Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of...

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Local Spatial Statistics l statistics are developed to measure dependence in only a portion o area. measure the association between Xi and its neighbors up to a ific distance from site i. e statistics are well suited for: dentify “hot spots’ ssess assumptions of stationarity dentify distances beyond which no discernible association obtains. ers of Local Indicator of Spatial Association (LISA)

Transcript of Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of...

Page 1: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Local Spatial StatisticsLocal statistics are developed to measure dependence in only a portion ofthe area.

They measure the association between Xi and its neighbors up to a specific distance from site i.

These statistics are well suited for:

1. Identify “hot spots’2. Assess assumptions of stationarity3. Identify distances beyond which no discernible association obtains.

Members of Local Indicator of Spatial Association (LISA)

Page 2: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.
Page 3: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.
Page 4: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Spatial Statistics Tools

• High/Low Clustering (Getis-Ord General G)

• Incremental Spatial Autocorrelation

• Weighted Ripley K Function

• Cluster and Outlier Analysis (Anselin Local Morans I)

• Group Analysis

• Hot Spot Analysis (Getis-Ord Gi*)

Page 5: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Taxonomy of AutocorrelationType Cross-Products Differences -

Squared

Global,

Single Meas.

Moran Geary

Global

Multiple Dist

Correlogram Variogram

Local,

Multiple Dist

Gji, Gi*, Ii Cji, K1ji, K2i

Page 6: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Weighted Ripley K

• Weighted Points

• Evaluates Pattern of the Weighted Values

• Must Use Confidence Intervals

ExpectedKObservedKConfidence Env.

K FunctionClustered

Dispersed

Distance1000900800700600500400300200100

L(d)

1100

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ExpectedKObservedKConfidence Env.

K FunctionClustered

Dispersed

Distance1000900800700600500400300200100

L(d)

1200

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1000

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500

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300

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100

Page 7: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

High/Low Clustering

Page 8: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

High/Low Clustering

• To determine weights use:– Select Fixed Distance

– Polygon Contiguity

– K Nearest Neighbors

– Delauny Triangulation

• Select None for the Standardization parameter.

Page 9: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

High/Low Clustering

Quantile MapFraction Hispanic Polygon ContiguityI = 0.83, Z = 19.3

Page 10: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

High/Low Clustering

Quantile MapAverage Family SizePolygon Contiguity

I = 0.6; Z = 14.1

Page 11: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Anselin Local Moran Ii Cluster and Outlier Analysis

• Developed by Anselin (1995)

jiji

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ijjj

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jjiii

nwIE

Xn

Xx

s

ijXxsXxI

)1/()(

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Page 12: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Anselin Local Moran Ii Cluster and Outlier Analysis

• Cluster Type (COType): distinguishes between a statistically significant (0.05 level) cluster of high values (HH), cluster of low values (LL), outlier in which a high value is surrounded primarily by low values (HL), and outlier in which a low value is surrounded primarily by high values (LH).

• Unique Feature - Local Moran Ii will identify statistically significant spatial outliers (a high value surrounded by low values or a low value surrounded by high values).

Page 13: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Anselin Local Moran Ii Cluster and Outlier Analysis

Quantile MapFraction Hispanic Polygon ContiguityI = 0.83, Z = 19.3

Page 14: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Anselin Local Moran Ii Cluster and Outlier Analysis

Quantile MapMed_AgePolygon ContiguityI = 0.48, Z = 11.3

Page 15: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Getis-Ord G Statistic

• The null hypothesis is that the sum of values at all the j sites within radius d of site i is not more or less then expect by chance given all the values in the entire study area.

• The Gi statistics does not include site i in computing the sum.

• The Gi* statistic does include site i in computing the sum.

Page 16: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Gi* Statistic

Page 17: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Getis-Ord G Statistic• Interpretation

– The Gi* statistic returned for each feature in the dataset is a z-score.

• For statistically significant positive z-scores, the larger the z-score is, the more intense the clustering of high values (hot spot).

• For statistically significant negative z-scores, the smaller the z-score is, the more intense the clustering of low values (cold spot).

– The Gi* statistic is a Z score.

Page 18: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Getis-Ord G Statistic

Quantile MapFraction Hispanic Polygon ContiguityI = 0.83, Z = 19.3

Page 19: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Getis-Ord G Statistic

Quantile MapMed_AgePolygon ContiguityI = 0.48, Z = 11.3

Page 20: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Getis-Ord G Statistic vs Local Moran I

Page 21: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Problems• Correlation Problem

– Overlapping samples of j, similar local statistics.

– Problem if statistical significance is sought.

• Small Sample Problem– Statistics are based on a normal distribution, which is

unlikely for a small sample.

• Effects of Global Autocorrelation Problem– If there is significant overall global autocorrelation the

local statistics will be less useful in detecting “hot spots”.

Page 22: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Homicide rate per 100,000 (1990)

Page 23: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Log Transformation (1 + HR90)

Page 24: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Z(I) = 42.45

Page 25: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Local Indicators of Spatial Association

Page 26: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Bivariate MoranHR90 vs.

Gini index of family income inequality

Page 27: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Dawn Browning• Disturbance, space, and time: Long-term mesquite (Prosopis velutina)

dynamics in Sonoran desert grasslands (1932 – 2006)

• Located on Santa Rita Experimental Range

Page 28: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Dawn Browning• Trends in plant- and landscape-based aboveground P. velutina biomass

derived from field measurements of plant canopy area in 1932, 1948, and 2006.

Page 29: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

Moran LISA Scatter Plots

Number of P. velutina plants within 5 X 5-m quadrats

Page 30: Local Spatial Statistics Local statistics are developed to measure dependence in only a portion of the area. They measure the association between Xi and.

• Local indicator of spatial association (LISA) cluster maps and associated Global Moran’s I values for P. velutina plant density within 5-m X 5-m quadrats.