Personalized Elastic Embedding Learning for On-Device Recommendation
Ruiqi Zheng, Liang Qu, Tong Chen, Kai Zheng, Yuhui Shi, Hongzhi Yin

TL;DR
This paper introduces PEEL, a personalized elastic embedding framework for on-device recommendation that adapts to device and user heterogeneity, dynamic memory constraints, and enhances recommendation performance.
Contribution
It proposes a novel once-for-all embedding method that generates personalized elastic embeddings for diverse device budgets and user groups, addressing limitations of existing models.
Findings
PEEL outperforms existing methods on public datasets.
It effectively adapts to dynamic memory budgets.
The approach improves recommendation accuracy for diverse user groups.
Abstract
To address privacy concerns and reduce network latency, there has been a recent trend of compressing cumbersome recommendation models trained on the cloud and deploying compact recommender models to resource-limited devices for the real-time recommendation. Existing solutions generally overlook device heterogeneity and user heterogeneity. They require devices with the same budget to share the same model and assume the available device resources (e.g., memory) are constant, which is not reflective of reality. Considering device and user heterogeneities as well as dynamic resource constraints, this paper proposes a Personalized Elastic Embedding Learning framework (PEEL) for the on-device recommendation, which generates Personalized Elastic Embeddings (PEEs) for devices with various memory budgets in a once-for-all manner, adapting to new or dynamic budgets, and addressing user preference…
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Taxonomy
TopicsRecommender Systems and Techniques · Caching and Content Delivery
