Decentralized optimization enables a network of agents to cooperatively optimize an overall objective function without a central coordinator and is gaining increased attention in domains as diverse as control, sensor networks, data mining, and robotics. However, the information sharing among agents in decentralized optimization also discloses agents' information, which is undesirable or even unacceptable when involved data are sensitive. This paper proposes two gradient based decentralized optimization algorithms that can protect participating agents' privacy without compromising optimization accuracy or incurring heavy communication/computational overhead. This is in distinct difference from differential privacy based approaches which have...
The alternating direction method of multipliers (ADMM) has been recently recognized as a promising o...
Privacy issues and communication cost are both major concerns in distributed optimization in network...
We develop a privacy-preserving distributed algorithm to minimize a regularized empirical risk funct...
With decentralized optimization having increased applications in various domains ranging from machin...
Privacy protection has become an increasingly pressing requirement in distributed optimization. Howe...
Decentralized optimization is gaining increased traction due to its widespread applications in large...
As the modern world becomes increasingly digitized and interconnected, distributed systems have prov...
This dissertation considers decentralized optimization and its applications. On the one hand, we add...
This paper addresses the problem of distributed optimization, where a network of agents represented ...
Due to its broad applicability in machine learning, resource allocation, and control, the alternatin...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Decentralized optimization is increasingly popular in machine learning for its scalability and effic...
In this paper, we study the problem of consensus-based distributed optimization where a network of a...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
Decentralized algorithms for stochastic optimization and learning rely on the diffusion of informati...
The alternating direction method of multipliers (ADMM) has been recently recognized as a promising o...
Privacy issues and communication cost are both major concerns in distributed optimization in network...
We develop a privacy-preserving distributed algorithm to minimize a regularized empirical risk funct...
With decentralized optimization having increased applications in various domains ranging from machin...
Privacy protection has become an increasingly pressing requirement in distributed optimization. Howe...
Decentralized optimization is gaining increased traction due to its widespread applications in large...
As the modern world becomes increasingly digitized and interconnected, distributed systems have prov...
This dissertation considers decentralized optimization and its applications. On the one hand, we add...
This paper addresses the problem of distributed optimization, where a network of agents represented ...
Due to its broad applicability in machine learning, resource allocation, and control, the alternatin...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Decentralized optimization is increasingly popular in machine learning for its scalability and effic...
In this paper, we study the problem of consensus-based distributed optimization where a network of a...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
Decentralized algorithms for stochastic optimization and learning rely on the diffusion of informati...
The alternating direction method of multipliers (ADMM) has been recently recognized as a promising o...
Privacy issues and communication cost are both major concerns in distributed optimization in network...
We develop a privacy-preserving distributed algorithm to minimize a regularized empirical risk funct...