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Main idea: Create another chapter on the websites for this class or CBE 20258/60258 to cover the following topics.
Maximum likelihood estimation (MLE) as a lens to explain why weighted nonlinear regression works
Fisher information matrix (FIM) derived from the MLE perspective with simplifications for i.i.d. Gaussian measurement errors
Parameter covariance estimate derived from MLE and optimization perspectives. The goal is to explain in two ways when the formulas from CBE 20258 work.
MLE for (1) proportional plus constant or (2) auto-correlated measurement errors
Eigendecomposition of FIM for practical identifiability analysis
Model-based design of experiments using scipy
Link to ParmEst and Pyomo.DoE tutorials from the summer workshop
Main idea: Create another chapter on the websites for this class or CBE 20258/60258 to cover the following topics.