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Interpretation of Confusion Matrix Table
ikayunida123
Member Posts: 17 Contributor II
Hello everyone! I want to ask a question. I'm using the Performance (Binomial Classification) in Cross Validation while designing my model. From RapidMiner Documentation, I know the result in the picture below is using Confusion Matrix. If we count the Recall (TP/(TP+FN)) the result is 94,29% (similiar with the number in the picture). Then if we count the precision (TP/(TP+FP)) the result is 77,34% (also similiar with the number in the picture). But what's actually the meaning of the number "69,47%" and "91,67%" in the picture below? I need your help. Thank you.
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Answers
https://community.rapidminer.com/t5/Auto-Model-Validate-and-Optimize/Validating-a-Model/ta-p/49873
check minute 5:10 onwards. Cheers, K