云计算
计算机科学
服务器
GSM演进的增强数据速率
个性化
特征(语言学)
联合学习
学习迁移
推荐系统
妥协
边缘计算
协作学习
分布式计算
数据科学
人机交互
万维网
机器学习
人工智能
知识管理
操作系统
社会科学
社会学
语言学
哲学
作者
Zexi Li,Qunwei Li,Yi Zhou,Wenliang Zhong,Guannan Zhang,Chao Wu
标识
DOI:10.1145/3539618.3591976
摘要
Federated learning (FL) is a popular way of edge computing that doesn't compromise users' privacy. Current FL paradigms assume that data only resides on the edge, while cloud servers only perform model averaging. However, in real-life situations such as recommender systems, the cloud server has the ability to store historical and interactive features. In this paper, our proposed Edge-Cloud Collaborative Knowledge Transfer Framework (ECCT) bridges the gap between the edge and cloud, enabling bi-directional knowledge transfer between both, sharing feature embeddings and prediction logits. ECCT consolidates various benefits, including enhancing personalization, enabling model heterogeneity, tolerating training asynchronization, and relieving communication burdens. Extensive experiments on public and industrial datasets demonstrate ECCT's effectiveness and potential for use in academia and industry.
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