Title
Instance-Based Learning With L-Diversity
Abstract
Corporations are retaining ever-larger corpuses of personal data; the frequency or breaches and corresponding privacy impact have been rising accordingly. One way to mitigate this risk is through use of anonymized data, limiting the exposure of individual data to only where it is absolutely needed. This would seem particularly appropriate for data mining, where the goal is generalizable knowledge rather than data on specific individuals. In practice, corporate data miners often insist on original data, for fear that they might "miss something" with anonymized or differentially private approaches. This paper provides a theoretical justification for the use of anonymized data. Specifically, we show that a k-nearest neighbor classifier trained on anatomized data satisfying l-diversity should be expected to do as well as on the original data. Anatomized data preserves all attribute values, but introduces uncertainty in the mapping between identifying and sensitive values, thus satisfying l-diversity. The theoretical effectiveness of the proposed approach is validated using several publicly available datasets, showing that we outperform the state of the art for nearest neighbor classification using training data protected by k-anonymity, and are comparable to learning on the original data.
Year
Venue
Keywords
2017
TRANSACTIONS ON DATA PRIVACY
l-diversity, k-nearest neighbor, non-parametric models, machine learning
Field
DocType
Volume
World Wide Web,Internet privacy,Instance-based learning,Computer science
Journal
10
Issue
ISSN
Citations 
3
1888-5063
1
PageRank 
References 
Authors
0.35
0
2
Name
Order
Citations
PageRank
Koray Mancuhan1143.02
Chris Clifton23327544.44