Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Computer Science, 2019Cataloged from PDF version of thesis.Includes bibliographical references (pages 79-83).Privacy concerns with sensitive data are receiving increasing attention. In this thesis, we study local differential privacy (LDP) in interactive decentralized optimization. Comparing to central differential privacy (DP), where a centralized curator maintains the dataset, LDP is a stronger notion yet with industrial adoption, which allows data of an individual to be privatized before sharing. Consequently, more challenges are encountered to build efficient statistical analyzer in LDP setting. Towards practical decentralized optimization in L...
Decentralized optimization enables a network of agents to cooperatively optimize an overall objectiv...
We consider the setting of publishing data without leaking sensitive information. We do so in the fr...
Privacy protection has become an increasingly pressing requirement in distributed optimization. Howe...
With decentralized optimization having increased applications in various domains ranging from machin...
Decentralized optimization is increasingly popular in machine learning for its scalability and effic...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
This dissertation considers decentralized optimization and its applications. On the one hand, we add...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
With the advent of the era of big data, privacy issues have been becoming a hot topic in public. Loc...
Local differential privacy has recently surfaced as a strong measure of privacy in contexts where pe...
Decentralized algorithms for stochastic optimization and learning rely on the diffusion of informati...
Computing technologies today have made it much easier to gather personal data, ranging from GPS loca...
We consider data release protocols for data $X=(S,U)$, where $S$ is sensitive; the released data $Y$...
Data is considered the “new oil” in the information society and digital economy. While many commerci...
Data is considered the "new oil" in the information society and digital economy. While many commerci...
Decentralized optimization enables a network of agents to cooperatively optimize an overall objectiv...
We consider the setting of publishing data without leaking sensitive information. We do so in the fr...
Privacy protection has become an increasingly pressing requirement in distributed optimization. Howe...
With decentralized optimization having increased applications in various domains ranging from machin...
Decentralized optimization is increasingly popular in machine learning for its scalability and effic...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
This dissertation considers decentralized optimization and its applications. On the one hand, we add...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
With the advent of the era of big data, privacy issues have been becoming a hot topic in public. Loc...
Local differential privacy has recently surfaced as a strong measure of privacy in contexts where pe...
Decentralized algorithms for stochastic optimization and learning rely on the diffusion of informati...
Computing technologies today have made it much easier to gather personal data, ranging from GPS loca...
We consider data release protocols for data $X=(S,U)$, where $S$ is sensitive; the released data $Y$...
Data is considered the “new oil” in the information society and digital economy. While many commerci...
Data is considered the "new oil" in the information society and digital economy. While many commerci...
Decentralized optimization enables a network of agents to cooperatively optimize an overall objectiv...
We consider the setting of publishing data without leaking sensitive information. We do so in the fr...
Privacy protection has become an increasingly pressing requirement in distributed optimization. Howe...