Author List: Spangler, William E.; May, Jerrold H.; Vargas, Luis G.;
Journal of Management Information Systems, 1999, Volume 16, Issue 1, Page 37-62.
Data-mining techniques are designed for classification problems in which each observation is a member of one and only one category. The authors formulate ten data representations that could be used to extend those methods to problems in which observations may be full members of multiple categories. They propose an audit matrix methodology for evaluating the performance of three popular data-mining techniques--linear discriminant analysis, neural networks, and decision tree induction--using the representations that each technique can accommodate. They then empirically test their approach on an actual surgical data set. Tree induction gives the lowest rate of false positive predictions, and a version of discriminant analysis yields the lowest rate of false negatives for multiple category problems, but neural networks give the best overall results for the largest multiple classification cases. There is substantial room for improvement in overall performance for all techniques.
Keywords: data mining; decision support systems; decision tree induction; neural networks; statistical classification
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#215 0.401 data classification statistical regression mining models neural methods using analysis techniques performance predictive networks accuracy method variables prediction problem measure
#132 0.213 likelihood multiple test survival promotion reputation increase actions run term likely legitimacy important rates findings long short higher argue prior
#57 0.123 decision support systems making design models group makers integrated article delivery representation portfolio include selection effective claims decisions rationale various
#60 0.094 analysis techniques structured categories protocol used evolution support methods protocols verbal improve object-oriented difficulties analyses category benchmark comparison provided recognition