Publication | Open Access
The application of expert knowledge in Bayesian networks to predict soil bulk density at the landscape scale
24
Citations
25
References
2015
Year
Bayesian StatisticEngineeringMachine LearningLand UseLand CoverLand DegradationPhysical GeographyMining MethodsEarth ScienceSocial SciencesGeographic Information SystemsGeospatial MappingData ScienceGeographic Information SciencesDigital Soil MappingLand Use PlanningBayesian Hierarchical ModelingLandscape ProcessesCartographySoil ClassificationGeographyBayesian NetworkPrecision Soil MappingLand Cover MapBayesian NetworksExpert KnowledgeSoil Bulk DensitySoil ModelingRemote SensingNaïve Bayesian NetworkStatistical Inference
Summary This paper investigates the use of expert knowledge as a resource for digital soil mapping. To do this, three models of topsoil soil bulk density ( D b ) were produced: (i) a random forest model formulated and cross‐validated with the limited data available (which served as the benchmark), (ii) a naïve Bayesian network ( BN ) where the conditional probabilities that define the relations between D b and explanatory landscape variables were derived from expert knowledge rather than data and (iii) a ‘hierarchical’ BN where model structure was also defined by expert knowledge. These models were used to generate spatial predictions for mapping topsoil D b at a landscape scale. The results show that expert knowledge‐based models can identify the same spatial trends in soil properties at a landscape scale as state‐of‐the‐art mapping algorithms. This means that they are a viable option for soil mapping applications in areas that have limited empirical data.
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