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Ensemble-based Synthetic Data Synthesis for Federated QoE Modeling

机译:基于集合的综合数据综合用于联邦QoE建模

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Quality of Experience (QoE) models need good generalization that necessitates sufficient amount of user-labeled datasets associated with measurements related to underlying QoE factors. However, obtaining QoE datasets is often costly, since they are preferably collected from many subjects with diverse background, and eventually dataset sizes and representations are limited. Models can be improved by sharing and merging those collected local datasets, however regulations such as GDPR make data sharing difficult, as those local user datasets might contain sensitive information about the subjects. A privacy-preserving machine learning approach such as Federated Learning (FL) is a potential candidate that enables sharing of QoE data models between collaborators without exposing ground truth, but only by means of sharing the securely aggregated form of extracted model parameters. While FL can enable a seamless QoE model management, if collaborators do not have the same level of data quality, more iterations of information sharing over a communication channel might be necessary for models to reach an acceptable accuracy. In this paper, we present an ensemble based Bayesian synthetic data generation method for FL, LOO (Leave-One-Out), which reduces the training time by 30% and the network footprint in the communication channel by 60%.
机译:体验质量(QoE)模型需要良好的概括性,这需要与基础QoE因子相关的测量相关的足够数量的用户标记数据集。但是,获取QoE数据集通常很昂贵,因为最好从具有不同背景的许多受试者那里收集QoE数据集,最终限制了数据集的大小和表示形式。通过共享和合并收集的本地数据集可以改进模型,但是GDPR等法规使数据共享变得困难,因为这些本地用户数据集可能包含有关主题的敏感信息。诸如Federated Learning(FL)之类的保护隐私的机器学习方法是一种潜在的候选方法,它可以在协作者之间共享QoE数据模型而不会暴露地面真理,而仅是通过共享提取的模型参数的安全聚合形式即可。尽管FL可以实现无缝的QoE模型管理,但如果协作者的数据质量水平不同,则为了使模型达到可接受的准确性,可能需要在通信通道上进行更多信息共享迭代。在本文中,我们提出了一种基于整体的贝叶斯综合数据生成方法,用于FL,LOO(Leave-One-Out),该方法将训练时间减少了30%,并将通信信道中的网络足迹减少了60%。

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