Download presentation
Presentation is loading. Please wait.
Published byKory Franklin Modified over 9 years ago
1
1 Smart Crime Pattern Analysis Using the Geographical Analysis Machine Ian Turton, Stan Openshaw, James Macgill CCG, University of Leeds email: ian@geog.leeds.ac.uk
2
2 Crime Pattern Analysis Automated Smart Easy to use Easy to understand
3
Being SMART is not just a matter of methodology but also involves access, usability, relevancy, and result communication factors
4
4 Residential Crimes
5
5 Street Crime Locations
6
6
7
7
8
8 Spot any patterns? Mapping the raw data is virtually useless unless the patterns are blindingly obvious
9
9 GAM & GEM
10
10 GAM creates a density surface of weighted evidence of clustering which is used to suggest locations, intensities, and patterns of clustering that exists on the map
11
11
12
12
13
13
14
14 GAM Results Surface
15
15 GAM results for Street Crime
16
16 GAM results for Street Crime II
17
17 That could be random chance! Each run examines 433,714 different circles So you might expect some circles by random chance GAM lets you test that
18
18 Random results
19
19
20
20 But why not build the search for local association into the circle search used in GAM?
21
21 Building a Geographical Explanations Machine- GEM/1 Explanation here is to be interpreted in the traditional geographical sense of there being a possibly interesting localized spatial association between clusters and certain GIS data layers Maps do not cause patterns to appear BUT they do contain clues as to the processes that do if only we were clever enough to spot and decode them
22
22 Rock A Rock B Rock C Rock D Geology Map
23
23 railway 2 km buffer polygon
24
24 Combined Geology and Railway Buffer Map Rock A Rock B Rock C Rock D 2 km
25
25 Combinations of Attributes If we have 8 attributes with 10 classes each There are 3160 permutations of 2 classes from 80 compared with 24,040,016 if any 5 are used Smart searches are essential –use GA to generate possible combinations of interest
26
26 Back to Baltimore Visit the US Census Bureau Web site Download Census variables at block level Aggregate to block groups Split variables to quartiles Export as text files from arcview
27
27 House Value
28
28 Ethnicity
29
29 Old People
30
30 Run GEM Similar web interface simple ASCII text files same visual output I have used chloropleth maps as psuedo coverages you could use other information –distance to main roads –neighbourhood watch areas
31
31 Residential Crime (Mode 1)
32
32 Residential Crime (mode 3)
33
33 Residential Crimes The most common combination of coverages for clusters of residential crime high house values lots of old people
34
34 Street Crime
35
35 Street Crime II
36
36 Related Coverages For both base populations the most commonly related coverages are high house values high proportion of white residents
37
37 If you want to try out Smart Analysis on the Web http://www.ccg.leeds.ac.uk/smart/intro.html
38
38 Future developments GAM and GEM fail eventually as more coverages and time periods are added The CCG is currently developing new methods of driving the search process –Genetic Algorithms –Swarm based optimization
39
Further Info: Email stan@geog.leeds.ac.uk ian@geog.leeds.ac.uk j.macgill@geog.leeds.ac.uk http://www.ccg.leeds.ac.uk/smart/intro.html
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.