Otago University Research Archive

Spatial data mining: where to from here?

Otago University Research Archive

Show simple item record


dc.contributor.author Woodford, Brendon J en_NZ
dc.date.copyright 2003-12 en_NZ
dc.identifier.citation Woodford, B. J. (2003, December). Spatial data mining: where to from here? Presented at the 15th Annual Colloquium of the Spatial Information Research Centre (SIRC 2003: Land, Place and Space). en
dc.identifier.uri http://hdl.handle.net/10523/810
dc.description Only the abstract and references were published in the proceedings. There is no full text. en_NZ
dc.description.abstract The field of spatial data mining (Chawla, Shekhar,Wu & Ozesmi 2001), has been influenced by many other disciplines such as neural networks (Rumelhart, Hinton & Williams 1986), machine learning (Mitchell 1997), fuzzy systems (Zadeh 1965), and statistics (Sammon 1969). Recently other methods and techniques have been developed that offer some advantages over the conventional methods that have been applied in the past. For example the Support Vector Machine (SVM) (Cortes & Vapnik 1995) is one technique that can identify clusters where it may be difficult to easily separate different regions and new learning systems have now been developed that address the problem of local versus global learning models for spatial data analysis (Gilardi 2002). In this presentation we review the methods and techniques that have been previously employed for the purpose of spatial data mining and also introduce some new technologies that could be applied to this task. en_NZ
dc.format.mimetype application/pdf
dc.relation.uri http://www.business.otago.ac.nz/SIRC05/conferences/2003/16_Woodford.pdf en_NZ
dc.subject clustering en_NZ
dc.subject similarity metrics en_NZ
dc.subject machine learning en_NZ
dc.subject fuzzy systems en_NZ
dc.subject.lcsh QA76 Computer software en_NZ
dc.title Spatial data mining: where to from here? en_NZ
dc.type Conference or Workshop Item (Oral presentation) en_NZ
dc.description.version Published en_NZ
otago.date.accession 2005-11-30 en_NZ
otago.relation.pages 95 en_NZ
otago.openaccess Open
dc.identifier.eprints 107 en_NZ
dc.description.refereed Non Peer Reviewed en_NZ
otago.school.eprints Spatial Information Research Centre en_NZ
otago.school.eprints Information Science en_NZ
dc.description.references Chawla, S., Shekhar, S., Wu, W. & Ozesmi, U. (2001). “Modeling Spatial Dependencies for Mining Geospatial Data: An Introduction” In H. J. Miller & J. Han (eds), Geographic Data Mining and Knowledge Discovery. Taylor and Francis. Cortes, C. & Vapnik, V. (1995). “Support-Vector Networks” Machine Learning. 20(3): 273–297. Gilardi, N. (2002). “Local Machine Learning Models for Spatial Data Analysis” Geographical Information and Decision Analysis. 4(1): 11–28. Mitchell, M. T. (1997). Machine Learning. MacGraw-Hill. Rumelhart, D. E., Hinton, G. E. & Williams, R. J. (1986). Parallel Distributed Processing, Vols 1 and 2. The MIT Press: Cambridge, MA. Sammon, J. W. (1969). “A Nonlinear Mapping for Data Structure Analysis” IEEE Transactions on Computers. 18: 401–409. Zadeh, L. (1965). “Fuzzy Sets” Information and Control. 8: 338–353. en_NZ
otago.event.dates 1-2 December 2003 en_NZ
otago.event.place Dunedin, New Zealand en_NZ
otago.event.type conference en_NZ
otago.event.title 15th Annual Colloquium of the Spatial Information Research Centre (SIRC 2003: Land, Place and Space) en_NZ

Full-text options 

This item appears in the following Collection(s)

Show simple item record