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kah1
Fluorite | Level 6

I have a dataset that when that creates a role of "residual" vs. "input" for several variables when added as a data source in E-miner. I thought it might have to do with the % missing so I choose the Advanced Options and changed the percent missing threshold and ran but it did not change the role to input. How does the "residual" role get determined?  I can manual change them to input but I want to understand if there is an option controlling this.

Thanks

 

 

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kah1
Fluorite | Level 6

Almost, the variables start with "RD_". Why is that a specific variable name I shouldn't use? If so what else should not be used?

 

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WendyCzika
SAS Employee
Do the variables marked as Residual start with the prefix "R_" ?
kah1
Fluorite | Level 6

Almost, the variables start with "RD_". Why is that a specific variable name I shouldn't use? If so what else should not be used?

 

kah1
Fluorite | Level 6
I renamed all my variables and not it makes the role ="input". Thanks let me know if I should be aware of any other prefixes I shouldn't use
WendyCzika
SAS Employee

This post gives a list of other variables with reserved names or prefixes in EM: 

https://communities.sas.com/t5/SAS-Communities-Library/Scoring-Series-Part-2-SAS-Enterprise-Miner-Sc...

 

You can also take a look at this post about global metadata to see how to programmatically change variable roles, levels, etc. instead of manually:

https://communities.sas.com/t5/SAS-Communities-Library/Tip-Defining-Global-Metadata-for-SAS-Enterpri...

kah1
Fluorite | Level 6

thank you, makes sense to me now!

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