Contracting for Complex Products
In: Journal of public administration research and theory, Band 20, S. i41
ISSN: 1053-1858
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In: Journal of public administration research and theory, Band 20, S. i41
ISSN: 1053-1858
In: Environment and planning. B, Planning and design, Band 36, Heft 3, S. 398-416
ISSN: 1472-3417
Modeling land-use change is a prerequisite to understanding the complexity of land-use-change patterns. This paper presents a novel method to model urban land-use change using support-vector machines (SVMs), a new generation of machine learning algorithms used in classification and regression domains. An SVM modeling framework has been developed to analyze land-use change in relation to various factors such as population, distance to roads and facilities, and surrounding land use. As land-use data are generally unbalanced, in the sense that the unchanged data overwhelm the changed data, traditional methods are incapable of classifying relatively minor land-use changes with high accuracy. To circumvent this problem, an unbalanced SVM has been adopted by enhancing the standard SVMs. A case study of Calgary land-use change demonstrates that the unbalanced SVMs can achieve high and reliable performance for land-use-change modeling.