260 likes | 1.16k Views
Non-Linear Regression. What is it? Why and when to use? Model assumptions Typical non-linear models Obtaining parameter estimates. Non-linear regression. What is it? Model is non-linear in the parameters. Types of models: Linear. Intrinsically linear. Intrinsically non-linear.
E N D
Non-Linear Regression • What is it? • Why and when to use? • Model assumptions • Typical non-linear models • Obtaining parameter estimates AGR206
Non-linear regression • What is it? • Model is non-linear in the parameters. • Types of models: • Linear. • Intrinsically linear. • Intrinsically non-linear. • Non-linear regression minimizes SSE numerically, by trying many values of the parameter estimates. • Properties of parameters and predictions cannot be derived with equations. AGR206
When and why to use? • Function relating Y to X's is known on the basis of a mechanistic understanding of the process. • For example, the logistic growth model is based on the fact that for some populations, individuals compete for resources and reduce each other's growth rate linearly as density increases. • Parameters of the model have a direct biological meaning. The model may offer the only way to empirically estimate the value of the parameter. • In the previous example, the parameters of the logistic equations are the intrinsic relative growth rate (r) and carrying capacity (K). • Nonlinear models may characterize responses better with fewer parameters than linear ones, even when no apriori functional form is available. AGR206
Exponential growth AGR206
Two-term exponential AGR206
Mitscherlich’s response AGR206
Mitscherlich graph AGR206
Michaelis-Menten AGR206
Segmented Model AGR206