Book contents
- Frontmatter
- Contents
- Preface
- Note on MATLAB
- 1 Dynamic Modeling with Difference Equations
- 2 Linear Models of Structured Populations
- 3 Nonlinear Models of Interactions
- 4 Modeling Molecular Evolution
- 5 Constructing Phylogenetic Trees
- 6 Genetics
- 7 Infectious Disease Modeling
- 8 Curve Fitting and Biological Modeling
- A Basic Analysis of Numerical Data
- B For Further Reading
- References
- Index
8 - Curve Fitting and Biological Modeling
Published online by Cambridge University Press: 05 September 2012
- Frontmatter
- Contents
- Preface
- Note on MATLAB
- 1 Dynamic Modeling with Difference Equations
- 2 Linear Models of Structured Populations
- 3 Nonlinear Models of Interactions
- 4 Modeling Molecular Evolution
- 5 Constructing Phylogenetic Trees
- 6 Genetics
- 7 Infectious Disease Modeling
- 8 Curve Fitting and Biological Modeling
- A Basic Analysis of Numerical Data
- B For Further Reading
- References
- Index
Summary
Most of the models introduced in this text have been developed by making reasonable theoretical assumptions, which are then incorporated into a mathematical framework. However, the ultimate test of the validity of any model is that its behavior is in accord with real data. Because of the simplifications introduced in any mathematical model of a biological system, we must expect some divergence between even the most carefully collected data and wellconstructed model. How can we determine if a model describes data well? How can we determine the parameter values in a model that are appropriate for describing real data? These questions are much too broad to have a single answer. There are, however, mathematical tools that can be used in addressing them.
Imagine having collected data on a population size at successive time intervals. Plotting the population values as a function of time might give a plot that appears to grow roughly exponentially. We might, therefore, think the simple Malthusian model Pt+1 = λPt, introduced in Chapter 1, is adequate for describing the population growth. Then, the data points should lie approximately on a curve Pt = λtP0 = P0e(In λ)t. But what should λ be? Is there a “best” estimate of this parameter that locates the curve “closest” to the data points? How can we be confident the population is really growing exponentially, and not more slowly, with the data points actually lying on a parabola, for instance?
- Type
- Chapter
- Information
- Mathematical Models in BiologyAn Introduction, pp. 315 - 344Publisher: Cambridge University PressPrint publication year: 2003