Visible to the public Differential Privacy of Online Distributed Optimization under Adversarial Nodes

TitleDifferential Privacy of Online Distributed Optimization under Adversarial Nodes
Publication TypeConference Paper
Year of Publication2019
AuthorsHou, Ming, Li, Dequan, Wu, Xiongjun, Shen, Xiuyu
Conference Name2019 Chinese Control Conference (CCC)
Date PublishedJuly 2019
PublisherIEEE
ISBN Number978-9-8815-6397-2
Keywordsadversarial, adversarial nodes, Big Data, big data analysis methods, control theory, Control Theory and Privacy, Cyber physical system, cyber physical systems, Cyber-physical systems, Data analysis, data privacy, different adversary models, Differential privacy, Distributed databases, distributed online learning algorithm, Distributed optimization, graph theory, Human Behavior, important data information, learning (artificial intelligence), Network topology, online distributed optimization, online learning, Optimization, preliminary attempt, privacy, pubcrawl, regular node, resilience, Resiliency, Scalability, sensitive data
Abstract

Nowadays, many applications involve big data and big data analysis methods appear in many fields. As a preliminary attempt to solve the challenge of big data analysis, this paper presents a distributed online learning algorithm based on differential privacy. Since online learning can effectively process sensitive data, we introduce the concept of differential privacy in distributed online learning algorithms, with the aim at ensuring data privacy during online learning to prevent adversarial nodes from inferring any important data information. In particular, for different adversary models, we consider different type graphs to tolerate a limited number of adversaries near each regular node or tolerate a global limited number of adversaries.

URLhttps://ieeexplore.ieee.org/document/8865820
DOI10.23919/ChiCC.2019.8865820
Citation Keyhou_differential_2019