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dc.contributor.authorWoodford, Brendon Jen_NZ
dc.date.available2011-04-07T03:02:03Z
dc.date.copyright2005-11en_NZ
dc.identifier.citationWoodford, B. J. (2005). Rule extraction from spatial data using local learning techniques (pp. 125–130). Presented at the 17th Annual Colloquium of the Spatial Information Research Centre (SIRC 2005: A Spatio-temporal Workshop).en
dc.identifier.urihttp://hdl.handle.net/10523/731
dc.description.abstractWe are now in the fourth decade where techniques such as fuzzy systems, statistics, neural networks and machine learning have all been developed and more recently applied for the purpose of spatial data mining. However these methods act as global learning models and subsequently may not be able to learn the subtle nature of these types of data sets. Local learning models such as the Support Vector Machine (SVM) and a more recent method such as that proposed by (Gilardi 2002) address the problem of global versus local learning but fail to offer many solutions as to what underlying patterns may exist within the data set in order to better understand the data set. In this paper we propose the Evolving Fuzzy Neural Network (EFuNN) as a model for a local learning mechanism for the purpose of predicting rainfall within a region of Switzerland and also use this model to generate rules and then to visualise these rules that may help to describe any patterns that may exist within the data set.en_NZ
dc.format.mimetypeapplication/pdf
dc.relation.urihttp://www.business.otago.ac.nz/SIRC05/conferences/2005/14_woodford.pdfen_NZ
dc.subjectlocal learningen_NZ
dc.subjectsimilarity metricsen_NZ
dc.subjectmachine learningen_NZ
dc.subjectfuzzy systemsen_NZ
dc.subjectneurocomputingen_NZ
dc.subjectRule Extractionen_NZ
dc.subject.lcshQA76 Computer softwareen_NZ
dc.titleRule extraction from spatial data using local learning techniquesen_NZ
dc.typeConference or Workshop Item (Paper)en_NZ
dc.description.versionPublisheden_NZ
otago.date.accession2006-08-10en_NZ
otago.relation.pages125-130en_NZ
otago.openaccessOpen
dc.identifier.eprints350en_NZ
dc.description.refereedNon Peer Revieweden_NZ
otago.school.eprintsSpatial Information Research Centreen_NZ
otago.school.eprintsInformation Scienceen_NZ
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otago.event.dates24-25 November 2005en_NZ
otago.event.placeDunedin, New Zealanden_NZ
otago.event.typeconferenceen_NZ
otago.event.title17th Annual Colloquium of the Spatial Information Research Centre (SIRC 2005: A Spatio-temporal Workshop)en_NZ
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