KEEP: An Industrial Pre-Training Framework for Online Recommendation via Knowledge Extraction and Plugging
Yujing Zhang, Zhangming Chan, Shuhao Xu, Weijie Bian, Shuguang Han,, Hongbo Deng, Bo Zheng

TL;DR
KEEP is a two-stage industrial framework that enhances online recommendation by extracting knowledge from web-scale data and integrating it into the system, improving performance and deployment efficiency.
Contribution
The paper introduces a novel two-stage framework, KEEP, for knowledge extraction and plugging, specifically designed for large-scale industrial recommendation systems.
Findings
Achieves significant CTR and RPM improvements in Alibaba deployment
Demonstrates effectiveness on two real-world datasets
Facilitates incremental training in online recommendation systems
Abstract
An industrial recommender system generally presents a hybrid list that contains results from multiple subsystems. In practice, each subsystem is optimized with its own feedback data to avoid the disturbance among different subsystems. However, we argue that such data usage may lead to sub-optimal online performance because of the \textit{data sparsity}. To alleviate this issue, we propose to extract knowledge from the \textit{super-domain} that contains web-scale and long-time impression data, and further assist the online recommendation task (downstream task). To this end, we propose a novel industrial \textbf{K}nowl\textbf{E}dge \textbf{E}xtraction and \textbf{P}lugging (\textbf{KEEP}) framework, which is a two-stage framework that consists of 1) a supervised pre-training knowledge extraction module on super-domain, and 2) a plug-in network that incorporates the extracted knowledge…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Data Stream Mining Techniques
