Towards Privacy-Aware Causal Structure Learning in Federated Setting

IF 7.5 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Jianli Huang;Xianjie Guo;Kui Yu;Fuyuan Cao;Jiye Liang
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引用次数: 0

Abstract

Causal structure learning has been extensively studied and widely used in machine learning and various applications. To achieve an ideal performance, existing causal structure learning algorithms often need to centralize a large amount of data from multiple data sources. However, in the privacy-preserving setting, it is impossible to centralize data from all sources and put them together as a single dataset. To preserve data privacy, federated learning as a new learning paradigm has attached much attention in machine learning in recent years. In this paper, we study a privacy-aware causal structure learning problem in the federated setting and propose a novel federated PC (FedPC) algorithm with two new strategies for preserving data privacy without centralizing data. Specifically, we first propose a novel layer-wise aggregation strategy for a seamless adaptation of the PC algorithm into the federated learning paradigm for federated skeleton learning, then we design an effective strategy for learning consistent separation sets for federated edge orientation. The extensive experiments validate that FedPC is effective for causal structure learning in federated learning setting.
联邦环境下隐私感知因果结构学习研究
因果结构学习在机器学习和各种应用中得到了广泛的研究和应用。为了达到理想的性能,现有的因果结构学习算法往往需要对来自多个数据源的大量数据进行集中处理。然而,在隐私保护设置中,不可能集中所有来源的数据并将它们放在一起作为单个数据集。为了保护数据隐私,联邦学习作为一种新的学习范式,近年来在机器学习领域备受关注。本文研究了联邦环境下隐私感知的因果结构学习问题,提出了一种新的联邦PC (FedPC)算法,该算法采用两种新的策略来保护数据隐私,而不需要将数据集中。具体来说,我们首先提出了一种新的分层聚合策略,用于将PC算法无缝地适应到联邦骨架学习的联邦学习范式中,然后我们设计了一种有效的策略来学习联邦边缘方向的一致分离集。大量的实验验证了FedPC在联邦学习环境下对因果结构学习的有效性。
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来源期刊
CiteScore
11.80
自引率
2.80%
发文量
114
期刊介绍: The IEEE Transactions on Big Data publishes peer-reviewed articles focusing on big data. These articles present innovative research ideas and application results across disciplines, including novel theories, algorithms, and applications. Research areas cover a wide range, such as big data analytics, visualization, curation, management, semantics, infrastructure, standards, performance analysis, intelligence extraction, scientific discovery, security, privacy, and legal issues specific to big data. The journal also prioritizes applications of big data in fields generating massive datasets.
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