Elsevier

Decision Support Systems

Volume 21, Issue 1, September 1997, Pages 3-15
Decision Support Systems

Bridging the gap between business objectives and parameters of data mining algorithms

https://doi.org/10.1016/S0167-9236(97)00010-9Get rights and content

Abstract

Data mining is being touted as having potential for discovering information that will contribute toward resolving business problems or creating business opportunities. However, before this potential can be realized, one needs to be able to relate the strategic objectives of a business to the use of the data mining technology. In this paper we focus on one aspect of that requirement, the translation of managerial goals into parameters of the algorithm being used to analyze the data. The first step in the process is to define a mapping from managerial goals to the performance measures of the algorithm. We then propose and apply an experimental approach using a classification algorithm, Probabilistic Inductive Learning, to develop a mapping between the performance measures and the parameters of the algorithm. The experimental results are analyzed and guidelines are given for setting the bias of the algorithm to meet managerial goals. We conclude by recommending that an experimental analysis similar to what we proposed be conducted for all data mining algorithms and provided along with documentation as an aid to the user.

References (7)

  • U. Fayyad et al.

    Knowledge discovery and data mining: Towards a unifying framework

  • F.Ö. Gür Ali

    Probabilistic inductive learning: Induction of rules with reliability measures for decision support

There are more references available in the full text version of this article.

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