Infrastructure and Long Run Economic Growth
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Transcript of Infrastructure and Long Run Economic Growth
Infrastructure and Long Run Economic Growth
David CanningInfrastructure and Growth:
Theory, Empirical Evidence and policy Lessons
Cape Town 29-31 May 2006
Theory
• Public goods– Raises issues of level of provision– This argument is weakening with new
technology
• Externalities to Infrastructure
• Price may be less than the marginal social benefit
Externalities
• Extent of the market– Specialization
• Contestability and pricing
• Intermediate goods– Specialization
• The big push – escape the poverty trap – Power and industrialization
Marginal social benefit– look at the effect on aggregate output
Estimation problems• Measurement
– capital stock
• Reverse causality– Income leads to investment
• Omitted Variable bias– Proxy for K or industrialization
• Bottlenecks/Threshold Effects– Functional form
Two approaches
• Estimate the marginal product of infrastructure using an aggregate production function and compare with the cost
• Test for the direction of causality between infrastructure and economic growth
Estimating The Effect of Infrastructure on Aggregate Output• Flexible functional form to allow for
infrastructure “shortages”.
• Double counting effect since infrastructure is already included in physical capital.
• Effect estimated is of reallocating capital from other sources to infrastructure.
Causality - Theory
• Infrastructure has a cost and diverts resources form other activities
• Growth effect of extra infrastructure depends on whether it is above or below its growth maximizing level – Barro 1990
Causality- estimation
• Granger Causality
• Do innovations in infrastructure lead to growth?
• Income and Infrastructure are Non-stationary
• Causality in non-stationary series
First Differences
• We could estimate relationship between infrastructure and income in first differences – produces stationarity
• But the long run effect depends on the infinite sum of the responses – high standard error.
Co integration and error correction
• We have a long run relationship
• We can write the system as a set of error correction mechanisms
i t itiit it = + + + g ya b e
ˆ
ˆ
K K1i 1i it -1 1itj=1 j=111i j 12i jit i,t - j i,t - j
K K2i 2i it-1 2itj=1 j=121i j 22i jit i,t - j i,t - j
= + + + + g g yc e
= + + + + y g yc e
Causality
• Long run causality depends only on the signs on the error correction terms
• No causality from g to y if
• sign of effect in the long run is the same as the sign of
02
2 1- /
Infrastructure
Physical Measures
• Paved Roads
• Electricity Generating Capacity
• Telephone main lines (to 1992)
• Using value of investment may be misleading due to price differences across countries
Figure 5Cost of Paved Roads
0200000400000600000800000
1000000
6 7 8 9 10
log income per capita
pric
e $/
km
Figure 6Cost of Elecricity Generating Capacity
0
10000
20000
30000
40000
50000
6 7 8 9 10
log income per capita
cost
$/k
w
Table 4Tests for Presence of Long Run Effects
• Null Hypothesis: No Long Run Effects from Infrastructure to Income –Joint Test
TEL to Y 325***(67)
EGC to Y 164***(43)
PAV to Y 211***(42)
Table 5Tests of Parameter Homogeneity for Long Run
Effects Across Countries
Null Hypothesis: Homogeneity of parameters across countries
Test of Test of Wald Test Wald Test
TEL to Y 232*** 101***(67) (67)
EGC to Y 124*** 46(43) (43)
PAV to Y 153*** 57*(42) (42)
2 2 1- /
Table 6Sign of the Effect
Group Mean Percentage of Countries Rejecting Alternative:
TEL to Y -0.014 14.9* 16.4** 16.4**N=67 (0.023)
EGC to Y 0.024 14.0 9.3 16.3*N=43 (0.028)
PAV to Y 0.027 16.7* 21.4*** 9.5N=42 (0.061)
2i 1i- /
2 1- /
2i 1i- / 0 2i 1i- / < 0 2i 1i- / > 0
Conclusion
• Evidence that Income has a long run effect on Infrastructure
• Evidence that Infrastructure has a long run effect on Income
• Evidence of Heterogeneity in the sign of the effect
• Many countries appear to be near the growth maximizing infrastructure level while some have too much and some have tool little.
Reverse Causality
• Estimation must take account of reverse causality.
• We use cointegration techniques and find significant results.
• Results with more standard instrumental variables methods are similar in pattern but estimates of infrastructure effect are not statistically significant.
Results
• In general, the rate of return to road infrastructure in most countries is the same or lower than of capital in general.
• A few fast growing economies (e.g. South Korea) exhibit infrastructure shortages and very high rates of return to roads.
• Rates of return are somewhat higher in middle income countries where the cost of road building is low.
Estimation of the Productivity of Infrastructure 1960-2000
• Estimate the Productivity Effect
• Aggregate Production function
• Includes capital, labor, education and health, as well as infrastructure (paved roads, electricity generating capacity, telephone main lines).
Old Approach
• Estimate co integration relationship – identify it as the production function
• Significant effects for infrastructure – excess returns relative to other capital
• Problem – cointegrating relationship is likely to be an average of the production function and infrastructure investment equations and the parameters are not indentified
New approach
• Identify the production function as an error correction mechanism for income
• Allows for other cointegrating relationships in the data
• Can be derived from a model of technological diffusion
Total Factor Productivity and Economic Growth
• Production function in logs
• We need a model of total factor productivity
• Steady state level of TFP
( )it it it it it h ity a k l s gs
*, 1( )it it i t ita a a
*it it ta x a
Value of Lagged TFP• Proxy lagged TFP with lagged income per
worker– Baumol 1986– Dowrick and Rogers 2002– Fagerberg 1994
• It seems better to use actual lagged TFP
– Bloom, Canning, and Sevilla 2002 – Blundell and Bond 2000– De La Fuente and Domenech 2001 – Griliches and Mairesse 1998
, 1 , 1 , 1 , 1 , 1 , 1( )i t i t i t i t g i t i ta k l s g ys
Estimating Equation
• Differencing the production function
• Estimating Equation
( ) gy a k l s git it it it s it it
( )it it it it h ity k l s hs
, 1 , 1 , 1 , 1 , 1( ( ) )t it i t i t i t i t i t ita x k l s g ys g
Interpretation
• If = 0 we have production function in first differences as in Krueger and Lindahl 2001.
• We can add factors that might affect steady state TFP - similar to growth regressions.
• Catch up term is productivity growth, not convergence of capital to its steady state level with a fixed saving rate.
Panel
• 89 countries with growth in five year intervals between 1960 and 2000 -364 observations
• Instrument current growth rates of inputs with lagged growth rates (over-identifying restriction test of validity not rejected)
• Impose same sort run and long run parameters (restriction tested and not rejected)
• Include time dummies and a range of factors that affect TFP – geography and institutions
Results - Base LineCoefficient t-statisitc
Capital 0.272*** (2.83) Labor 0.742*** (6.60) Schooling 0.152 ** (2.34) Life expectacny 0 .051 *** (3.42) Catch up 0 .146*** (3.84)
Adding Infrastructure
Coefficient t-statisitc
Telephones 0.195* (1.69)
Electricity -0.010 (0.15)
Paved raods BR -0.082 (0.98)
Conclusion
• Infrastructure is already included in capital• We are testing for excess returns to
infrastructure• Some evidence of excess returns to
telephones• No evidence of excess returns to roads
and electricity• Results are averages – country specific
effects are likely to differ