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E-grāmata: Spatial Econometric Methods in Agricultural Economics Using R [Taylor & Francis e-book]

(University of Chieti-Pescara, Italy)
  • Formāts: 280 pages, 9 Tables, black and white; 8 Illustrations, color; 35 Illustrations, black and white
  • Izdošanas datums: 15-Feb-2023
  • Izdevniecība: CRC Press
  • ISBN-13: 9780429155628
  • Taylor & Francis e-book
  • Cena: 164,53 €*
  • * this price gives unlimited concurrent access for unlimited time
  • Standarta cena: 235,05 €
  • Ietaupiet 30%
  • Formāts: 280 pages, 9 Tables, black and white; 8 Illustrations, color; 35 Illustrations, black and white
  • Izdošanas datums: 15-Feb-2023
  • Izdevniecība: CRC Press
  • ISBN-13: 9780429155628

Tools such as GIS and remote sensing are increasingly being used in monitoring agricultural resources. As a result, there is need for effective methods for the collection and analysis of agricultural data with particular reference to space. Since land is a key resource in agriculture, most of the data collected are of spatial nature or can be related to a map through geo-referencing techniques of the statistical units. It is now a common practice in many countries that the state statistical agency geo-references typical sampling frames of physical or administrative bodies used in agricultural surveys, not only according to the codes of a geographical nomenclature, but also adding information regarding the exact, or estimated, position of each record. This information is used in agricultural economics to develop advanced models in spatial econometrics. The developments in GIS technology offer growing opportunities to agricultural economists to deal with large and detailed spatial databases, making it possible to combine spatial information from different sources and to produce different models, tabular, and graphic outputs. These tools allow the application of a wide range of operations to spatial information derived from different sources; though without considering the specific nature of the different typology of spatial data. Thus, such an automated process appears to be responsible for the tendency of many practitioners to neglect particularities of spatial data with respect to data stored in conventional databases.

This book attempts to describe the main typology of agricultural data, the most appropriate methods for the analysis together with a detailed description of the available data sources and their collection methods. Topics such as spatial interpolation, point patterns, spatial autocorrelation, survey data analysis, small area estimation, regional data modeling, and spatial econometrics techniques are covered jointly with issues arising from the integration of several data types.



The book describes methods and techniques of spatial data and its use in monitoring agricultural resources, farms management and regional markets. Spatial econometrics models for different data types relevant to statistical units adopted in typical agricultural economics analyses, are introduced.

Preface iii
1 Basic Concepts
1(10)
Paolo Postiglione
Roberto Benedetti
Federica Piersimoni
2 Spatial Sampling Designs
11(24)
Francesco Pantalone
Roberto Benedetti
3 Including Spatial Information in Estimation from Complex Survey Data
35(29)
Francesco Pantalone
Maria Giovanna Ranalli
4 Yield Prediction in Agriculture: A Comparison Between Regression Kriging and Random Forest
64(24)
Eugenia Nissi
Annalina Sarra
5 Land Cover/Use Analysis and Modelling
88(20)
Elisabetta Carfagna
Gianrico Di Fonzo
6 Statistical Systems in Agriculture
108(14)
Cecilia Manzi
Federica Piersimoni
7 Exploring Spatial Point Patterns in Agriculture
122(18)
M. Simona Andreano
Andrea Mazzitelli
8 Spatial Analysis of Farm Data
140(20)
Alfredo Cartone
Domenica Panzera
9 Spatial Econometric Modelling of Farm Data
160(25)
Anna Gloria Bille
Cristina Salvioni
Francesco Vidoli
10 Areal Interpolation Methods: The Bayesian Interpolation Method
185(17)
Domenica Panzera
11 Small Area Estimation of Agricultural Data
202(32)
Gaia Bertarelli
Francesco Schirripa Spagnolo
Nicola Salvati
Monica Pratesi
12 Cross-sectional Spatial Regression Models for Measuring Agricultural β-convergence
234(20)
Alfredo Cartone
Paolo Postiglione
13 Spatial Panel Regression Models in Agriculture
254(21)
Paolo Postiglione
Index 275(4)
About the Editors 279
Paolo Postiglione is Professor in Economic Statistics at University of Chieti-Pescara (Italy). He received a Ph.D. in Statistics from the University of Chieti-Pescara in 1998. His research interests mainly concern regional quantitative analysis, spatial statistics and econometrics, spatial concentration, regional economic convergence, agricultural statistics, and spatial sampling.

Roberto Benedetti is Professor in Economic Statistics at University of Chieti-Pescara (Italy). He obtained a Ph.D. in Methodological Statistics in 1994 from La Sapienza University of Rome (Italy). His current research interests focus on agricultural statistics, sample design, small area estimation, and spatial data analysis.

Federica Piersimoni is Senior Researcher at Processes Design and Frames Service in the Methodological Department of the Italian National Statistical Institute, since 1996. Her main research interests concern disclosure control and sample design.