Title: Translating invasive species science into policy
1Translating invasive species science into policy
- Kimberly Burnett, University of Hawaii
2Outline
All Miconia photo credits K.
Burnett, near Hana
Coqui sushi photo credit NWRC Hilo, HI
- Miconia how much damage? Depends on policy.
- Working with nonmarket values.
- Coqui frogs damage to property values (no
policy analysis). - Market values.
- My hope elucidate the VALUE of good scientific
data in economic modeling.
3How fast does it grow?
Where K 100 trees per acre above 1800 mm/yr
rainfall line, b 30
4Where is it? Tells us potential damage
5The value of losing birds water
6Per tree damage
7Cost of control?
8Current population?
9Optimal population
10Policy comparisons
11Recap
- Population reduction optimal for most islands.
- For Oahu, close to the optimal population (just
above). Spend more today to reduce population,
then can spend less every year to keep it there
(cut the growth every year). Strategy saves on
future damages. - Better data better understanding of
growth/cost/damage functions better model of
response of population to spending better
policy less damage. - Difficulty with nonmarket valuation (true value
of endangered birds, etc.).
12Falling property prices?Hedonic pricing theory
- Wish to explain determinants of total property
price - Some things add to price, others subtract
- Structural
- Number of rooms, number of bathrooms, square
footage () - Acreage ()
- Neighborhood/Accessibility
- Proximity to public transportation, school
districts, other amenities (/) - Zoning (/)
- Environmental
- Presence of coqui (???)
- Elevation ()
- Financial
- Mortgage rates ()
- Buyer in HI ()
- Derive implicit value of each characteristic from
explicit price of property using multiple
regression analysis
13Study site and data
- 50,033 real estate transactions on Big Island,
1995-2005 - 9 main districts (see map) divided into 10
sub-districts each to control for neighborhood
characteristics - SFLA to represent structure
- Frog complaints registered to NWRC Hilo,
1997-2001 - Use GIS to identify property transactions
occurring after complaint, within 500m and 800m
of frog complaints - Financial variables
- Prices deflated using West Urban CPI
- 30 year mortgage rates from Federal Reserve
- Buyer residing in HI used to control for
information effects
14Outlier, excluded (over 100,000 ac)
15Percentage of transactions with frog complaints
prior to sale
16Puna Close-up
Frogs within 500 m
Frogs within 800 m
Transactions
17Impact on Property Price
, indicate statistical significance at 99
and 95 confidence respectively Huber-White
Robust Standard errors in parentheses.
18Recap
- Presence of frogs have a negative impact on
property value - Tells us nothing about optimal policy (dont know
the response of population to spending) - Need to build model
19Directions for future research
- Miconia
- Better data on current number of trees on each
island, growth, costs, locations - Coqui
- Real estate analysis increase years of BI data,
add Maui data - Calculate lost profits to horticultural industry
from - Reduced revenues from lost sales if infested
- Increased costs from removing frogs for
certification - Model the increase in potential viability of
brown treesnake and accompanying increase in
potential damages (biodiversity loss, power
supply and medical expenses) due to coqui prey
base
20Acknowledgements
Special thanks to Earl Campbell, Mindy Wilkinson,
and Christy Martin for answering zillions of
questions!