MODELING DATA INTEGRITY UNDER STOCHASTIC LINEAR CONSTRAINTS

Authors

  • Lee-Pin Shing Virginia Tech
  • Lee-Hur Shing Virginia Tech
  • Marn-Ling Shing University of Taipei
  • Chen-Chi Shing Radford University

DOI:

https://doi.org/10.7903/ijecs.1247

Keywords:

Data Integrity Model, Stochastic Linear Programming, Risk Management Model

Abstract

The most commonly used data integrity models today are Bibba, Wilson-Clark and Chinese models. These models are designed for both data integrity protection and confidentiality. Many optimization problems are related to linear programming. In practice, these variables involved are probabilistic. This paper proposes a data integrity model based on data anomalies assuming data are under stochastic linear constraints. An algorithm is constructed using the simplex method to find confidence intervals for the problem solutions. In the end the results from Monte Carlo simulation are compared with those from simplex method.

To cite this document: Lee-Pin Shing, Lee-Hur Shing, Marn-Ling Shing, and Chen-Chi Shing, "Modeling data integrity under stochastic linear constraints", International Journal of Electronic Commerce Studies, Vol.6, No.2, pp.233-242, 2015.

Permanent link to this document:
http://dx.doi.org/10.7903/ijecs.1247

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Published

2015-01-30

Issue

Section

Special Issue for ATISR2014