Title: Highway Hierarchies and the Efficient Provision of Road Services
1Highway Hierarchies and the Efficient Provision
of Road Services
Pacific Regional Science Conference, Portland 2002
- -David Levinson
- -Bhanu Yerra
Levinson, David and Bhanu Yerra (2002) Highway
Costs and the Efficient Mix of State and Local
Funds Transportation Research Record Journal of
the Transportation Research Board 1812 27-36.
http//nexus.umn.edu/Papers/Hierarchy.pdf
2Introduction
- Hierarchies in Highways and Governments
- Government layers responsible for a Highway class
- Scale Economies?
3Figure 1 Functional Highway Classification and
Type of Service Provided
4Theory
- A third dimension to the problem - Costs
Figure 2 Schematic representation of three
dimensional structure of highways, costs and
government layers
5Theory Contd.
- Parabolic variation of Cost with Expenditure
share by state government
6Theory Contd.
- Existing Expenditure Structure
7Theory Contd.
8Data
- Variables considered in this study
- Cost variables
- Expenditures- Capital Outlay, Maintenance and
Total Expenditure per year in a state - Expenditure Share
- Network variables
- Length of highways in a state
- Output variables
- Vehicle miles traveled (VMT) by Passenger cars
- Vehicle miles traveled (VMT) by trucks
9Data Contd.
- Instrumental Variables (IV)
- Necessity of IV model
- Percentage of VMT by a vehicle type is not
available for lower highway classes - Issues in formulating IV model
- Model generalized for all roadway classes
- Rank of a roadway class as a variable
- Zipfs law
- Model generalized for all states
10Data Contd.
- IV Model
- i represents state,
- j represents highway class, j - 1 .. 12,
- is the estimated of VMT by the passenger
cars in ith state on jth highway class, - is the estimated of VMT by the trucks in
ith state on jth highway class, - Rj represents the rank of the jth class of
highway, - vij represents the of total VMT in jth class of
highway, in ith state, - lij represents the of road length of jth
roadway class in ith state, - ?'s, ?'s, ?'s, ?'s are coefficients from the
regression
11Data Contd.
12Data Contd.
- Calculating output variables using IV model
- pi represents millions of VMT by passenger cars
in ith state, - ti represents millions of VMT by trucks in ith
state, - Vj is total vehicle miles traveled by all
vehicle types on the jth class of roads.
13Model
Table 4 Table explaining the relationship
between cost variables
14Model Contd.
- Cost variables Contd.
- e is total cost of capital outlay and
maintenance, - c is capital outlay cost,
- m is maintenance cost,
- es is total cost financed by state and federal
government, - el is total cost financed by local government,
- cs is capital outlay financed by state and
federal government, - cl is capital outlay financed by local
government, - ms is maintenance cost financed by state and
federal government, - ml is maintenance cost financed by the local
government.
15Model Contd.
- Expenditure share variables
- qs,e is expenditure share of total cost by
state and federal government, - qs,c is expenditure share of capital outlay by
state and federal government, - qs,m is expenditure share of maintenance costs
by state and federal government.
16Model Contd.
- Cost functions
- l is length of highways in a state in thousands
of miles, - p is millions of vehicle miles traveled by
passenger cars in a state, - t is millions of vehicle miles traveled by
trucks in a state. - Why Square of expenditure share by state a
variable in the model?
17Model Contd.
- Quasi Cobb-Douglas function
- as and bs are regression coefficients
- Only two regression functions since the degrees
of freedom of the problem is 4
18Model Contd.
- Why variables (p/l) and (t/pt) are used?
- Multicollinearity
- Cost functions has an optimal expenditure share
(convex function) if and only if - for total expenditure function
- for capital outlay function
19Results
Table 5 Regression results for Total expenditure
20Results Contd.
21Results Contd.
- Optimal Expenditure share
- qs,e,min is the optimal total expenditure share
by state - qs,c,min is the optimal capital outlay share by
state
Table 7 Table showing optimal vales and 95
confidence interval for state expenditure share
22Results Contd.
- Marginal and Average Costs
Table 8 Marginal and Average costs for Total
Expenditure and Capital Outlay
23Conclusion and Recommendations
- Parabolic nature of cost functions
- Most of the states are within the 95 confidence
interval of optimal expenditure share of capital
outlay - Most of the states are out of the 95 confidence
interval of optimal expenditure share of Total
expenditure - All states together can save 10 billion if all
of them are at optimal point. - Financial policies