Title :
Value of information gained from data mining in the context of information sharing
Author :
Saygin, Yücel ; Reisman, Arnold ; Wang, YunTong
Author_Institution :
Fac. of Eng. & Natural Sci., Sabanci Univ., Istanbul, Turkey
Abstract :
This paper uses a game-theoretic framework to suggest the fair value for information extracted via data mining and shared between two retail-market competitors. For mutual benefit, the two players each owning a privileged information set (a collection of data or database) may want to share or pool all or part of the information contained within their respective databases. Assume that each player is equipped with a data mining technique which extracts information from the data. We first model the information sharing as a cooperative game. Then, we use results from the cost sharing literature to provide information sharing methods when data can be quantified either as discrete or as continuous variables. In the latter case, we provide a means for obtaining decision rules for pricing shared information.
Keywords :
data mining; game theory; Aumann-Shapley method; Shapley-Shubik method; continuous variable; cooperative game; cost sharing literature; data mining technique; databases; discrete variable; game-theory; information sharing method; privileged information set; retail-market competitors; Association rules; Companies; Costs; Data mining; Databases; Law; Marketing and sales; Packaging; Pricing; Printers; Aumann–Shapley method; Shapley–Shubik method; data mining; game theory; information sharing; value of information;
Journal_Title :
Engineering Management, IEEE Transactions on
DOI :
10.1109/TEM.2004.836359