explanation
Machine Learning with Imbalanced Data is a course on techniques for handling imbalanced data and improving the efficiency of machine learning models. If you are currently working with imbalanced data sets and want to improve model performance or learn techniques to help you deal with data imbalance, this course is for you. Our fun, educational videos will teach you step-by-step everything you need to know about working with imbalanced data sets. This comprehensive course teaches all the methodologies available for working with imbalanced datasets and discusses the logic of how they work, how to use them in Python, and their pros and cons.
Here’s what you’ll learn in the Machine Learning with Imbalanced Data course:
- Random undersampling method
- It is a “low sampling” method that focuses on observations that are difficult to classify.
- Low sampling method to increase the number of minority observations.
- How to build dummy data to increase minority class examples
- SMOTE and its variables
- We use sampling techniques and group methods to improve model efficiency.
- Best evaluation criteria for use with imbalanced data sets
Course specifications
Publisher: Udemy
teacher: Soledad Galli
Language:English
Level: average
Lesson: 129
Duration: 11 hours 24 minutes
June 2022 Machine Learning with Imbalanced Data
Course Prerequisites:
Knowledge of machine learning basic algorithms (e.g. regression, decision trees, and nearest neighbors).
Python programming, including knowledge of NumPy, Pandas, and Scikit-learn.
movie
sample film
installation manual
After extracting, watch with your favorite players.
English subtitles
Quality: 720
Changes:
The 2022/3 version has increased to 25 classes and 2 hours and 57 minutes of class time compared to 2021/1.
download link
File password: free download software
size
2.54GB