Extended dependency analysis (EDA) is a heuristic search technique for finding significant relationships between nominal variables in large data sets. The directed version of EDA searches for maximally predictive sets of independent variables with respect to a target dependent variable. The original implementation of EDA was an extension of reconstructability analysis. Our new implementation adds a variety of statistical significance tests at each decision point that allow the user to tailor the algorithm to a particular objective. It also utilizes data structures appropriate for the sparse data sets customary in contemporary data mining problems. Two examples that illustrate different approaches to assessing model quality tests are given in this paper.
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1 June 2004
Conceptual Paper|
June 01 2004
Directed extended dependency analysis for data mining Available to Purchase
Thaddeus T. Shannon;
Thaddeus T. Shannon
Portland State University, Portland, Oregon, USA
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Martin Zwick
Martin Zwick
Portland State University, Portland, Oregon, USA
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Publisher: Emerald Publishing
Online ISSN: 1758-7883
Print ISSN: 0368-492X
© Emerald Group Publishing Limited
2004
Kybernetes (2004) 33 (5-6): 973–983.
Citation
Shannon TT, Zwick M (2004), "Directed extended dependency analysis for data mining". Kybernetes, Vol. 33 No. 5-6 pp. 973–983, doi: https://doi.org/10.1108/03684920410534010
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