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Meta-Analysis of Wetland Values: Modeling Spatial Dependencies Randall S. Rosenberger Oregon State University Meidan Bu Microsoft.

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Presentation on theme: "Meta-Analysis of Wetland Values: Modeling Spatial Dependencies Randall S. Rosenberger Oregon State University Meidan Bu Microsoft."— Presentation transcript:

1 Meta-Analysis of Wetland Values: Modeling Spatial Dependencies Randall S. Rosenberger Oregon State University Meidan Bu Microsoft

2 Overview  Spatial relationships in metadata  Spatial econometric modeling  Application to wetland valuation studies in North America  Sensitivity analysis to intra-study dependence  Conclusions

3 Research questions  Are wetland values correlated across space?  What is the spatial relationship of wetland welfare estimates?  geographic closeness  ecological linkages  socio-economic characteristics of local people

4 Spatial Relationships  Proximity matters – location, location, location Hedonic values increase with proximity to positive amenities Hedonic values decrease with proximity to disamenities  Spatial heterogeneity matters (50km radius) Previous wetland values MRA results Marginal values increase with local GDP Marginal values increase with population density Marginal values decrease with resource density

5 Statistical Problems Locational aspects lead to:  Spatial heterogeneity Metadata augmentation – GDP, population & resource density  Omitted variable problem  Spatial dependence Spatial lag – correlation in dependent variable  Omitted variable problem – biased, inconsistent estimates Spatial error – correlation in errors  Uncorrelated error problem – inefficient estimates

6 Spatial Modeling

7 The Empirical Model

8 Spatial Weight Matrix Definition

9 Spatial Weight Matrices  W defined as Threshold (Euclidean) distances Ecological similarity Economic similarity

10 Threshold Distance W  Any two sites within a threshold are considered neighbors

11 Ecological similar neighbors  Any two sites located in the same boundary are considered neighbors  The USGS Hydrologic Unit 2 (HUC2) unit (n=21)

12 Economic similar neighbors  Any two sites sharing the same socioeconomic attributes (i.e., latent demand) are considered neighbors local education level population density within 50km radius county level average personal income local GDP  Multivariate hierarchical clustering analysis local education level Group observations into clusters (n=40) that have similar values of measured variables

13 Multivariate hierarchical clusters

14 An economic similarity cluster

15 Wetland Metadata  Wetland welfare estimates from primary studies conducted in North America through 2011 80 studies, 163 value estimates  Explanatory variables  Study attributes  Valuation methodology  Wetland ecosystem type  Ecological functions valued  Geographic and socio-economic characteristics

16 Results – Methodology, Ecosystem Spatial model OLSThreshold distance Ecological similarity Economic similarity 50km lag100km lag150km lag Estimate Intercept-3.72 -3.71 * -3.80 * -3.93 * -4.90 ** -3.98 * Wetland area (ha) - log scaled-0.12-0.08-0.13 ** -0.12 * -0.05-0.12 * Economic literature dummy1.19 ** 1 0.90 * 0.94 * 0.95 * * 0.99 * Regional study dummy0.670.610.85 ** 0.82 * 0.140.61 Valuation methodology (Travel Cost Method as the reference group) CVM1.66 ** 2.01 *** 2.08 *** 2.06 *** 1.84 *** 1.60 ** Choice Experiment3.14 ** 3.54 *** 3.49 *** 3.52 *** 3.39 *** 3.34 *** Hedonic Price7.13 *** 6.80 *** 7.24 *** 7.40 *** 6.71 *** 6.86 *** Market Price1.99 ** 2.13 ** 2.13 ** 2.28 ** 2.20 ** 1.81 ** Replacement Cost4.27 *** 4.26 *** 4.22 *** 4.45 *** 4.49 *** 3.99 *** Production Function1.201.95 ** 1.85 ** 1.89 ** 1.85 ** 1.49 * Wetland ecosystem type (Estuarine as the reference group) Riverine2.00 ** 1.001.75 ** 1.82 ** 1.81 ** 1.62 ** Palustrine0.500.390.570.600.760.55 Lacustrine0.940.881.09 * 0.950.820.91

17 Results – Ecosystem Functions Spatial model OLSThreshold distance Ecological similarity Economic similarity 50km lag100km lag150km lag Estimate Ecological function valued Preservation2.89 ** 2.77 ** 3.00 *** 3.08 *** 3.04 *** 2.82 ** Restoration1.491.741.921.841.921.42 Water quality1.852.15*2.17*1.95*1.88*1.78 Flood control & water supply1.301.161.511.531.561.30 Amenity-2.69**-2.64***-2.52**-2.46**-2.32**-2.64*** Recreational fishing & hunting2.58**2.28**2.54**2.62**2.58**2.34** Non-consumptive recreation3.26***3.05***3.34***3.42***3.11***3.01*** Biodiversity1.371.471.651.641.681.46 Commercial fishing & hunting1.471.041.481.471.531.28

18 Results – Geographic/Socioeconomic Spatial model OLSThreshold distance Ecological similarity Economic similarity 50km lag100km lag150km lag Estimate Geographic and socio-economic information Ramsar Site dummy0.190.460.370.350.080.00 Wetland area in 50km radius (ha)/1000 - log scaled-0.26 * -0.30 ** -0.29 ** -0.30 ** -0.27 ** -0.27 ** Population in 50km radius -log scaled0.40 ** 0.26 * 0.27 * * 0.25 * 0.38 ** Education (county level)0.06 ** 0.07 *** 0.06 *** 0.06 ** 0.08 *** 0.06 ** Distance to city (km)0.07 ** 0.10 *** 0.08 *** 0.08 *** 0.08 *** 0.08 *** -0.002 ** -0.003 *** -0.003 *** -0.003 *** -0.003 *** -0.003 ***

19 Results – Test Statistics Spatial model OLSThreshold distance Ecological similarity Economic similarity 50km lag100km lag150km lag Estimate N163 R2R2 0.50 0.1760.1430.1380.1790.095 Likelihood ratio test statistic1710994 P-value for the likelihood ratio test <0.000*** 0.001 *** 0.003 *** 0.003 *** 0.036 ** AIC726 710 717 718 719 723

20 Recap – Spatial MRAs  Positive spatial correlation for all three neighborhood criteria  Threshold distance neighbors are strongest correlation Spatial correlation exists as far as 150km  Economic similarity defined neighbors has the weakest correlation  Covariate estimates are robust to spatial dependence, although magnitude varies some

21 Intra-study Correlation  What about confounding intra-study correlation?  An unbalanced panel meta-dataset with  163 observations from 80 wetland sites  39 wetland sites report multiple measures (max = 16 obs.)

22 Bootstrap Sensitivity Analysis  Bootstrap draw one observation per wetland site  Form 1000 sub-datasets  Repeat spatial MRAs  Test the significance of spatial correlation for every combination  Count the number of significant LLR results  Test the robustness of the spatial correlation

23 Sensitivity Analysis Results Weight Matrix Significant LLR tests @ p ≤ 0.05 Binomial test Significant LLR tests @ p ≤ 0.10 Binomial test 50 km threshold933p < 0.00984p < 0.00 100 km threshold908p < 0.00957p < 0.00 150 km threshold747p < 0.00874p < 0.00 Ecological similarity49p = 0.58107p = 0.24 Economic similarity12p = 1.0045p = 1.00

24 Recap – Sensitivity Analysis  Significant evidence of spatial correlation exists in threshold distance defined neighbors  Inconclusive evidence of spatial correlation in ecological and economic defined neighbors Ecological similarity – HUC2 may be too large Economic similarity – intra-study correlation

25 Conclusions  Spatial correlation exists, although partial effects are robust to specifications  Threshold distance is robust to intra-study correlation   Future issues: Other spatial models (e.g., spatial error specification)? What are the implications for international benefit transfers? Are results consistent for other spatially dependent metadata?

26 Q&A We hope you enjoyed this tour of spatial econometric modeling in an MRA framework THANK YOU!

27 The Parking Lot - Descriptives MeanMeanSt. Dev.MinMax Wetland welfare estimate/ha/year in 2010 USD – log scaled 5.85 5.85 2.65 2.65 -1.50 -1.50 11.81 Wetland area (ha) - log scaled8.468.464.024.020.050.0516.73 Economic literature dummy0.630.630.480.4801 Regional study dummy0.420.420.500.5001

28 The Parking Lot - Descriptives MeanMeanSt. Dev.MinMax Valuation methodology (binary variables) CVM0.240.240.430.4301 Choice Experiment0.040.040.190.1901 Travel Cost0.190.190.390.3901 Hedonic Price0.050.050.220.2201 Market Price0.280.280.450.4501 Replacement Cost0.090.090.280.2801 Production Function0.120.120.330.3301

29 The Parking Lot - Descriptives MeanMeanSt. Dev.MinMax Wetland ecosystem type (binary variables) EstuarineEstuarine0.400.400.490.4901 RiverineRiverine0.100.100.310.3101 Palustrine0.390.390.490.4901 Lacustrine0.110.110.310.3101

30 The Parking Lot - Descriptives MeanMeanSt. Dev.MinMax Ecological function valued (binary variables) Preservation0.140.140.350.3501 Restoration0.050.050.220.2201 Water quality0.070.070.260.2601 Flood control & water supply0.100.100.310.3101 AmenityAmenity0.090.090.280.2801 Recreational fishing & hunting0.230.230.420.4201 Non-consumptive recreation0.120.120.330.3301 Biodiversity0.070.070.260.2601 Commercial fishing & hunting0.150.150.360.3601

31 The Parking Lot - Descriptives MeanMeanSt. Dev.MinMax Geographic and socio-economic characteristics Ramsar Site dummy0.290.290.460.4601 Wetland area in 50km radius (ha)23683224403385783930 Population in 50km radius61695797088556613700000 Education (county level)23.669.269.261145.4 Distance to city (km)14.8056.020496

32 The Parking Lot – Best Fit Model  We also isolated the best fit (i.e. largest LLR) single observation model from among the 1000 bootstrapped samples  These results follow: Inferences remain consistent across models Magnitudes of effects are not robust to model specification  Likely due to small observations – n = 80

33 Best Fit Single Observation Models Spatial lag model OLSThreshold distance weight Ecological similarity weight Economic similarity weight 50km lag100km lag150km lag Estimate Intercept0.62 -3.76 3.21 3.28 -1.56 3.72 Wetland area (ha) - log scaled-0.30***-0.21-0.27***-0.25***-0.22-0.30*** Economic literature dummy-0.36-0.58-0.54-0.720.380.37 Regional study dummy1.39*0.930.99*0.90*-0.361.05* Valuation methodology (Travel Cost Method as the reference group) CVM0.071.231.39*1.36*1.290.54 Choice Experiment4.85**5.31***3.84***4.56***1.284.06** Hedonic Price11.68***10.51***12.29***13.49***10.21***10.75*** Market Price-0.011.89*2.65**3.17**1.622.73** Replacement Cost3.80**3.49***2.57**3.32***2.41*3.38** Production Function-0.071.72*2.08**2.35**0.481.21

34 Best Fit Single Observation Models Spatial lag model OLSThreshold distance weight Ecological similarity weight Economic similarity weight 50km lag100km lag150km lag Estimate Ecological function valued Preservation6.64**6.74***2.59**2.91**5.41**1.67 Restoration4.035.41**2.46*2.128.72***-1.34 Water quality3.865.61**1.870.826.23**-0.24 Flood control & water supply4.054.61**2.022.206.83**1.83 Amenity-1.65-1.23-7.26***-7.68***-1.61-7.17*** Recreational fishing & hunting7.15**7.38***2.78**3.18**6.96**1.70 Non-consumptive recreation7.41**7.65***3.41***3.76***7.13***2.71** Biodiversity8.06**9.34***5.66***6.27***7.85***4.06*** Commercial fishing & hunting6.06**4.79**0.540.456.68**-0.09

35 Best Fit Single Observation Models Spatial lag model OLSThreshold distance weight Ecological similarity weight Economic similarity weight 50km lag100km lag150km lag Estimate Geographic and socio-economic information Ramsar Site dummy-0.70-0.11-0.53-0.48-0.65-0.86 Wetland area in 50km radius (ha)/1000 - log scaled-0.12-0.16-0.21*-0.22**-0.23*-0.14 Population in 50km radius -log scaled0.110.17-0.07-0.100.010.13 Education (county level)0.010.05*0.06**0.04*0.020.01 Distance to city (km)0.050.09***0.07**0.07**0.000056*0.04 Education * City-0.002-0.003***-0.002**-0.002** -0.000002 **-0.001

36 Best Fit Single Observation Models Spatial lag model OLSThreshold distance weight Ecological similarity weight Economic similarity weight 50km lag100km lag150km lag Estimate N80 R-square64.47% Rho0.220.270.290.230.16 LLR test statistic13.8225.8327.808.1610.39 P-value for the LLR test<0.000***<0.000***<0.000***<0.000 ** *<0.000*** AIC371.33 339.09 334.81 332.84 365.16 360.82


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