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Spatial Data Mining Ashkan Zarnani Sadra Abedinzadeh Farzad Peyravi.

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Presentation on theme: "Spatial Data Mining Ashkan Zarnani Sadra Abedinzadeh Farzad Peyravi."— Presentation transcript:

1 Spatial Data Mining Ashkan Zarnani Sadra Abedinzadeh Farzad Peyravi

2 From DM to KDD DM is a step in KDD Extracting useful, meaningful patterns Five terabyte of data collected each day in NASA This is used to discover stars, galaxies etc.

3 Spatial Data Any kind of data that has one or more fields concerning with location, shape, area and similar attributes Point, Line, Polygon Spatial Access Methods (SAMs) Information in a GIS is organized in “layers”. For example a map will have a layer of “roads”, “train stations”, “suburbs” and “water bodies

4 Layers in GIS  People  Commercial  Governmental  Geographical  Traffic  Business

5 Spatial Queries & SAM

6 Spatial Data Mining Methods Spatial OLAP and spatial data warehousing Drilling, dicing and pivoting on multi-dimensional spatial databases Generalization & characterization of spatial objects Summarize & contrast data characteristics, e.g., dry vs. wet regions Spatial Association: Find rules like “inside(x, city) à near(x, highway)”. Spatial classification and prediction Classify countries based on climate Spatial clustering and outlier analysis Cluster houses to find distribution patterns Similarity analysis in spatial databases Find similar regions in a large set of maps

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10 SDM : State of the Art Progressive Refinement Finding Coarse Relationships and then extracting the non-candidate rules to avoid complex spatial operations for all objects g_close_to  candidates  detail process

11 SDM : State of the Art Multilevel Rules Finding rules in several levels of the concept hierarchies Continent  Country  Province  City  Zone  Block Water( flow(river, channel) – nonflow(sea, lake, ocean) )

12 SDM : State of the Art Quantitative Rules The challenge of treating continuous attributes, the sharp boundaries Fuzziness applied for realistic knowledge extraction

13 SDM : State of the Art OLAM OnLine Analytical Mining, the user can interact with the mining progress: Data sets, Concept Hierarchies, Interestingness Measures, Type of Knowledge, Representation GMQL is proposed and is being extended

14 References [1] Floris Geerts, Sofie Haesevoets and Bart Kuijpers. A Theory of Spatio-Temporal Database. Computer Science Dept., North Dakota State University (2000)A Theory of Spatio-Temporal Database. Computer Science Dept., North Dakota State University (2000) [2] Martin Ester, Hans-Peter Kriegel, Jörg Sander.Algorithms and Applications for Spatial Data Mining, Geographic Data Mining and Knowledge Discovery, 2001.[2] Martin Ester, Hans-Peter Kriegel, Jörg Sander.Algorithms and Applications for Spatial Data Mining, Geographic Data Mining and Knowledge Discovery, 2001. [3] Martin Ester, Alexander Frommelt, Hans-Peter Kriegel, Jörg Sander. Algorithms for Characterization and Trend Detection in Spatial Databases, International Conference on Knowledge Discovery and Data Mining (KDD-98)[3] Martin Ester, Alexander Frommelt, Hans-Peter Kriegel, Jörg Sander. Algorithms for Characterization and Trend Detection in Spatial Databases, International Conference on Knowledge Discovery and Data Mining (KDD-98) [4] Jan Paredaens, Bart Kuijpers. Data Models and Query Languages for Spatial Databases. ACM SIGKDD Explorations (1999)[4] Jan Paredaens, Bart Kuijpers. Data Models and Query Languages for Spatial Databases. ACM SIGKDD Explorations (1999) [5] Hans-Peter Kriegel, Thomas Brinkhoff, Ralf Schneider. Efficient Spatial Query Processing in Geographic Database Systems. VLDB (2001)[5] Hans-Peter Kriegel, Thomas Brinkhoff, Ralf Schneider. Efficient Spatial Query Processing in Geographic Database Systems. VLDB (2001) [6] Usama Fayyad, Gregory Piatetsky-Shapiro, and Padhraic Smyth. From Data Mining to Knowledge Discovery in Databases. AI MAGAZINE (1999)[6] Usama Fayyad, Gregory Piatetsky-Shapiro, and Padhraic Smyth. From Data Mining to Knowledge Discovery in Databases. AI MAGAZINE (1999) [7] Ramakrishnan Srikant, Rakesh Agrawal. Mining Quantitative Association Rules in Large Relational Tables. VLDB (1996)[7] Ramakrishnan Srikant, Rakesh Agrawal. Mining Quantitative Association Rules in Large Relational Tables. VLDB (1996) [8] Krzysztof Koperski, A Progressive Refinement Approach to Spatial Data Mining. SFU PhD Thesis (1999)[8] Krzysztof Koperski, A Progressive Refinement Approach to Spatial Data Mining. SFU PhD Thesis (1999)

15 Thanks For Your Attention!


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