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f_rederik
Obsidian | Level 7

Hi all

Having previously built Credit Scorecards using the scoring node, I am now looking to build a 'probability of purchasing a product' model.

The model is making sense, so I thought it would be a good idea to add the scorecard node for it to be easier to communicate. However I cannot seem to find the setting where I can 'reverse' the score range?

Currently the high probabilities result in low points. I guess this makes sense from a "probability of default" perspective, but is it possible to change this so that the high probabilities get the higher points? Or am I missing something here?

(Currently using SAS Enterprise Miner 6.2)

Thanks,
Fred

1 ACCEPTED SOLUTION

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M_Maldonado
Barite | Level 11

You are right...
Apologies, I googled it and it seems that it is only available in EM 7.1 or newer.

Sorry about the confusion!

View solution in original post

3 REPLIES 3
M_Maldonado
Barite | Level 11

Hi Fred,

It is really easy (and useful) to get a reverse scorecard!

On the Scorecard node properties, the second scaling property is Reverse Scorecard.

Set Reverse Scorecard to Yes, and run!

Good luck!

Miguel

f_rederik
Obsidian | Level 7

Thanks Miguel. I'm probably being blind, but I just can't see this option! (attaching a screenshot)

What am I missing?

scorecard.png

M_Maldonado
Barite | Level 11

You are right...
Apologies, I googled it and it seems that it is only available in EM 7.1 or newer.

Sorry about the confusion!

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