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- Available from: http://spotfire.tibco.com/products/data-mining-applications.aspx
- Available from: http://www.spss.com/statistics/
- Available from: http://www.spss.com/software/modeling/modeler/
- Available from: http://www.camo.com/rt/Products/Unscrambler/unscrambler.html
- Available from: http://www.cs.waikato.ac.nz/ml/weka/