Deakin University
Browse
Differentially_Private_Prescriptive_Analytics.pdf (336.49 kB)

Differentially private prescriptive analytics

Download (336.49 kB)
Version 3 2023-10-04, 02:14
Version 2 2023-10-02, 22:33
Version 1 2019-03-01, 14:39
conference contribution
posted on 2023-10-04, 02:14 authored by H Harikumar, S Rana, S Gupta, T Nguyen, R Kaimal, S Venkatesh
© 2018 IEEE. Privacy preservation is important. Prescriptive analytics is a method to extract corrective actions to avoid undesirable outcomes. We propose a privacy preserving prescriptive analytics algorithm to protect the data used during the construction of the prescriptive analytics algorithm. We use differential privacy mechanism to achieve strong privacy guarantee. Differential privacy mechanism requires computation of sensitivity: maximum change in the output between two training datasets, which is differed by only one instance. The main challenge we addressed is the computation of sensitivity of the prescription vector. In absence of any analytical form, we construct a nested global optimization problem to compute the sensitivity. We solve the optimization problem using constrained Bayesian optimization, as the nested structure makes the objective function expensive. We demonstrate our algorithm on two real world datasets and observe that the prescription vectors remains useful even after making them private.

History

Volume

2018-November

Pagination

995-1000

Location

Singapore

Open access

  • Yes

Start date

2018-11-17

End date

2018-11-20

ISSN

1550-4786

ISBN-13

9781538691588

Language

eng

Publication classification

E1 Full written paper - refereed

Title of proceedings

ICDM 2018 : Proceedings of the IEEE International Conference on Data Mining

Event

Data Mining. Conference (2018 : Singapore)

Publisher

IEEE

Place of publication

Piscataway, N.J.