This course is designed for data scientists, machine learning practitioners, and researchers who want to understand how resampling techniques must be adapted to the structure of the problem at hand.

Problem-Dependent Resampling Techniques
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Recommended experience
What you'll learn
Apply spatial cross-validation to account for spatial autocorrelation
Adapt performance evaluation methods for structured data relationships
Use statistical tests such as Wilcoxon and permutation tests to assess significance
Critically evaluate reported machine learning performance results
Skills you'll gain
- Applied Machine Learning
- Machine Learning
- Statistical Hypothesis Testing
- Correlation Analysis
- Data Processing
- Data Synthesis
- Spatial Data Analysis
- Drug Interaction
- Dependency Analysis
- Analysis
- Spatial Analysis
- Model Evaluation
- Sampling (Statistics)
- Machine Learning Algorithms
- Statistical Methods
- Analytical Skills
- Feature Engineering
- Analytics
- Sample Size Determination
Details to know

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April 2026
4 assignments
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There are 3 modules in this course
Offered by
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Status: Free TrialUniversity of Colorado Boulder
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