The Altair Community is migrating to a new platform to provide a better experience for you. In preparation for the migration, the Altair Community is on read-only mode from October 28 - November 6, 2024. Technical support via cases will continue to work as is. For any urgent requests from Students/Faculty members, please submit the form linked here
To get High accuracy by leaving low precision classes
Hi!!
I am using RapidMiner Studio 6.0.008.
To give some background I am trying to predict the posting Accounts for a given invoice using decision tree. (If you don't understand it doesn't really matter)
I used X-validation and as I can see from the PerformanceVector I got 87.06 % accuracy. I am ok with the model and I want to go use it.
However, since the application is very sensitive I want to use the cases where I have 100% class precision.
What I want is when I give my model a test example(unseen example) the model should :
- predict only when it is 95% sure (to make it more general say above some threshold )
I am using RapidMiner Studio 6.0.008.
To give some background I am trying to predict the posting Accounts for a given invoice using decision tree. (If you don't understand it doesn't really matter)
I used X-validation and as I can see from the PerformanceVector I got 87.06 % accuracy. I am ok with the model and I want to go use it.
However, since the application is very sensitive I want to use the cases where I have 100% class precision.
What I want is when I give my model a test example(unseen example) the model should :
- predict only when it is 95% sure (to make it more general say above some threshold )
Tagged:
0
Answers