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
Choosing good classifiers for forward selection applied on nominal data
Hello community,
my goal is to run a wrapper-based feature selection on ~70 nominal features to select a the ~10 best ones. I think a forward selection is the best choice here as it starts with no features and adds one new feature at a time. I read through several guides here on how to do a wrapper-based feature selection that were very helpful in implementing this.
However I am still lost on which classifiers I should select inside the model. I will not use the resulting dataset to train and test a model afterwards, so the obvious choice of selecting the same classifier as I would for the model is not there. Are there any posts here I missed so far that would help me with selecting classifiers? Or can you share your knowledge and experience on this with me? I greatly appreciate your answers!
Tagged:
0
Answers
Dortmund, Germany
Don't focus only on the "forward selection".
I think that in life (and thus in data-science), it is always relevant to compare.
RapidMiner propose several methods of feature selection :
You can test them.
From my own experience, the Optimize Selection (Evolutionary) operator gave always me good results...
To conclude, here a link to a ressource relativ to Feature Selection :
https://community.rapidminer.com/discussion/45775/multi-objective-feature-selection-part-1-the-basics
Hope it helps,
Regards,
Lionel