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Lecture 2 A macroeconomic model assuming pollution to be proportional to output Based on first part of Chapter 4. Pollution is assumed to be proportional to output. The model explains consumption growth in China in recent years but not in the long-run. Parameters of the utility function are estimated. A measure of Green GDP is provided. Possibility of cleaning up (scrubbing) is ignored. 1 Modeling philosophy I build a macroeconomic model under the assumption that the market economy in China is efficient and use it to describe the Chinese macro-economy and to explain Chinese macro-economic data. This model is constructed by assuming that a central planner is maximizing an objective function for China. Deriving a macroeconomic model for China by optimization has had a long history , including the work of Kwan and Chow (1996) and Chow and Kwan (1996), among others. In our model we assume a Cobb-Douglas production function. Yt = atKtγLt1-γ where at , Kt, and Lt denote respectively total factor productivity in period t, capital stock at the beginning of period t and labor in period t. As is fairly customary in macroeconomic modeling the economy is composed of a number of representative consumers and the same number of representative firms. This construction assumes away the problem of aggregating the behavior of heterogeneous consumers and firms, but has been found useful in modeling certain important features of a macroeconomy. It enables us to use the same symbol to denote a variable for one consumer, one producer or for the aggregate economy. 2 I begin by assuming that a central planner maximizes a utility function in each period t sub to a budget constraint: national saving Kt+1 – (1-d)Kt, d being the rate of depreciation of the capital stock at the beginning of period t, equals income Yt minus consumption Ct. For each period t this constraint for Kt+1 is introduced by using a Lagrange multiplier λt+1 to form a Lagrange expression as given below. The utility function is log Ct + θ log(M-et) where et denotes emission or pollution in period t and M is the maximum amount of pollution that ca be tolerated. It thus has two parameters θ and M, with θ measuring the relative importance clean environment M-e as compared with consumption. In chapter 1 and the old chapter 4 assumed output Y to be generated by a Cobb-Douglas production function atKtγLt1-γ eδ with emission e as a factor of production. In this chapter we choose a different production functi by assuming emission to be proportional to output, namely, et = cYt, and Yt = atKtγLt1-γ. Un these assumptions δet/δKt = c γYt/Kt = γet/Kt. The problem of the central planner is to maximize the sum of discounted future utilities in all future periods subject to the above constraint for each period, β being 3 the discount factor. Assumptions of the macromodel • Assume that a central planner maximizes a utility function in each period t subject to a budget constraint: • national saving Kt+1 – (1-d)Kt = Yt - Ct • Emission e not in production function, • et = cYt, and Yt = atKtγLt1-γ, implying • δet/δKt = cγYt/Kt = γet/Kt. 4 Brief explanation of the Lagrange method for dynamic optimization – 2 steps • 1. Start with the constrained maximization problem max r(x,u) subject to x=f(u). • Set up the Lagrange expression • L = r(x,u) –λ[x-f(u)]. • Differentiate L with respect to x, u and λ to obtain three first-order conditions. • Solve these equations for the three variables. 5 step 2 - Generalize above procedure to many periods • Objective function is a weighted sum of r(x(t),u(t)) over time t. • Constraints are x(t+1) = f(x(t),u(t)). • We call x the state variable and u the control variable. • Set up the Lagrange expression • L = Σt βt{r(x(t),u(t)) –λt+1[x(t+1)- f(x(t),u(t))]} and differentiate to obtain first-order conditions to solve for the u’s and x’s. 6 Dynamic optimization problem L = ∑t { βt [ log Ct + θ log (M – et) – β λt+1 [ Kt+1-(1-d )Kt - Yt + Ct]} (1) Differentiation of (1) with respect to the control variable Ct and the state variable Kt period t yields Ct-1 = βλt+1 (2) -θ γetKt-1/(M - e) – λt + (1-d) βλt+1 + γYK-1βλt+1 = 0 (3) Using (2) to substitute C for λ in (3) gives -θγetKt-1/(M- e) – β-1Ct-1-1 + Ct-1[(1-d) + γYK-1] = 0 (4) which can be rewritten as Ct = [1-d + γYK-1]/ [θ γ etKt-1/(M- e) + β-1Ct-1-1] (5) 7 Model without pollution overestimates consumption growth rate in China If the pollution term does not appear in the utility function or if θ = 0, equation (5) will reduced to Ct = [1-d + γYtKt-1] Ct-1 (6) Let us examine whether this model without pollution can explain the evolution of consu in China. Empirically the ratio of output Y to capital K for China has a mean of .2768 f period 1978-2005 (See Table 3.2 below). If γ is about 0.6 and d is 0.04 (see Chow(2007, c 5) for estimates of γ and the depreciation rate d), the coefficient in square brackets on t right-hand side of (6) is 0.96 + 0.6 times 0.2768 = 1.126. This means that consumption w by about 12.6 percent per year. In fact, historically the mean growth rate of consumptio the period 1979-2005 is only 9.068 percent. This is an indication that the macro-econom model of this section without taking pollution into account does not fit the data well. 8 Pollution term explains decline in rate of consumption growth Ct/Ct-1 if the disutility of pollution does not matter or if θ = 0, equation (5) is reduced to equation (6). Since the contribution of the pollution term in the denominator of equation (5) is positive, the disutility of pollution makes consumption smaller than it would be otherwise. To put this poin in terms of the ratio Ct/Ct-1 we divide both sides of equation (5) by Ct-1 to obtain Ct/Ct-1 = [1-d + γYK-1]/ [θ γ et Ct-1Kt-1/(M- e) + β-1] (7) Equation (7) shows that the rate of growth of consumption is made smaller than otherwise by the positive pollution term θ γ et Ct-1Kt-1/(M- e) in its denominator if we assume the ratio Y/K in its numerator to be given. In the course of economic development there is a tendency for th pollution term in the denominator to increase because of the increase in e, unless this effect is somehow offset by a reduction of the ratio Ct-1/Kt. The data for China to be presented in the next section will show that the ratio Ct/Ct-1 has been indeed declining. Our model provides an explanation of this decline, although there are other reasonable models that can also provide 9 an explanation. Model pinpoints the importance of controlling pollution for sustainable economic development • Because et cannot exceed the limit M, under the assumption Yt = et/c, Yt cannot exceed M/c. Thus economic growth eventually stops according to this model, unless we revise this assumption and allow technological innovation to lower the ratio et/Yt. In the framework of this model economic development can be sustained only by solving the environmental problems, or by reducing the ratio c = e/Y so as not to allow e to reach the limit M. Thus this model pinpoints the importance of controlling pollution for sustainable economic development. 10 Measuring the damage to environment in the production of GDP • This model provides a measure of the disutility of pollution associated with a given increase in consumption, as given by the utility function for specific values of the parameters θ and M. • This measure is related to the measurement of Green GDP. The latter nets out from GDP the cost of productive resources used to repair the damage to the environment. Green GDP has limited use because knowing the cost of repairing environmental damage in the production of a given amount of output one still does not know whether the environmental cost is worth paying for. • Our measure nets out the disutility of a polluted environment from the utility derived from consuming a given output. Our framework can be used to measure the change in net utility when consumption changes from C1 to C2 while pollution changes from e1 to e2. • The measure is logC2 + θlog(M-e2) –[ logC1 + θlog(M-e1)]. 11 ndustrial Waste Air Emission1 uels Burning roduction rocess ulphur Dioxide Emission 4.3 Estimation of the macro-model incorporating pollution for China 100 million cu.m 100 million cu.m 100 million cu.m 10 000 tons 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 113375 121203 126807 138145 160863 175257 198906 237696 268988 330992 70918 72985 75919 81970 93526 103776 116447 139726 155238 181636 42457 48218 50887 56032 67337 71481 82459 97971 113749 149353 2346 2090 1857 1995 1948 1927 2159 2255 2549 2589 12 1978 1979 1980 1981 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 Y 3645.22 3922.25 4228.45 4450.81 4851.78 5380.34 6196.87 7031.62 7654.96 8540.74 9503.08 9889.48 10268.58 11212.69 12809.29 14595.45 16505.54 18309.93 20143.47 22013.47 23737.66 25549.33 27700.01 30000.14 32726.76 36007.46 39638.09 43695.22 K 13910.7 14769.03 15746.23 16691.12 17816.94 19160.45 20709.59 22709.03 24961.7 27470.07 30686.13 34351.8 37781.34 41306.76 45441.53 51172.44 57508.32 64716.96 72516.72 80523.36 88879.67 97719.5 106568 116207.5 126940.3 139605.6 153682.1 168794.5 C 2239.1 2542.7 2798 3058.6 3385.7 3723.4 4166.4 4668.7 5082.2 5527.8 6216 6497.5 6650.6 7254.2 8184.8 9046.2 10014.1 11067.9 12429.5 13419 14508.9 15851.2 17174.8 18297 19497.8 20532.3 21577.8 23130.6 e 20201.34 21736.6 23433.53 24665.81 26887.94 29817.15 34342.25 38968.33 42422.8 47331.68 52664.84 54806.23 56907.14 62139.29 70987.43 80886.1 91471.57 101471.3 111632.5 113375 121203 126807 138145 160863 175257 198906 237696 268988 13 Ct = [1-d + γYK-1]/ [θ γ etKt-1/(M- e) + β-1Ct-1-1] (5) For the purpose of estimation the values of d and γ are assumed to be .04 and .60 respectively from our knowledge of these parameters; the value of β-1 is assumed to be 1.02 as the value of the discount factor β is often assumed to be 0.98. Only parameters M and θ in (5) are required to be estimated. We first use the sample from 1997 to 2005 when data on pollution are available as given in Table 4.2. For different assumed values of M, the first four rows of Table 4.3 give estimates of θ obtained by the nonlinear regression routine of STATA, together with its t statistic, root mean square error and Rsquare of the regression. All estimates of θ are highly significant and the values of Rsquare are very high. 14 Period 1997-2005 1997-2005 1997-2005 1978-2005 1978-2005 1978-2005 1978-2005 1978-2005 1997-2005 1-d .96 .96 .96 .9958 .96 .96 .96 .96 .95850/105.5 M 1000000 10000000 1100000 1100000 90000000 1100000 1000000 10000000 1000000 θ .7468209 9.345796 .8430062 1.965221 85.72903 .814789 .7226108 8.95161 .6802665 t stat 7.12 7.37 7.16 13.35 7.38 7.29 7.28 7.31 2.47 R-quared 0.9999 0.9999 0.9999 0.9996 0.9998 0.9998 0.9998 0.9998 0.9998 RootMSE 188.9336 183.2962 187.9435 232.4537 183.1053 183.3053 183.4771 182.9961 187.0087 15 Note that the value of θ increases as M increases. The reason is that for a larger M the percentage change of M-e is smaller for the same change in e; this requires a larger value of θ to yield the same percentage change in the term θlog(M-e) in the utility function. When we vary the value of M substantially the goodness of fit of the regression as measured by the RMSE remains almost the same. This fact is consistent with the fact that if we try to estimate both θ and M simultaneously the standard errors of both are very large or we cannot obtain reasonably accurate estimates of both parameters. In any case, the positive and highly significant estimates of θ supports strongly our model of pollution. Our theory of pollution would be rejected if the estimates of θ were statistically insignificant, and equation (5) would be reduced to equation (6). I have tried to estimate both parameters d and θ, given the value of M, and found that the estimate of d is almost exactly equal to 0.04 and that the estimate of θ remains almost the same. 16 Using longer sample period 19782005 • I have also tried to estimate equation (5) using a longer sample period from 1978 to 2005. To do so data for e before 1997 have been constructed them by multiplying Y by 5.5419, the mean of the ratios C/Y for the years 1997-2006 (Y in 2006 not shown in Table 3.2). As shown in the lower half of Table 3.4, all statements of the last paragraph remain valid for the larger sample. 17 After the successful estimation of the model using data for 1978 to 2005 it then occurred to me that the variable e in our utility function can be replaced by national output Y or any other variable proportional to it. To test this proposition I used the sample from 1997 onward when the data on pollution are available and estimated equation (5) after substituting Y for e. The result, for a given value of M equal to four times the value of Y in 2005 as M = 1100000 is about four times the value of e in 2005, is about as good as the model using e. The estimate of θ is 4.109 with a standard error of .570, and a t ratio of 7.21 while he Root MSE equals to 187.0105 which is about the same as given in the top half of Table 3.4, and R-sq is 0.9999. Thus, if we let Y instead of e enter the utility function we will find the estimate of the parameter θ to be equally good and the resulting equation to explain C equally well. As is often the case when a macro-economic hypothesis is proposed, one finds the hypothesis to be sufficient in explaining the data but not necessary. There are alternative hypotheses that will explain the data equally well. For the purpose of examining the macroeconomic implication of pollution, we know that pollution is highly correlated with output Y. Hence it is difficult to distinguish between the effect of pollution and of other variables that are highly correlated with Y. 18 The failure of our model to distinguish between alternative variables to be used as e in our utility function turns out to be a blessing in that it makes our theoretical framework more general. Our general model implies that in the course of economic development the increase in output enables the population to derive more utility from a higher level of consumption but the increase in output itself reduces utility because it produces more pollution, congestion, or whatever other negative side effect. Since our utility function is identical with the formulation often used for the choice of labor hour where more labor or hours of work (corresponding to our variable e now interpreted as “effort”) reduces utility and this effect is measured by the difference between a maximum amount and the actual amount. An important finding of this paper is that if pollution or any other variable related to the increase in output asserts a negative effect on utility it should be incorporated in a macroeconomic model and such a model explains the Chinese macroeconomic data better than the one without using it. Although pollution is not a necessary explanation of our empirical results, incorporating it has implications supported by Chinese data. In the study of economic growth we suggest the consideration not only of the positive effect of increased consumption but also the negative effect of any variable associated with the increase in output itself. We are led to this proposition by studying the disutility of pollution. (Pollution associated with consumption rather than output can be modeled in our framework by defining consumption as ultimate consumption net of all home production or productive work by the consumer herself.) 19 Ct/Ct-1 = [1-d + γYK-1]/ [θ γ et Ct-1Kt-1/(M- e) + β-1] (7) To see how an increase in pollution contributes to a reduction in the rate of growth of consumption, or in the ratio Ct/Ct-1 we divide both sides of equation (7) by Ct-1 and find denominator on the right hand side to be θγCt-1etKt-1/(M- e) + β-1. If pollution is not mod the first term involving θ would disappear. The importance of this pollution term is mea by its ratio to the second term β-1. This ratio, with θγ = 1.37655, M = 1200000 and β-1 = increases monotonically from .00338 in 1979 to .04984 in 2005 as the value of (M –e) in t denominator of the first term decreases with the increase in emission e. Although the ra small, by 2005 it is about 5 percent. Thus we find that the pollution term involving a non θ reduces the ratio Ct/Ct-1 by about 5 percent in 2005. 20 The second effect of the pollution term is on the numerator [1-d + .6Y/K] of the expressio explain the ratio Ct/Ct-1. The reduction in the ratio of Ct/Ct-1 as pollution increases which w out in the last paragraph will cause a larger fraction of output Y to be used for capital form This will lead to a reduction in [1-d + .6Y/K] in the numerator of the expression explainin Ct/Ct-1. This is an additional factor in explaining why damage to the environment would m economic growth unsustainable. Empirically the ratio Y/K for China decreases almost monotonically from 0.311 in 1987 to 0.259 in 2005. 21 Measuring change of utility: logC2 + θlog(M-e2) –[ logC1 + θlog(M-e1)] • • • • • • • Given M =1,000,000 and θ = 1.48, the change of e from 269000 in 2005 to 331000 in 2006 implies the change in utility due to increase in pollution by 1.48[ log 731000 – log 669000] = 1.48[.0886] = .1312. Given Y in 2006 = 48000, the level of utility in 2006 adjusted for the damage to the environment is log(48000) - .1312 = 10.779 - .1312 = 10.648 The level of Green GDP in 2006 net of this adjustment is therefore exp(10.648) = 42200. The percentage reduction of Y from 48000 to 42200 is 5800/48000 = .121 or 12.1 percent. Is this estimate too large? Not large as compared with the estimate of 16 percent by Shi Minjun. Question is whether our index of pollution is a good approximation of the overall index. Has a comprehensive pollution index increased faster than our index? If so, our estimate of θ could be smaller. A similar percentage should be subtracted from Y2005 as compared with Y2004 and we should examine the percentage change in Green GDP from 2004 to 2005 as compared with the percentage change in Green GDP from 2005 to 2006. • 22 23