Book contents
- Frontmatter
- Contents
- Preface
- Acknowledgments
- Part I History and ecological basis of species distribution modeling
- Part II The data needed for modeling species distributions
- 4 Data for species distribution models: the biological data
- 5 Data for species distribution models: the environmental data
- Part III An overview of the modeling methods
- Part IV Model evaluation and implementation
- References
- Index
4 - Data for species distribution models: the biological data
Published online by Cambridge University Press: 05 August 2012
- Frontmatter
- Contents
- Preface
- Acknowledgments
- Part I History and ecological basis of species distribution modeling
- Part II The data needed for modeling species distributions
- 4 Data for species distribution models: the biological data
- 5 Data for species distribution models: the environmental data
- Part III An overview of the modeling methods
- Part IV Model evaluation and implementation
- References
- Index
Summary
Introduction – the species data model
This chapter discusses the species (or biological) data used to develop distribution models – their spatial, temporal and measurement scales and characteristics. I will summarize what is known about the effect of the spatial and temporal sampling of species occurrence on SDM performance using information gained from a growing number of studies on the topic. This will help guide species distribution modelers to select or collect appropriate data for modeling, and to understand the limitations of the SDMs they produce given certain characteristics of the training data such as spatial or environmental bias or small sample size.
Spatial prediction of species distributions: what is being predicted?
If a model of a geographical distribution is conditioned on a continuous ecological variable, such as biomass, species richness, or species abundance (for example, Meentemeyer et al., 2001; Cumming et al., 2000b; Thogmartin et al., 2004; Bellis et al., 2008), then that “dependent variable” is the attribute being predicted. The resulting prediction is in units of grams per m2, species per km2 or individuals per km2, for example. However, models conditioned on observations that a species was present in a location – it was growing someplace or sighted somewhere or recorded utilizing a habitat (foraging, nesting) – are different. Even when biological surveys record some measure of abundance, they may be simplified to presence versus absence for reasons discussed below.
- Type
- Chapter
- Information
- Mapping Species DistributionsSpatial Inference and Prediction, pp. 55 - 75Publisher: Cambridge University PressPrint publication year: 2010