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Spatial Analysis & Vulnerability Studies START 2004 Advanced Institute IIASA, Laxenburg, Austria Colin Polsky May 12, 2004 Graduate School of Geography.

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Presentation on theme: "Spatial Analysis & Vulnerability Studies START 2004 Advanced Institute IIASA, Laxenburg, Austria Colin Polsky May 12, 2004 Graduate School of Geography."— Presentation transcript:

1 Spatial Analysis & Vulnerability Studies START 2004 Advanced Institute IIASA, Laxenburg, Austria Colin Polsky May 12, 2004 Graduate School of Geography

2 International Geographical Union (IGU) Task Force on Vulnerability

3 I.What is spatially integrated social science? A. Qualitative dimensions B. Quantitative dimensions i. univariate ii. multivariate II.An example: Vulnerability to the Effects of Climate Change in the US Great Plains Outline

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5 Necessary and sufficient conditions to achieve objective of vulnerability studies: Flexible knowledge base Multiple, interacting stresses Prospective & historical Place-based: local in terms of global Explores ways to increase adaptive capacity Source: Polsky et al., 2003

6 What variables cluster in geographic space? How do they cluster? Why do they cluster? Can you imagine any variables that are not clustered?

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8 John Snow, Cholera, & the Germ Theory of Disease

9 Source: Fotheringham, et al. (2000)

10 Criticisms of quantitative social science: discovering global laws overly reductionist place can’t matter too deductive, sure of assumptions Localized quantitative analysis: exploring local variations and global trends holistic place can matter unabashedly inductive, questions assumptions

11 Source: Griffith and Layne (1999)

12 Spatial analysis (ESDA) is as valuable for hypothesis testing as for hypothesis suggesting … especially in data-sparse environments. ESDA helps explain why similar (or dissimilar) values cluster in geographic space: Social interactions (neighborhood effects) Spatial externalities Locational invariance: situation where outcome changes when locations of ‘ objects ’ change Source: Anselin, 2004

13 I.What is spatially integrated social science? A. Qualitative dimensions B. Quantitative dimensions i. univariate ii. multivariate II.An example: Vulnerability to the Effects of Climate Change in the US Great Plains Outline

14 “Steps” for Exploratory Spatial Data Analysis (ESDA): 1.Explore global/local univariate spatial effects 2.Specify & estimate a-spatial (OLS) model 3.Evaluate OLS spatial diagnostics 4.Specify & estimate spatial model(s) 5.Compare & contrast results

15 What does spatially random mean?

16 Spatial autocorrelation: Cov[y i,y j ]  0, for neighboring i, j or “values depend on geographic location” Is this a problem to be controlled & ignored or an opportunity to be modeled & explored?

17 Spatial regression/econometrics: spatial autocorrelation reflects process through regression mis-specification The “many faces” of spatial autocorrelation: map pattern, information content, spillover effect, nuisance, missing variable surrogate, diagnostic, …

18 Univariate spatial statistics

19 Source: Munroe, 2004 Spatial Weights Matrices & Spatially Lagged Variables

20 Moran’s I statistic

21 Local Moran’s I statistic

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23 Multivariate spatial statistics

24 What you know, and what you don ’ t know … y = X  +  What you know What you don ’ t know

25 OLS assumptions: Var(e i ) = 0 no residual spatial/temporal autocorrelation errors are normally distributed no measurement error linear in parameters no perfect multicollinearity E(e i ) = 0

26 Ignoring residual spatial autocorrelation in regression may lead to: Biased parameter estimates Inefficient parameter estimates Biased standard error estimates Limited insight into process spatiality

27 bias versus inefficiency Source: Kennedy (1998)

28 Alternative hypothesis: there are significant spatial effects Large-scale: spatial heterogeneity Small-scale: spatial dependence Null hypothesis: no spatial effects, i.e., y = X  +  works just fine y = X  + W  +  y =  Wy + X  +  y = X  +  i, i=0,1 y = X i  i +  i, i=0,1

29 Large-scale: spatial heterogeneity – dissimilar values clustered discrete groups or regions, widely varying size of observation units Small-scale: spatial dependence – similar values clustered “ nuisance ” = external to y~x relationship, e.g., one-time flood reduces crop yield, sampling error “ substantive ” = internal to y~x relationship, e.g., innovation diffusion, “ bandwagon ” effect

30 Which Alternative Hypothesis? observationally equivalent

31 I.What is spatially integrated social science? A. Qualitative dimensions B. Quantitative dimensions i. univariate ii. multivariate II.An example: Vulnerability to the Effects of Climate Change in the US Great Plains Outline

32 “Economic Scene: A Study Says Global Warming May Help U.S. Agriculture” 8 September 1994

33 Agricultural land value = f (climatic, edaphic, social, economic) Ricardian Climate Change Impacts Model

34 Source: Mendelsohn, et al. (1994:768) Climate Change Impacts: Agricultural Land Values

35 The US Great Plains

36 Great Plains wheat yields & seeded land abandoned: 1925-91 Source: Peterson & Cole, 1995:340

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38 Source: Polsky (2004)

39 ddd dd dd Land Value, 1992 Random?

40 Local Moran’s I Statistics, 1969-92

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46 spatial lag/GHET model: y =  Wy + X  +  i, i=0,1

47 Source: Polsky (2004)

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49 Space, Time & Scale: Climate Change Impacts on Agriculture Source: Polsky, 2004

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