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FSKD
2007
Springer

Rough Set Model Selection for Practical Decision Making

13 years 10 months ago
Rough Set Model Selection for Practical Decision Making
One of the challenges a decision maker faces is choosing a suitable rough set model to use for data analysis. The traditional algebraic rough set model classifies objects into three regions, namely, the positive, negative, and boundary regions. Two different probabilistic models, variableprecision and decision-theoretic, modify these regions via l,u user-defined thresholds and α, β values from loss functions respectively. A decision maker whom uses these models must know what type of decisions can be made within these regions. This will allow him or her to conclude which model is best for their decision needs. We present an outline that can be used to select a model and better analyze the consequences and outcomes of those decisions.
Joseph P. Herbert, Jingtao Yao
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where FSKD
Authors Joseph P. Herbert, Jingtao Yao
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