Overview
Explore the intricacies of over-sampling techniques in machine learning through this 22-minute Launchpad video. Delve into the paper "Overly Optimistic Prediction Results on Imbalanced Data: Flaws and Benefits of Over-sampling" to understand the potential pitfalls and advantages of using over-sampling methods on imbalanced datasets. Examine case studies, including the TPEHGDB and APTOS datasets, to gain insights into the effects of over-sampling on model performance. Learn about the comparison of results across different studies and the implications for real-world applications. Gain valuable knowledge on how to critically evaluate prediction results and avoid common mistakes when dealing with imbalanced data in machine learning projects.
Syllabus
Intro
ABSTRACT
NOTES ON DATA - TPEHGDB
NOTES ON STUDIES AND FLAWS
NOTES ON STUDIES REVIEWED
NOTES ON OVERSAMPUNG
PAPER COMPARISON OF RESULTS
NOTES ON DATA - APTOS
MY EXPERIMENTS - MODEL RESULTS
FURTHER READING
Taught by
Launchpad