[IJHCS] UTA7: a dataset of rates (BI-RADS) provided by clinicians resulted from classifying the given medical images for breast cancer diagnosis.
-
Updated
Apr 13, 2023 - CSS
[IJHCS] UTA7: a dataset of rates (BI-RADS) provided by clinicians resulted from classifying the given medical images for breast cancer diagnosis.
RNAchallenge dataset for the classification of protein-coding and non-coding RNAs
A tool reading ground truth data and detected object data provides visualization way to estimate position accuracy.
With a precision of 86% and model's CAP curve showing an accuracy of 100%! This means it is capable of correctly predicting 100% of patients with a heart disease after processing 50% of the data. The model's performance is "Too Good to be True"! However, with Train accuracy = 86% and Test accuracy = 82%, there is no visible sign of overfitting.
Slides of a talk on deep learning, false negatives/positives and predator-prey interactions with R.
Machine learning for credit card default. Precision-recalls are calculated due to imbalanced data. Confusion matrices and test statistics are compared with each other based on Logit over and under-sampling methods, decision tree, SVM, ensemble learning using Random Forest, Ada Boost and Gradient Boosting. Easy Ensemble AdaBoost classifier appear…
Add a description, image, and links to the false-negative topic page so that developers can more easily learn about it.
To associate your repository with the false-negative topic, visit your repo's landing page and select "manage topics."