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Spatial analysis of invasive alien plant distribution patterns and processes using Bayesian network-based data mining techniques

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dc.contributor.advisor Nel, Willem A. J.
dc.contributor.advisor Hendrick, Jimmy
dc.contributor.advisor Jordaan, Maarten
dc.contributor.advisor Labuschagne, Jean-Pierre
dc.contributor.author Dlamini, Wisdom Mdumiseni Dabulizwe
dc.date.accessioned 2016-06-24T12:51:38Z
dc.date.available 2016-06-24T12:51:38Z
dc.date.issued 2016-03
dc.identifier.citation Dlamini, Wisdom Mdumiseni Dabulizwe (2016) Spatial analysis of invasive alien plant distribution patterns and processes using bayesian network-based data mining techniques, University of South Africa, Pretoria, <http://hdl.handle.net/10500/20692> en
dc.identifier.uri http://hdl.handle.net/10500/20692
dc.description.abstract Invasive alien plants have widespread ecological and socioeconomic impacts throughout many parts of the world, including Swaziland where the government declared them a national disaster. Control of these species requires knowledge on the invasion ecology of each species including how they interact with the invaded environment. Species distribution models are vital for providing solutions to such problems including the prediction of their niche and distribution. Various modelling approaches are used for species distribution modelling albeit with limitations resulting from statistical assumptions, implementation and interpretation of outputs. This study explores the usefulness of Bayesian networks (BNs) due their ability to model stochastic, nonlinear inter-causal relationships and uncertainty. Data-driven BNs were used to explore patterns and processes influencing the spatial distribution of 16 priority invasive alien plants in Swaziland. Various BN structure learning algorithms were applied within the Weka software to build models from a set of 170 variables incorporating climatic, anthropogenic, topo-edaphic and landscape factors. While all the BN models produced accurate predictions of alien plant invasion, the globally scored networks, particularly the hill climbing algorithms, performed relatively well. However, when considering the probabilistic outputs, the constraint-based Inferred Causation algorithm which attempts to generate a causal BN structure, performed relatively better. The learned BNs reveal that the main pathways of alien plants into new areas are ruderal areas such as road verges and riverbanks whilst humans and human activity are key driving factors and the main dispersal mechanism. However, the distribution of most of the species is constrained by climate particularly tolerance to very low temperatures and precipitation seasonality. Biotic interactions and/or associations among the species are also prevalent. The findings suggest that most of the species will proliferate by extending their range resulting in the whole country being at risk of further invasion. The ability of BNs to express uncertain, rather complex conditional and probabilistic dependencies and to combine multisource data makes them an attractive technique for species distribution modeling, especially as joint invasive species distribution models (JiSDM). Suggestions for further research are provided including the need for rigorous invasive species monitoring, data stewardship and testing more BN learning algorithms. en
dc.format.extent 1 electronic resources (xvi, 301 leaves) : illustrations, maps en
dc.language.iso en en
dc.subject Bayesian network en
dc.subject Data mining en
dc.subject Directed acyclic graph en
dc.subject Ecology en
dc.subject Geographic information system en
dc.subject Habitat en
dc.subject Invasive alien plant en
dc.subject Knowledge discovery en
dc.subject Machine learning en
dc.subject Species distribution model en
dc.subject.ddc 581.62096887
dc.subject.lcsh Invasive plants -- Ecology -- Swaziland -- Case studies en
dc.subject.lcsh Alien plants -- Swaziland -- Case studies en
dc.subject.lcsh Plants -- Dispersal -- Swaziland -- Case studies en
dc.subject.lcsh Spatial analysis (Statistics) en
dc.subject.lcsh Bayesian field theory en
dc.subject.lcsh Acyclic models en
dc.subject.lcsh Data mining -- Data processing en
dc.subject.lcsh Directed graphs en
dc.title Spatial analysis of invasive alien plant distribution patterns and processes using Bayesian network-based data mining techniques en
dc.type Thesis en
dc.description.department Environmental Sciences en
dc.description.degree D. Phil. (Environmental Science) en


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