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Statistical Bases for Map Reconstructions and Comparisons

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Comparing Maps Over Time. Accuracy of a 14th Century Map. Leader Image Change in Great Britain ... Comparing Maps Among Sub-samples. Things People Fear, M v. F ... – PowerPoint PPT presentation

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Title: Statistical Bases for Map Reconstructions and Comparisons


1
Statistical Bases for Map Reconstructions and
Comparisons
  • Jerry Platt
  • May 2005

2
Preliminaries
3
Outline
  • Motivation
  • Do Different Maps Differ?
  • Methods
  • Singular-Value Decomposition
  • Multidimensional Scaling and PCA
  • Mantel Permutation Test
  • Procrustean Fit and Permu. Test
  • Bidimensional Regression
  • Working Example
  • Locational Attributes of Eight URSB Campuses

4
Motivation
  • Comparing Maps Over Time
  • Accuracy of a 14th Century Map
  • Leader Image Change in Great Britain
  • Where IS Wall Street, post-9/11?
  • Comparing Maps Among Sub-samples
  • Things People Fear, M v. F
  • Face-to-Face Comparisons
  • Comparing Maps Across Attributes
  • Competitive Positioning of Firms
  • Chinese Provinces Human Dev. Indices

5
Accuracy of a 14th Century Map
http//www.geog.ucsb.edu/tobler/publications/ pdf
_docs/geog_analysis/Bi_Dim_Reg.pdf
6
http//www.mori.com/pubinfo/rmw/two-triangulation-
models.pdf
7
http//igeographer.lib.indstate.edu/pohl.pdf
8
Things People Fear, F v. M
http//www.analytictech.com/borgatti/papers/borgat
ti 200220-20A20statistical20method20for20co
mparing.pdf
9
Face-to-Face Comparisons
http//www.multid.se/references/Chem20Intell20La
b20Syst2072,2012320(2004).pdf
10
http//www.gsoresearch.com/page2/map.htm
11
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12
Methods
  • Eigen-Analysis and Singular-Value Decomposition
  • Multidimensional Scaling Principal Comps.
  • Mantel Permutation Test
  • Procrustean Fit and Permutation Test
  • Bidimensional Regression

13
Eigen-analysis
  • C an NxN variance-covariance matrix
  • Find the N solutions to C? ??
  • ? the N Eigenvalues, with ?1 ?2
  • ? the N associated Eigenvectors
  • C LDL, where
  • L matrix of ?s
  • D diagonal matrix of ?s

14
Singular Value Decomposition
  • Every NxP matrix A has a SVD
  • A U D V
  • Columns of U Eigenvectors of AA
  • Entries in Diagonal Matrix D Singular Values
  • SQRT of Eigenvalues of either AA or AA
  • Columns of V Eigenvectors of AA

15
SVD
16
Principal Component Analysis
  • A is a column-centered data matrix
  • A U D V
  • V Row-wise Principal Components
  • D Proportional to variance explained
  • UD Principal Component Scores
  • DV Principle Axes

17
Multidimensional Scaling
  • A is a column-centered dissimilarity matrix
  • B
  • B U D V
  • B XX, where X UD1/2
  • Limit X to 2 Columns
  • ? Coordinates to 2d MDS

18
Given Dissimilarity Matrices A and B
A Random Permutation Test
N! Permutations 37! 1.4E43 8! 40,320
19
Permutation Tests
Observed Test Statistic TS 25 Correct Of 37
SB. Is 25 Significantly 18.5?
Ho TS 18.5 HA TS 18.5
P .069 P .05 Do Not Reject Ho
Permute List rerun
20
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21
http//www.entrenet.com/groedmed/greekm/mythproc.
html
22
Centering Scaling
Rotation Dilation to Min ?(?2)
Mirror Reflection
http//www.zoo.utoronto.ca/jackson/pro2.html
23
Procrustean Analysis
  • Two NxP data configurations, X and Y
  • XY U D V
  • H UV
  • OLS ? Min SSE tr ?(XH-Y)(XH-Y)
  • tr(XX) tr(YY) -2tr(D)
  • tr(XX) tr(YY) 2tr(VDV)

24
OLS Regression
  • Y X? ?
  • Y Xb e
  • X UDV
  • b VrD-1UrY, where r first r columns (NP)
  • b (XX)-1XY
  • b VrVr ?
  • Estimated Y values Ur UrY

25
Bidimensional Regression
  • (Y,X) Coordinate pair in 2d Map 1
  • Y ?0 ?0X
  • (A,B) Coordinate pair in 2d Map 2
  • EA ?1 ?1 -?2 X ?1
  • EB ?1 ?2 ?1 Y ?2
  • ?1 Horizontal Translation
  • ?2 Vertical Translation
  • ? Scale Transformation SQRT(?12 ?22)
  • ? Angle Transformation TAN-1(?2 / ?1 ) 1800




Iff ?1 26
Angle of rotation around origin (0,0)
Horizontal Vertical Translation
Although r 1, differ in location, scale,
and angles of rotation around origin (0,0)
Scale transform, with ?
1 if expansion
27
Working Example
  • Eight URSB Campuses
  • RD, BK, TO, RC, SA, RV, SD, TA
  • Data Sources
  • Locations
  • Housing Attributes
  • Tapestry Attributes
  • Data Analyses

28
Eight URSB Campuses
29
87.5 miles
88.1 miles
30
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31

32
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33
EXAMPLE Eight URSB Campuses
34
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35
BK
RC
RD
RV
TO
SA
TA
SD
36
and if DISTANCES available, but COORDINATES
Unavailable?
  • Treat Distance Matrix as Dissimilarity Matrix
  • Apply Multidimensional Scaling
  • Apply the two-dimension solution as if it
    represents latitude and longitude coordinates

37
Distance Estimates Vary
But Not Significantly
38
MDS RepresentationInput D Output 2d
D 8x8
39
Errors appear to be quite small BUT is
there a way to test if errors are STAT SIGNIF ?
RD
RV
RC
TA
BK
SD
SA
TO
40
Mantel Test
41
Procrustean TestMDS Map Recreation
CONCLUDE Near-perfect Map Recreation
42
Driving Distances
Do these differ significantly from linear
distances?
PRACTICAL
STATISTICAL
43
DriveD Driving DistancesEight URSB Locations
Multidimensional Scaling, with 2-dimension
solution
44
RD
RV
RC
TA
SA
BK
SD
TO
45
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46
Bidimensional RegressionAB on YX
47
PROTEST Comparison
Bidimensional Regression
Procrustean Rotation
48
Housing
49
Tapestry (ESRI)
50
Map Coordinates as Explanatory Variables in
Linear Models
51
Incremental Tests
So Map Coordinates seem sufficient as predictors
52
Proxy Measures of lat-longin Linear Model
Translations Transforms Reduce ?8 And ? R2
53
Robust criterion would help here Min (Med(?2))
54
Is There a Linear RelationshipBetween Housing
and Tapestry Data?
Bidimensional Regression
r 0.5449
Must Standardize Data
55
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56
Its Still a 3-d World
57
(No Transcript)
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