Paragon: Parameter Generation for Controllable Multi-Task Recommendation
Chenglei Shen, Jiahao Zhao, Xiao Zhang, Weijie Yu, Ming He, Jianping Fan

TL;DR
Paragon introduces a generative approach to adapt recommendation model parameters for different tasks without retraining, significantly reducing computational costs and enabling dynamic control over multi-task recommendation systems.
Contribution
It proposes a novel parameter generation method using a generative model for controllable multi-task recommendation, eliminating the need for retraining.
Findings
Reduces computational time by at least 94.6%
Effectively adapts models to new tasks without retraining
Seamlessly integrates with existing recommendation models
Abstract
Commercial recommender systems face the challenge that task requirements from platforms or users often change dynamically (e.g., varying preferences for accuracy or diversity). Ideally, the model should be re-trained after resetting a new objective function, adapting to these changes in task requirements. However, in practice, the high computational costs associated with retraining make this process impractical for models already deployed to online environments. This raises a new challenging problem: how to efficiently adapt the learned model to different task requirements by controlling the model parameters after deployment, without the need for retraining. To address this issue, we propose a novel controllable learning approach via \textbf{para}meter \textbf{g}eneration for c\textbf{on}trollable multi-task recommendation (\textbf{Paragon}), which allows the customization and…
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Taxonomy
TopicsSimulation Techniques and Applications
MethodsAdapter · Diffusion
