TY - THES T1 - Spatial econometric methods in agricultural economics : selected case studies in German agriculture A1 - Schmidtner,Eva Y1 - 2013/09/26 N2 - The location of agricultural activities is determined by location factors that are spatially heterogeneous, such as climate and soil; for the spatial distribution of some agricultural specialties, spatial dependence, i.e., beneficial and self-enhancing effects resulting from a concentration of these agricultural activities, might also play a role. Thus, the dimension ?space? might be of importance in analysing agricultural research settings. This cumulative dissertation consists of three articles addressing current research questions on the spatial distribution of agricultural activities and agricultural profitability in Germany. To account for the geographic location of attributes, spatial econometric analysis tools are used. The first article addresses the determinants of the uneven spatial distribution of organic farming in Germany. In addition to traditional location factors, positive agglomeration effects might also influence the spatially heterogeneous concentration of organic agriculture. Conventional farmers might be more likely to convert to organic farming given an easy communication with organic farmers located nearby and a geographically close and strong institutional network. First, a theoretical model explaining the decision of a farmer to convert from conventional to organic agriculture is established. Next, secondary data at the German county level are analysed by using spatial lag models. Data on organic farming refer to the year 2007. The results suggest that agglomeration effects matter in organic agriculture. For the previous analysis, aggregated data at a relatively low spatial resolution are used, which might lead to results that are artificially generated through the process of data aggregation. The second article addresses the question whether results can be confirmed at different spatial levels, assuming that agglomeration effects are important in organic farming. The results of spatial lag models are compared at two measurement scales, the German counties and community associations. Secondary data are also used in this analysis; for the organic sector, 2007 data are considered. The analysis indicates that essential factors determining the decision to convert from conventional to organic farming are sustained at different spatial resolutions. The results at the lower spatial resolution are shown to be not artificially generated through the aggregation process in this case, which strengthens the relevance of the previous study. The third publication assesses the effects of different indicators of soil characteristics on the estimation results of a Ricardian analysis. The study draws on data from the official farm census conducted in 1999 and on weather data from the German National Meteorological Service at the county level for the time period 1961-1990. Additionally, different soil data bases are considered to control for soil quality. The results of spatial error models suggest that rental prices are determined by climate and non-climate factors. Accounting for different methods of measuring soil quality does not influence the results of the analysis. To estimate the effects of changing climatic conditions on future land rents, data from the regional climate model REMO for the time period 2011-2040 are used. The models show that projected climate levels will have an overall positive but spatially heterogeneous effect on the income from agriculture in Germany. The empirical analyses presented illustrate that spatial econometrics can offer appropriate tools for analysing agriculture. In all three cases theoretical considerations and diagnostic tests for spatial dependence suggest using spatial analysis techniques. The use of alternative specifications of the spatial neighbourhood matrix further supports the stability of results. The general approach and methods used could be translated to other issues in agricultural economics such as potential agglomeration effects in hog production or the future impact of climatic factors on the spatial distribution of viticulture. Thus, spatial econometrics might offer an interesting approach to various spatial research questions in agricultural economics, in addition to the applications that were selected for this thesis. KW - Biologischer Landbau KW - Ricardische Analyse CY - Hohenheim PB - Kommunikations-, Informations- und Medienzentrum der Universität Hohenheim AD - Garbenstr. 15, 70593 Stuttgart UR - http://opus.uni-hohenheim.de/volltexte/2013/870 ER -