Spatial data analysis in ecology and agriculture using R
著者
書誌事項
Spatial data analysis in ecology and agriculture using R
CRC Press, Taylor & Francis Group, c2019
2nd ed
- : hardback
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注記
Includes bibliographical references (p. 635-656) and index
内容説明・目次
内容説明
Key features:
Unique in its combination of serving as an introduction to spatial statistics and to modeling agricultural and ecological data using R
Provides exercises in each chapter to facilitate the book's use as a course textbook or for self-study
Adds new material on generalized additive models, point pattern analysis, and new methods of Bayesian analysis of spatial data.
Includes a completely revised chapter on the analysis of spatiotemporal data featuring recently introduced software and methods
Updates its coverage of R software including newly introduced packages
Spatial Data Analysis in Ecology and Agriculture Using R, 2nd Edition provides practical instruction on the use of the R programming language to analyze spatial data arising from research in ecology, agriculture, and environmental science. Readers have praised the book's practical coverage of spatial statistics, real-world examples, and user-friendly approach in presenting and explaining R code, aspects maintained in this update. Using data sets from cultivated and uncultivated ecosystems, the book guides the reader through the analysis of each data set, including setting research objectives, designing the sampling plan, data quality control, exploratory and confirmatory data analysis, and drawing scientific conclusions.
Additional material to accompany the book, on both analyzing satellite data and on multivariate analysis, can be accessed at https://www.plantsciences.ucdavis.edu/plant/additionaltopics.htm.
目次
Working with Spatial Data. R Programming Environment. Statistical Properties of Spatially Autocorrelated Data. Measures of Spatial Autocorrelation. Sampling and Data Collection. Preparing Spatial Data for Analysis. Preliminary Exploration of Spatial Data. Using Non-Spatial Methods to Explore Spatial Data. Variance Estimation, the Effective Sample Size, and the Bootstrap. Measures of Bivariate Association between Two Spatial Variables. Mixed Model. Regression Models for Spatially Autocorrelated Data. Bayesian Analysis of Spatially Autocorrelated Data. Analysis of Spatiotemporal Data. Analysis of Data from Controlled Experiments. Assembling Conclusions. Appendices. Review of Mathematical Concepts. The Data Sets. An R Thesaurus. References.
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