Empirical test of an agricultural landscape model: the importance of farmer preference for risk aversion and crop complexity

Journal Publication ResearchOnline@JCU
Cooke, Ira R.;Mattison, Elizabeth H.A.;Audsley, Eric;Bailey, Alison P.;Freckleton, Robert P.;Graves, Anil R.;Morris, Joe;Queenborough, Simon A.;Sandars, Daniel L.;Siriwardena, Gavin M.;Trawick, Paul;Watkinson, Andrew R.;Sutherland, William J.
Abstract

Developing models to predict the effects of social and economic change on agricultural landscapes is an important challenge. Model development often involves making decisions about which aspects of the system require detailed description and which are reasonably insensitive to the assumptions. However, important components of the system are often left out because parameter estimates are unavailable. In particular, measurements of the relative influence of different objectives, such as risk, environmental management, on farmer decision making, have proven difficult to quantify. We describe a model that can make predictions of land use on the basis of profit alone or with the inclusion of explicit additional objectives. Importantly, our model is specifically designed to use parameter estimates for additional objectives obtained via farmer interviews. By statistically comparing the outputs of this model with a large farm-level land-use data set, we show that cropping patterns in the United Kingdom contain a significant contribution from farmer's preference for objectives other than profit. In particular, we found that risk aversion had an effect on the accuracy of model predictions, whereas preference for a particular number of crops grown was less important. While nonprofit objectives have frequently been identified as factors in farmers' decision making, our results take this analysis further by demonstrating the relationship between these preferences and actual cropping patterns.

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SAGE Open

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3

ISBN/ISSN

2158-2440

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Pages Count

16

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Publisher

Sage

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DOI

10.1177/2158244013486491