Incentives for Privacy Tradeoff in Community Sensing

Authors

  • Adish Singla ETH Zurich
  • Andreas Krause ETH Zurich

DOI:

https://doi.org/10.1609/hcomp.v1i1.13068

Keywords:

community sensing, privacy, mechanism design, incentive-compatible mechanisms, adaptive submodularity

Abstract

Community sensing, fusing information from populations of privately-held sensors, presents a great opportunity to create efficient and cost-effective sensing applications. Yet, reasonable privacy concerns often limit the access to such data streams. How should systems valuate and negotiate access to private information, for example in return for monetary incentives? How should they optimally choose the participants from a large population of strategic users with privacy concerns, and compensate them for information shared? In this paper, we address these questions and present a novel mechanism, SeqTGreedy, for budgeted recruitment of participants in community sensing. We first show that privacy tradeoffs in community sensing can be cast as an adaptive submodular optimization problem. We then design a budget feasible, incentive compatible (truthful) mechanism for adaptive submodular maximization, which achieves near-optimal utility for a large class of sensing applications. This mechanism is general, and of independent interest. We demonstrate the effectiveness of our approach in a case study of air quality monitoring, using data collected from the Mechanical Turk platform. Compared to the state of the art, our approach achieves up to 30% reduction in cost in order to achieve a desired level of utility.

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Published

2013-11-03

How to Cite

Singla, A., & Krause, A. (2013). Incentives for Privacy Tradeoff in Community Sensing. Proceedings of the AAAI Conference on Human Computation and Crowdsourcing, 1(1), 165-173. https://doi.org/10.1609/hcomp.v1i1.13068