Today (2/23/16) Learning objectives:

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Presentation transcript:

Today (2/23/16) Learning objectives: Build an initial framework for interpreting parameter uncertainties from linear and nonlinear fitting (6.4) Extend the linear fitting approach to nonlinear functions through Taylor series linearization (6.5) 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11

Coefficient Uncertainties Taylor Linearization 1/11