Estimating Uncertainty
All data contains a variety of different types of "errors" of different magnitudes. The challenge is to estimate the amount of uncertainty in a data set and then report this uncertainty.
Learning Outcomes
This learning module will enable you to:
- Design methods for estimating uncertainty in your response and predictor variables and your model outputs
- Quantify errors from interpolated surfaces
- Quantify errors from remotely sensed surfaces
- Create functions in R
- Use Monte Carlo methods to generate measures of uncertainty
- Use Raster data within R
Activities
Lab
Optional Readings
Old
Estimating Uncertainty in Predictor Variables