학술논문

Cell suppression to limit content-based disclosure
Document Type
Conference
Source
Proceedings of the Thirtieth Hawaii International Conference on System Sciences System sciences System Sciences, 1997, Proceedings of the Thirtieth Hawaii International Conference on. 3:552-560 vol.3 1997
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Databases
Linear programming
Aggregates
Government
Data warehouses
Business
Credit cards
Economic indicators
Banking
Language
ISSN
1060-3425
Abstract
The increasing demand for information, coupled with the increasing capability of computer systems, has compelled information providers to reassess their procedures for preventing disclosure of confidential information. General logical and numerical methods exist to determine, prior to release, if disclosure can occur-either directly or through inference. One method uses linear programming techniques applied to multi-dimensional tables of count data to determine which cells are subject to inferential disclosure. This paper develops integer programming (IP) techniques to find an optimal primary suppression set for protecting the confidentiality of sensitive data in 3D tables. An example is drawn from Federal Reserve Bank records. Data tables are randomly generated to assess the extent of inferential disclosure and the computational time/space restrictions of the IP model.