一种联邦模糊学习系统

A. Wilbik, P. Grefen
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引用次数: 9

摘要

数据的丰富可用性允许构建支持商业和社会决策者的预测系统。如果一个组织本身没有足够大的数据集来构建一个足够质量的系统,就会出现问题。在这种情况下,必须使用跨组织的数据,这引入了数据共享的风险。为了克服这些风险,联邦学习正变得越来越流行,可以在不共享原始数据的情况下,在自主合作伙伴的分布式网络中实现自动学习。到目前为止,在这种情况下只使用了脆系统。模糊推理系统的使用可以为处理预测系统中的模糊性和不确定性带来优势。因此,在本文中,我们探索(希望)联邦学习和模糊推理机制的幸福结合。我们表明,在联邦学习设置中构建模糊推理模型确实是可能的,从而产生联邦模糊学习系统(F2LS)。我们还表明,这种组合为决策带来了单独使用任何一种机制都无法实现的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Federated Fuzzy Learning System
The abundant availability of data allows the construction of predictive systems that support decision makers in business and society. A problem arises if an organization does not have a large enough data set by itself to construct a system of adequate quality. In this case, data across organizations has to be used, which introduces risks of data sharing. To overcome these risks, federated learning is getting increasingly popular to enable automated learning in distributed networks of autonomous partners without sharing raw data. So far, only crisp systems have been used in this context. The use of a fuzzy inference system can bring advantages to deal with vagueness and uncertainty in predictive systems. Therefore, in this paper we explore the (hopefully) happy marriage of federated learning and fuzzy inference mechanisms. We show that it is indeed possible to build a fuzzy inference model in a federated learning setting, resulting in a Federated Fuzzy Learning System (F2LS). We also show that this combination brings advantages to decision making that cannot be achieved with either mechanism in isolation.
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