng, Yinfu Feng, Yunan Ye, Rong Xiao, Long Chen, Xiaosong Yang, Jun Xiao

TL;DR
ENCODE is a two-stage long-term user behavior modeling approach that balances accuracy and efficiency by clustering behavior sequences offline and using interest predictions online, improving online CTR systems.
Contribution
We introduce ENCODE, a novel two-stage interest modeling method that combines clustering and metric learning to enhance long-term user interest extraction for online systems.
Findings
ENCODE outperforms state-of-the-art methods in accuracy.
ENCODE achieves significant efficiency improvements.
The method maintains high relevance between interests and target items.
Abstract
Long-term user behavior sequences are a goldmine for businesses to explore users' interests to improve Click-Through Rate. However, it is very challenging to accurately capture users' long-term interests from their long-term behavior sequences and give quick responses from the online serving systems. To meet such requirements, existing methods "inadvertently" destroy two basic requirements in long-term sequence modeling: R1) make full use of the entire sequence to keep the information as much as possible; R2) extract information from the most relevant behaviors to keep high relevance between learned interests and current target items. The performance of online serving systems is significantly affected by incomplete and inaccurate user interest information obtained by existing methods. To this end, we propose an efficient two-stage long-term sequence modeling approach, named as EfficieNt…
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