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Enhancing Privacy in Participatory Sensing...
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Enhancing Privacy in Participatory Sensing Applications with Multidimensional Data

Abstract

Participatory sensing applications rely on individuals to share local and personal data with others to produce aggregated models and knowledge. In this setting, privacy is an important consideration, and lack of privacy could discourage widespread adoption of many exciting applications. We present a privacy-preserving participatory sensing scheme for multidimensional data which uses negative surveys. Multidimensional data, such as vectors of attributes that include location and environment fields, are challenging for privacy protection and are common in participatory sensing applications. When reporting data in a negative survey, an individual participant randomly selects a value from the set complement of the sensed data value, once for each dimension, and returns the negative values to a central collection server. Using algorithms described in this paper, the server can reconstruct the probability density functions of the original distributions of sensed values, without knowing the participants' actual data. Our algorithms avoid computationally expensive encryption and key management schemes, conserving energy. We study trade-offs between accuracy and privacy, and their relationships to the number of dimensions, categories, and participants. We introduce dimensional adjustment, a method that reduces the magnification of error associated with earlier work. Two simulation scenarios illustrate how the approach can protect the privacy of a participant's multidimensional data while allowing useful aggregate information to be collected.

Authors

Groat MM; Edwards B; Horey J; He W; Forrest S

Volume

1

Pagination

pp. 144-152

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

March 1, 2012

DOI

10.1109/percom.2012.6199861

Name of conference

2012 IEEE International Conference on Pervasive Computing and Communications
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