SNAPScapes: Using Geodemographic Segmentation to Classify the Food Access Landscape
Abstract
:1. Introduction
2. Previous Studies and Background
2.1. Food Access
2.2. Geodemographic Segmentation
3. Data and Methods
3.1. Data
3.2. Methods
3.2.1. Data Pre-Processing
3.2.2. k-Means Analysis
4. Results and Discussion
Cluster Mapping and Food Desert Comparison
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Variable Name | Source | Used in Final? | Description |
---|---|---|---|
MedAge | ACS 2015 (US Census Bureau, Washington DC, USA, 2015) | Yes | Median age of block group (of total pop.) |
MedIncome | Yes | Median income of block group (of total households) | |
PcHHBelowPov | Yes | Percent of households below the federal poverty line | |
PcHH60plus | No | Percent of households with a person over age 60 | |
PcSNAPHH | Yes | Percent of households receiving SNAP benefits | |
PcSNAPHHdisability | No | Percent of households receiving SNAP with a disabled person | |
PcHHrentocc | Yes | Percent of households who rent their homes | |
PcHHNoVehicle | Yes | Percent of households who do not own a car | |
PcWhite | No | Percent of total population that identifies as white | |
PcBlack | No | Percent of total population that identifies as black | |
PcHisp | No | Percent of total population that identifies as Hispanic | |
PcAsian | No | Percent of total population that identifies as Asian | |
PcNatAm | No | Percent of total population that identifies as Native American | |
PcTwoRaces | No | Percent of total population who identify themselves as belonging to two races | |
PcUnemploy | Yes | Percent of work eligible persons (over age 16) who are unemployed | |
PcNotInLabor | Yes | Percent of work eligible persons (over age 16) who are not in the workforce | |
PcCommuteCar | No | Percent of workers who commute by car | |
PcCommuteCP | No | Percent of workers who commute in a carpool | |
PcWalkBike | Yes | Percent of workers who walk or bike to their job | |
PcTransit | Yes | Percent of workers who commute via public transit | |
PcSingPar | Yes | Percent of households with children that are headed by a single parent of any gender | |
Walkscore | Walk Score™ (Washington, USA, 2007) | Yes | Index describing walkability of neighborhoods, on a 0–100 scale |
Min_mqdist_fs | MapQuest (Colorado, USA, 1967) | Yes | Minimum distance from block group’s population-weighted centroid to a full-service grocery store |
Min_mqdist_concom | Yes | Minimum distance from block group’s population-weighted centroid to a convenience store or combo grocery | |
Min_mqdist_fm | Yes | Minimum distance from block group’s population-weighted centroid to a farmer’s market | |
Count_pp_fs | Yes | Total number of full-service stores within USDA food deserts range, divided by total pop. | |
Count_pp_concom | Yes | Total number of convenience stores/combo groceries within USDA food desert range, divided by total pop. | |
Count_pp_fm | Yes | Total number of farmer’s markets within USDA food desert range, divided by total pop. |
Variable | Metric | Cluster 0 n = 1238 | Cluster 1 n = 762 | Cluster 2 n = 139 |
---|---|---|---|---|
Median age | Average | 45.6222 | 39.7852 | 43.5741 |
Standard Deviation | 7.1335 | 7.1066 | 7.4038 | |
Percent below poverty line | Average | 12.1730 | 24.7355 | 15.4179 |
Standard Deviation | 6.7422 | 9.0593 | 8.6482 | |
Percent receiving SNAP benefits | Average | 11.1408 | 24.4011 | 15.8322 |
Standard Deviation | 6.8400 | 10.1031 | 11.2097 | |
Percent renter-occupied housing | Average | 18.0459 | 32.8212 | 22.7337 |
Standard Deviation | 8.7674 | 11.1320 | 10.9185 | |
Percent without a vehicle | Average | 3.5004 | 8.3587 | 4.9459 |
Standard Deviation | 3.7080 | 6.5698 | 5.1283 | |
Percent unemployed | Average | 4.4598 | 7.7809 | 5.1404 |
Standard Deviation | 3.0318 | 4.7352 | 3.8901 | |
Percent not in labor force | Average | 41.0416 | 42.9901 | 42.6050 |
Standard Deviation | 10.0047 | 9.9739 | 10.2158 | |
Percent commuting with transit | Average | 0.2047 | 0.2251 | 0.4108 |
Standard Deviation | 0.9129 | 0.9991 | 2.0100 | |
Percent commuting by walking or biking | Average | 1.2325 | 1.5924 | 1.6391 |
Standard Deviation | 2.9092 | 3.3704 | 3.7216 | |
Median income | Average | $44,229.78 | $41,258.28 | $40,265.20 |
Standard Deviation | 24,712.32 | 20,285.45 | 14,684.70 | |
Walkscore | Average | 0.8296 | 2.4108 | 1.5827 |
Standard Deviation | 3.0493 | 7.3969 | 5.6897 | |
Minimum distance to a full-service store | Average | 7.0337 | 5.7553 | 5.6433 |
Standard Deviation | 4.7185 | 3.7983 | 3.0613 | |
Count of full-service stores in range | Average | 9.9935 | 7.6024 | 12.8921 |
Standard Deviation | 10.1896 | 7.5365 | 11.7036 | |
Minimum distance to a convenience store | Average | 3.2766 | 3.2279 | 2.5184 |
Standard Deviation | 2.4705 | 2.1410 | 1.5077 | |
Count of convenience stores in range | Average | 45.2318 | 38.6076 | 64.8921 |
Standard Deviation | 39.0225 | 31.7546 | 56.8120 | |
Minimum distance to a farmer’s market | Average | 17.9316 | 16.3320 | 10.9763 |
Standard Deviation | 12.3904 | 10.2971 | 5.8327 | |
Count of farmer’s markets in range | Average | 0.7060 | 0.5801 | 0.7914 |
Standard Deviation | 1.0645 | 0.8661 | 0.8689 | |
Percent single parents | Average | 7.8368 | 17.9333 | 11.4207 |
Standard Deviation | 6.2778 | 9.6056 | 9.0809 |
Variable | Metric | Cluster 3 n = 139 | Cluster 4 n = 961 | Cluster 5 n = 2083 | Cluster 6 n = 767 |
---|---|---|---|---|---|
Median age | Average | 40.7928 | 33.1637 | 40.5831 | 39.8280 |
Standard Deviation | 8.2748 | 8.2138 | 8.4934 | 9.3201 | |
Percent below poverty line | Average | 14.4240 | 36.6012 | 11.3437 | 13.1438 |
Standard Deviation | 11.3427 | 14.4803 | 8.4311 | 9.6833 | |
Percent receiving SNAP benefits | Average | 15.0163 | 34.9327 | 10.1078 | 11.6977 |
Standard Deviation | 14.8804 | 16.8864 | 8.8113 | 10.3026 | |
Percent renter-occupied housing | Average | 36.2608 | 68.3857 | 32.1779 | 35.5951 |
Standard Deviation | 23.0801 | 17.0172 | 20.3527 | 22.3081 | |
Percent without a vehicle | Average | 5.9877 | 20.7033 | 4.3440 | 5.1724 |
Standard Deviation | 6.3230 | 13.1125 | 4.8434 | 5.9454 | |
Percent unemployed | Average | 5.4701 | 10.2192 | 4.9098 | 5.4216 |
Standard Deviation | 4.0155 | 6.4191 | 3.5562 | 3.8776 | |
Percent not in labor force | Average | 37.3674 | 40.2774 | 34.6687 | 36.4324 |
Standard Deviation | 11.3758 | 13.4624 | 11.2841 | 12.4056 | |
Percent commuting with transit | Average | 0.8092 | 4.6457 | 0.7550 | 0.8128 |
Standard Deviation | 2.2915 | 7.1180 | 2.0540 | 2.3157 | |
Percent commuting by walking or biking | Average | 1.4185 | 5.8811 | 1.5386 | 1.6616 |
Standard Deviation | 2.8334 | 9.5058 | 3.4404 | 3.8422 | |
Median income | Average | $51,608.18 | $47,538.04 | $51,040.18 | $50,699.21 |
Standard Deviation | 26,604.81 | 27,103.28 | 28,406.72 | 27,928.46 | |
Walkscore | Average | 16.6043 | 38.0187 | 16.3874 | 15.9387 |
Standard Deviation | 17.9698 | 20.1399 | 17.6144 | 16.6794 | |
Minimum distance to a full-service store | Average | 0.8806 | 1.5394 | 1.2000 | 3.1583 |
Standard Deviation | 0.5567 | 0.9583 | 0.5673 | 1.4061 | |
Count of full-service stores in range | Average | 1.0504 | 1.5963 | 1.0307 | 0.9622 |
Standard Deviation | 1.1526 | 1.9967 | 1.2877 | 1.5821 | |
Minimum distance to a convenience store | Average | 0.4393 | 1.0421 | 0.7356 | 2.2044 |
Standard Deviation | 0.2736 | 0.7551 | 0.3998 | 1.1596 | |
Count of convenience stores in range | Average | 4.2230 | 9.3413 | 3.5607 | 3.7106 |
Standard Deviation | 4.3083 | 6.0916 | 3.9686 | 5.6612 | |
Minimum distance to a farmer’s market | Average | 2.4976 | 9.1647 | 8.3929 | 13.9345 |
Standard Deviation | 4.6527 | 8.5506 | 7.8369 | 12.2955 | |
Count of farmer’s markets in range | Average | 0.0504 | 0.2539 | 0.0696 | 0.0443 |
Standard Deviation | 0.3246 | 0.5966 | 0.2947 | 0.2616 | |
Percent single parents | Average | 15.4316 | 32.8695 | 12.9241 | 14.4575 |
Standard Deviation | 11.8546 | 17.3353 | 10.2853 | 11.5918 |
Cluster Label | Classification | Priority Level | Total Area (mi2) | Area Overlap in mi2 (%) | |||
---|---|---|---|---|---|---|---|
LILA at 1 mi Urban, 10 mi Rural | LILA at 0.5 mi Urban, 10 mi Rural | LILA at 1 mi Urban, 20 mi Rural | LILA with Vehicle Access at 20 mi | ||||
0 | Rural | Low | 24,873.3 | 248.6 (1.0%) | 248.6 (1.0%) | 72.3 (0.3%) | 482.4 (1.94%) |
1 | Rural | Medium | 14,808.4 | 244.5 (1.7%) | 244.5 (1.7%) | 84.9 (0.6%) | 824.0 (5.56%) |
2 | Rural | Low | 2490.1 | 21.5 (0.9%) | 21.5 (0.9%) | 13.5 (0.5%) | 78.8 (3.2%) |
3 | Urban | Low | 255.4 | 20.6 (8.1%) | 29.4 (11.5%) | 20.6 (8.1%) | 21.4 (8.4%) |
4 | Urban | High | 913.9 | 199.5 (21.8%) | 350.2 (38.3%) | 199.5 (21.8%) | 295.6 (32.3%) |
5 | Urban | Low | 4607.6 | 281.0 (6.1%) | 365.6 (7.9%) | 281.0 (6.1%) | 234.1 (5.1%) |
6 | Urban | Medium | 1773.6 | 234.1 (13.2%) | 158.5 (8.9%) | 234.1 (13.2%) | 103.8 (5.9%) |
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Major, E.; Delmelle, E.C.; Delmelle, E. SNAPScapes: Using Geodemographic Segmentation to Classify the Food Access Landscape. Urban Sci. 2018, 2, 71. https://doi.org/10.3390/urbansci2030071
Major E, Delmelle EC, Delmelle E. SNAPScapes: Using Geodemographic Segmentation to Classify the Food Access Landscape. Urban Science. 2018; 2(3):71. https://doi.org/10.3390/urbansci2030071
Chicago/Turabian StyleMajor, Elizabeth, Elizabeth C. Delmelle, and Eric Delmelle. 2018. "SNAPScapes: Using Geodemographic Segmentation to Classify the Food Access Landscape" Urban Science 2, no. 3: 71. https://doi.org/10.3390/urbansci2030071