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Apply Model (Recommender System)
Hello,
I can't figure out how does this operator works (for example for the Recommender System extension):
- when I put new clients in logs I have a message "working, : the client is unknown"
- when Iput only clients that are alo in the training test (just different products) I get another worning (test and training sets are overlapping)
The description in the book that is describing this operator "Item Recommendation Apply Model operator also takes a trained model,and a test/query set as input. The Apply Model operator applies the trainedmodel on the query data and returns the list of the first n ranked items for eachuser in the query set, where n is a user defined parameter"
I do not understand
if I should put known clients because the model will try to predict this new items and the apply model will compare this results with the predicted ones ..
or if I should put unknown clients but then I cant't understand how the performences are calculated..
Also, normally we should have train, validation and test..however we have only train and test in rapidminer..how is this done?
Thank you!!
Best regards,
I can't figure out how does this operator works (for example for the Recommender System extension):
- when I put new clients in logs I have a message "working, : the client is unknown"
- when Iput only clients that are alo in the training test (just different products) I get another worning (test and training sets are overlapping)
The description in the book that is describing this operator "Item Recommendation Apply Model operator also takes a trained model,and a test/query set as input. The Apply Model operator applies the trainedmodel on the query data and returns the list of the first n ranked items for eachuser in the query set, where n is a user defined parameter"
I do not understand
if I should put known clients because the model will try to predict this new items and the apply model will compare this results with the predicted ones ..
or if I should put unknown clients but then I cant't understand how the performences are calculated..
Also, normally we should have train, validation and test..however we have only train and test in rapidminer..how is this done?
Thank you!!
Best regards,
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