We consider the problem of designing a survey to aggregate non-verifiable information from a privacy-sensitive population: an analyst wants to compute some aggregate statistic from the private bits held by each member of a population, but cannot verify the correctness of the bits reported by participants in his survey. Individuals in the population are strategic agents with a cost for privacy, ie, they not only account for the payments they expect to receive from the mechanism, but also their privacy costs from any information revealed about them by the mechanism's outcome---the computed statistic as well as the payments---to determine their utilities. How can the analyst design payments to obtain an accurate estimate of the population stat...
We study the central problem in data privacy: how to share data with an analyst while providing bot...
We consider a data analyst's problem of purchasing data from strategic agents to compute an unbiased...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
In this paper, we consider the problem of estimating a potentially sensitive (individually stigmatiz...
We initiate the study of markets for private data, through the lens of differential privacy. Althoug...
We initiate the study of markets for private data, through the lens of differential privacy. Althoug...
We consider the problem of fitting a linear model to data held by individuals who are concerned abou...
We consider a platform's problem of collecting data from privacy sensitive users to estimate an unde...
We study a market for private data in which a data analyst publicly releases a statistic over a data...
Recent work has constructed economic mechanisms that are both truthful and differentially private. I...
We prove new positive and negative results concerning the existence of truthful and individually rat...
Statistical agencies face a dual mandate to publish accurate statistics while protecting respondent ...
We propose a simple model where individuals in a privacy-sensitive population decide whether or not ...
peer reviewedAnalyses that fulfill differential privacy provide plausible deniability to individuals...
In this paper we study estimating Generalized Linear Models (GLMs) in the case where the agents (ind...
We study the central problem in data privacy: how to share data with an analyst while providing bot...
We consider a data analyst's problem of purchasing data from strategic agents to compute an unbiased...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
In this paper, we consider the problem of estimating a potentially sensitive (individually stigmatiz...
We initiate the study of markets for private data, through the lens of differential privacy. Althoug...
We initiate the study of markets for private data, through the lens of differential privacy. Althoug...
We consider the problem of fitting a linear model to data held by individuals who are concerned abou...
We consider a platform's problem of collecting data from privacy sensitive users to estimate an unde...
We study a market for private data in which a data analyst publicly releases a statistic over a data...
Recent work has constructed economic mechanisms that are both truthful and differentially private. I...
We prove new positive and negative results concerning the existence of truthful and individually rat...
Statistical agencies face a dual mandate to publish accurate statistics while protecting respondent ...
We propose a simple model where individuals in a privacy-sensitive population decide whether or not ...
peer reviewedAnalyses that fulfill differential privacy provide plausible deniability to individuals...
In this paper we study estimating Generalized Linear Models (GLMs) in the case where the agents (ind...
We study the central problem in data privacy: how to share data with an analyst while providing bot...
We consider a data analyst's problem of purchasing data from strategic agents to compute an unbiased...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...