A Soft Clustering Approach to Detect Socio-Ecological Landscape Boundaries Using Bayesian Networks
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Ropero, Rosa F.; Maldonado, Ana D.; Uusitalo, Laura; Salmerón Cerdán, Antonio; Rumí, Rafael; [et al.]Date
2021-04-10Abstract
Detecting socio-ecological boundaries in traditional rural landscapes is very important for the planning and sustainability of these landscapes. Most of the traditional methods to detect ecological boundaries have two major shortcomings: they are unable to include uncertainty, and they often exclude socio-economic information. This paper presents a new approach, based on unsupervised Bayesian network classifiers, to find spatial clusters and their boundaries in socio-ecological systems. As a case study, a Mediterranean cultural landscape was used. As a result, six socio-ecological sectors, following both longitudinal and altitudinal gradients, were identified. In addition, different socio-ecological boundaries were detected using a probability threshold. Thanks to its probabilistic nature, the proposed method allows experts and stakeholders to distinguish between different levels of uncertainty in landscape management. The inherent complexity and heterogeneity of the natural landscape ...
Palabra/s clave
boundary detection
Mediterranean cultural landscape
socio-ecosystems
Bayesian networks
clustering