Communicating Climate Mitigation and Adaptation Efforts in American Cities
Abstract
:1. Introduction
- The degree to which specific climate policies are under the purview of urban governance. We anticipate that cities will discuss “traditional” policies such as land use more frequently than more novel policy areas such as climate resiliency.
- The interest of mayors to claim credit for “incubated” policy innovation (rather than reacting to problems presented) [33] means that mayors may be more likely to talk about climate mitigation than adaptation.
- The political and environmental profile of each specific city will shape climate discussions. Specifically, we anticipate that:
- (a)
- Given the high level of political polarization around the term “emissions” in the United States [34], we expect that mayors in more liberal areas will issue more emissions-related press releases, while climate risk will be less influential.
- (b)
- At the same time, however, cities that face clear risks from climate may be forced to discuss adaptation and prioritize climate resiliency. Thus, we expect that highly vulnerable cities will engage in more agenda setting on resilience, as compared to less vulnerable cities.
2. Data and Methods
2.1. Press Release Corpus
2.2. A Semi-Supervised Approach to Extracting Mitigation and Adaptation Discussion
Estimating the SeededLDA
2.3. Correlates of Climate Communication in Cities
2.3.1. Statistical Model
3. Results
3.1. How Are Cities Discussing Adaptation and Mitigation Efforts?
3.1.1. Climate Change Resiliency and Adaptation
3.1.2. Emissions and Transportation
3.1.3. Renewables and Energy Efficiency
3.1.4. Waste and Water Management
3.1.5. Land Use
3.2. To What Extent Are Cities Discussing Climate Adaptation and Mitigation Efforts?
3.2.1. Comparing Discussion of Mitigation and Adaptation
3.2.2. Statistical Results
4. Discussion
- We demonstrate that partisanship effects hold across a range of climate policy domains. Partisanship is particularly important in explaining variation in discussion of very politically polarizing policy areas such as GHG emissions reduction, while less so in other areas.
- Our results clarify the relationship between climate risk and discussion of policies. Whereas Boussalis et al. [29] find a link between vulnerability and mentions of climate change in general, we demonstrate that this relationship is largely restricted to discussions about climate change resiliency rather than other areas such as emissions, energy and land use.
- Moreover, we find that this relationship between partisanship and city discussion of resiliency is conditioned on the level of projected climate risk: Liberal cities with higher than average projected climate risk are substantially more likely to discuss climate resiliency in a given month. These results also suggest that climate risk only has a direct, positive effect on the likelihood of city discussion of resiliency.
Author Contributions
Funding
Conflicts of Interest
Appendix A. Details of the SeededLDA
- Each of the k topics are drawn from a topic distribution by
- The term distribution for each topic is represented by
- For each i word in each d document, :
- Randomly sample a topic .
- Choose a word from .
- : the latent topic assignment for word i in document d
- : word i in document d
- : all words other than
- : prior distribution over words
- : all latent assignments other than
- : prior distribution over documents
- : the total number of times word w has been assigned to topic k, but not including the current word under consideration.
- : the total number of times topic k is assigned in document d, but not including the current word under consideration.
Appendix B. Full List of Seed Words
Topic Label | Seed Words |
---|---|
Climate resiliency | resilience, urban_resilience, resilience_climate, resiliency, coastal_resiliency, |
adaptation, climate_adaptation, flood_protection, flood_control, flood_protection, | |
drought_response, drought_tolerant, green_roof, green_roofs | |
Transportation | electric_vehicle, electric_vehicles, electric_car, electric_cars, electric_buses, |
hybrid_buses, hybrid_vehicles, hybrid_vehicle, rail, rail_transit, | |
light_rail, vehicle_emissions, gas_emissions, diesel_emissions, cycling, | |
bicycling, bike, bikes, bike_share, bikeshare, | |
bike_lanes, bike_walk, walking_bicycling, transportation, public_transportation | |
Renewable energy | renewable_energy, clean_energy, solar_energy, alternative_energy, wind_energy, |
wind_power, renewable, renewables, clean_renewable, renewable_sources, | |
solar, solar_panels, solar_power, solar_installations, rooftop_solar, | |
install_solar, installing_solar, solar_wind, wind_solar | |
Energy efficiency | energy_efficiency, energy_efficient, reduce_energy, energy_conservation, reducing_energy, |
conserve_energy, reduced_energy, saving_energy, conserving_energy, smart_grid, | |
green_building, green_buildings, efficient_buildings, inefficient_heating, retrofit, | |
retrofits, retrofitting, retrofitted, energy_retrofits, efficient_appliances, | |
green_infrastructure, led_lighting, led_lights, led_light, led_bulbs | |
Waste management | landfill, landfills, landfill_gas, waste_management, waste_reduction, |
zero_waste, reduce_waste, reducing_waste, food_waste, green_waste, | |
organic_waste, compost, composting, recycle, recycling, | |
recycled, recycling_program, recyclable, recyclables, increase_recycling, | |
plastic, plastic_bag, plastic_bags | |
Water | water_conservation, conserve_water, conserving_water, water_use, water_usage, |
water_consumption, water_supply, water_treatment, storm_water, stormwater, | |
stormwater_management, manage_stormwater, green_stormwater, rainwater, | |
recycled_water, save_water, stormwater_runoff, wastewater, wastewater_treatment, | |
rainwater_harvesting, water_reclamation, rain_garden, rain_gardens | |
Land use | greening, greening_projects, green_space, green_spaces, tree_canopy, |
shade_trees, plant_trees, tree_planting, trees_planted, planting_trees, | |
heat_island, community_garden, community_gardens, urban_gardening, urban_farming, | |
urban_farm, urban_farms, urban_agriculture, sustainable_food, local_food, | |
farmers_market, farmers_markets, farmer_market, local_farmers |
Appendix C. Full Statistical Results
Labels | Estimate | Lower 50 | Upper 50 | Lower 95 | Upper 95 |
---|---|---|---|---|---|
Intercept | −2.872 | −3.158 | −2.574 | −3.733 | −2.063 |
Climate risk * | 0.148 | −0.014 | 0.313 | −0.351 | 0.642 |
Obama 2008 * | 0.825 | 0.637 | 1.007 | 0.301 | 1.368 |
Climate risk × Obama 2008 * | 0.207 | 0.059 | 0.352 | −0.222 | 0.648 |
Mayor: Republican | 0.155 | −0.200 | 0.510 | −0.920 | 1.238 |
Govt. Type | 0.469 | 0.154 | 0.785 | -0.439 | 1.377 |
Median Income * | 0.121 | −0.043 | 0.287 | −0.379 | 0.607 |
Unemployment * | −0.391 | −0.585 | −0.192 | −0.992 | 0.181 |
ln(Population) * | 0.479 | 0.317 | 0.639 | 0.001 | 0.961 |
Local Temp. Anomaly * | −0.018 | −0.062 | 0.025 | −0.147 | 0.109 |
ln(Press releases) * | 1.146 | 1.060 | 1.231 | 0.904 | 1.402 |
Labels | Estimate | Lower 50 | Upper 50 | Lower 95 | Upper 95 |
---|---|---|---|---|---|
Intercept | −2.786 | −3.028 | −2.533 | −3.533 | −2.065 |
Climate risk * | −0.092 | −0.231 | 0.047 | −0.510 | 0.319 |
Obama 2008 * | 0.386 | 0.232 | 0.530 | −0.037 | 0.854 |
Climate risk × Obama 2008 * | −0.003 | −0.123 | 0.122 | −0.374 | 0.352 |
Mayor: Republican | −0.313 | −0.636 | 0.000 | −1.240 | 0.651 |
Govt. Type | 0.692 | 0.420 | 0.972 | −0.137 | 1.499 |
Median Income * | 0.480 | 0.341 | 0.617 | 0.082 | 0.890 |
Unemployment * | 0.112 | −0.046 | 0.270 | −0.353 | 0.578 |
ln(Population) * | 0.332 | 0.200 | 0.464 | −0.063 | 0.740 |
Local Temp. Anomaly * | −0.094 | −0.135 | −0.052 | −0.219 | 0.027 |
ln(Press releases) * | 1.005 | 0.929 | 1.081 | 0.787 | 1.229 |
Labels | Estimate | Lower 50 | Upper 50 | Lower 95 | Upper 95 |
---|---|---|---|---|---|
Intercept | −4.161 | −4.407 | −3.904 | −4.944 | −3.444 |
Climate risk * | 0.500 | 0.359 | 0.641 | 0.100 | 0.905 |
Obama 2008 * | 0.415 | 0.262 | 0.563 | −0.018 | 0.873 |
Climate risk x Obama 2008 * | 0.391 | 0.270 | 0.508 | 0.047 | 0.740 |
Mayor: Republican | −0.575 | −0.926 | −0.223 | −1.591 | 0.441 |
Govt. Type | 0.294 | 0.022 | 0.560 | −0.493 | 1.087 |
Median Income * | 0.316 | 0.178 | 0.455 | −0.101 | 0.726 |
Unemployment * | −0.149 | −0.315 | 0.026 | −0.665 | 0.340 |
ln(Population) * | 0.080 | −0.044 | 0.205 | −0.295 | 0.448 |
Local Temp. Anomaly * | −0.046 | −0.113 | 0.024 | −0.241 | 0.146 |
ln(Press releases) * | 1.359 | 1.233 | 1.481 | 1.013 | 1.739 |
Labels | Estimate | Lower 50 | Upper 50 | Lower 95 | Upper 95 |
---|---|---|---|---|---|
Intercept | −2.057 | −2.299 | −1.818 | −2.757 | −1.368 |
Climate risk * | 0.121 | −0.014 | 0.253 | −0.264 | 0.518 |
Obama 2008 * | 0.497 | 0.352 | 0.641 | 0.080 | 0.918 |
Climate risk × Obama 2008 * | 0.137 | 0.020 | 0.250 | −0.202 | 0.480 |
Mayor: Republican | 0.166 | −0.128 | 0.469 | −0.703 | 1.050 |
Govt. Type | 0.647 | 0.386 | 0.911 | −0.121 | 1.414 |
Median Income * | 0.238 | 0.106 | 0.370 | −0.158 | 0.641 |
Unemployment * | −0.127 | −0.282 | 0.033 | −0.597 | 0.341 |
ln(Population) * | 0.317 | 0.182 | 0.454 | −0.090 | 0.725 |
Local Temp. Anomaly * | 0.000 | −0.038 | 0.037 | −0.108 | 0.107 |
ln(Press releases) * | 1.066 | 0.997 | 1.134 | 0.873 | 1.269 |
Appendix D. City-Level Political Variables
City | Mayoral Political | Obama 2008 |
---|---|---|
Affiliation | County Vote Share | |
Albuquerque | Dem | 59.87428 |
Anaheim | Rep | 47.15672 |
Anchorage | Dem | 55 |
Arlington | Rep | 43.77575 |
Atlanta | Dem | 67.22124 |
Aurora | Rep | 55.69 |
Austin | Dem | 64.1431 |
Baltimore | Dem | 56.22684 |
Bellevue | Dem | 70.44357 |
Boston | Dem | 77.49261 |
Buffalo | Dem | 53.1801 |
Chandler | Rep | 44.04097 |
Charleston | Rep | 53.52972 |
Charlotte | Dem | 61.99956 |
Chicago | Dem | 76.0988 |
Cincinnati | Dem | 52.1006 |
Cleveland | Dem | 68.50075 |
Colorado Springs | Rep | 28.86306 |
Columbus | Dem | 58.99576 |
Corpus Christi | Rep | 47.40098 |
DC | Dem | 92.86323 |
Dallas | Dem | 57.49293 |
Denver | Dem | 75.30575 |
Detroit | Dem | 74.17706 |
Durham | Dem | 75.77658 |
El Paso | Dem | 28.51637 |
Fort Lauderdale | Dem | 67.18507 |
Fort Worth | Rep | 43.77575 |
Fresno | Rep | 49.23617 |
Greensboro | Ind | 58.91477 |
Henderson | Dem | 32.94983 |
Honolulu | Dem | 69.8 |
Houston | Dem | 50.50201 |
Indianapolis | Rep | 63.84264 |
Kansas City | Dem | 62.11355 |
Las Vegas | Rep | 32.94983 |
Lexington | Dem | 51.74049 |
Lincoln | Dem | 51.5293 |
Long Beach | Dem | 68.77505 |
Los Angeles | Dem | 68.77505 |
Louisville | Dem | 55.50475 |
Madison | Dem | 72.95841 |
Miami | Rep | 58.08415 |
Milwaukee | Ind | 67.53441 |
Minneapolis | Dem | 63.61659 |
Miramar | Ind | 67.18507 |
Naperville | Ind | 54.68229 |
Nashville | Dem | 59.8885 |
New Orleans | Dem | 79.32489 |
New York | Dem | 85.7 |
Newark | Dem | 75.53838 |
Norfolk | Dem | 71.14592 |
Oakland | Dem | 78.58155 |
Oklahoma City | Rep | 41.59015 |
Orlando | Dem | 58.99895 |
Philadelphia | Dem | 83.06292 |
Phoenix | Dem | 44.04097 |
Pittsburgh | Dem | 57.1997 |
Plano | Rep | 36.74483 |
Portland, OR | Dem | 77.21143 |
Providence | Dem | 66.85299 |
Raleigh | Rep | 57.1133 |
Riverside | Rep | 50.76531 |
Sacramento | Dem | 58.43311 |
San Antonio | Dem | 52.42997 |
San Diego | Rep | 53.86855 |
San Francisco | Dem | 84.35345 |
San Jose | Dem | 69.60246 |
Santa Ana | Dem | 47.15672 |
Santa Clarita | Dem | 68.77505 |
Savannah | Rep | 56.97231 |
Seattle | Dem | 70.44357 |
St Louis | Dem | 83.67237 |
St Paul | Dem | 66.17217 |
Stockton | Rep | 54.06414 |
Syracuse | Dem | 58.54225 |
Tampa | Dem | 53.1 |
Toledo | Dem | 64.54888 |
Tucson | Dem | 52.54557 |
Tulsa | Rep | 37.77336 |
Virginia Beach | Rep | 49.21687 |
Wichita | Rep | 42.40284 |
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Topic Label | Keywords |
---|---|
Climate resiliency | sandy resiliency build_back program resilient resilience homeowners |
infrastructure communities construction | |
Emissions | climate_change plan emissions change climate_action climate greenhouse_gas |
sustainability goals summit | |
Transportation | new transportation transit street project vehicles system use service station |
Renewable energy | energy program solar menino energy_efficiency residents green power |
renewable_energy new | |
Energy efficiency | energy buildings energy_efficiency building sustainability energy_star program |
challenge office_sustainability project | |
Waste management | recycling green waste facility hannemann environmental hawaii businesses |
project energy | |
Water | water program residents home customers help use one heat low |
Land use | community program local communities support residents green projects |
sustainability neighborhood | |
Topic 0 | new_yorkers de_blasio council_member nyc blasio administration communities |
bill_de bill intro | |
Topic 1 | one work re first people like get us time great make |
Topic 2 | think going question know lot inaudible people get well obviously |
Topic 3 | business new jobs companies economic_development technology |
center businesses company world | |
Topic 4 | people us think know change would time country state thank |
Topic 5 | neighborhood_place information ave community _p services place louisville_metro |
call call_485 | |
Topic 6 | housing new development project building affordable_housing community |
construction residents neighborhood | |
Topic 7 | million budget year funding new state percent would billion program |
Topic 8 | year community park youth center program downtown first neighborhood new |
Topic 9 | department new public services council plan process work development planning |
Topic 10 | new community work support need one make plan help future |
Variable [Source] | Obs | Mean | Std. Dev | Min | Max |
---|---|---|---|---|---|
Climate risk [43] | 3027 | 0.43 | 0.92 | 0.20 | 0.80 |
County Vote Share, Obama 2008 (%) [46] | 3168 | 62.06 | 12.24 | 28.52 | 92.86 |
Mayor: Republican [29] | 3038 | 0.18 | 0.39 | 0.00 | 1.00 |
Type of Government (Mayor-council) [29] | 3168 | 0.72 | 0.45 | 0.00 | 1.00 |
County Median Household Income [47] | 3168 | 54.35 | 10.56 | 34.80 | 93.85 |
County Unemployment (%) [47] | 3168 | 6.11 | 1.43 | 3.60 | 9.90 |
County Total Population [47] | 3168 | 1.60 | 2.20 | 0.24 | 10.00 |
Local Temp. Anomaly [45] | 3168 | 2.19 | 3.39 | −15.30 | 18.00 |
City Press Releases | 3168 | 20.47 | 23.33 | 1.00 | 335.00 |
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Boussalis, C.; Coan, T.G.; Holman, M.R. Communicating Climate Mitigation and Adaptation Efforts in American Cities. Climate 2019, 7, 45. https://doi.org/10.3390/cli7030045
Boussalis C, Coan TG, Holman MR. Communicating Climate Mitigation and Adaptation Efforts in American Cities. Climate. 2019; 7(3):45. https://doi.org/10.3390/cli7030045
Chicago/Turabian StyleBoussalis, Constantine, Travis G. Coan, and Mirya R. Holman. 2019. "Communicating Climate Mitigation and Adaptation Efforts in American Cities" Climate 7, no. 3: 45. https://doi.org/10.3390/cli7030045
APA StyleBoussalis, C., Coan, T. G., & Holman, M. R. (2019). Communicating Climate Mitigation and Adaptation Efforts in American Cities. Climate, 7(3), 45. https://doi.org/10.3390/cli7030045