Friday, September 20, 2019
Calculating Year-On-Year Growth of GDP
Calculating Year-On-Year Growth of GDP    Introduction  The model which is to be developed is real GDP in the UK. From such a series of real values, it is straightforward to calculate year-on-year growth of GDP.  Selection of variables  To model GDP, key factors identified by Easton (2004) include labour costs, savings ratio, taxation issues, inflation and terms of trade. However, many of these variables are not available for the required 40 year time span.  The variables eventually chosen and the justification were as follows:  GDP: the dependent variable, measured at 1950 prices. As GDP deflator figures were not available back to 1960, the eventual starting point of the analysis, the RPI inflation measure was used to convert the series into real prices.  Exim: this variable is the sum of imports and exports, at constant 1950 prices. As a measure of trade volumes, EXIM would be expected to increase as GDP also increases. The RPI deflator was also used for this series. Total trade was plasced into one variable was to abide by the constraint of no more than four independent variables.  Energy: energy consumption was calculated as production plus imports minus exports in tonnes of oil equivalent. As energy use increases, we would expect to see an increase in the proportion of GDP attributable to manufacturing.[1]  Labour: this variable is the total number of days lost through disputes. We would expect this variable to have a negative coefficient, since an increase in the number of days lost will lead to a reduction of GDP.  Scatter diagrammes showing the relationship between the dependent variable GDP and each of the independent variables is sown in Appendix 1. These diagrammes support each of the hypotheses outlined above.  Main results  The regression equation produced by EViews, once the energy variable is excluded, is as follows:  GDP = -73223.22384 + 1.062678514*EXIM  0.1391051564*LABOUR + 1.565374397*POPN  The adjusted R2 is equal to 0.978; or, 97.8% of the variation in GDP is accounted for by the variation in EXIM, LABOUR and POPN.  Each of the coefficients of the three independent variables, EXIM, LABOUR and POPN, have t-statistics sufficiently high to reject the null hypothesis that any of the coefficients is equal to zero; in other words, each variable makes a significant contribution to the overall equation.  To test the overall fit of the equation, the F value of 703 allows us similarly to reject the hypothesis that the coefficients are simultaneously all equal to zero.    Dependent Variable: GDP    Method: Least Squares    Date: 04/15/08 Time: 09:10    Sample: 1960 2006    Included observations: 47    Variable    Coefficient    Std. Error    t-Statistic    Prob.    C    -73223.22    23204.60    -3.155548    0.0029    EXIM    1.062679    0.117445    9.048297    0.0000    LABOUR    -0.139105    0.036951    -3.764585    0.0005    POPN    1.565374    0.443541    3.529270    0.0010    R-squared    0.980046    Mean dependent var    32813.25    Adjusted R-squared    0.978654    S.D. dependent var    10905.60    S.E. of regression    1593.331    Akaike info criterion    17.66631    Sum squared resid    1.09E+08    Schwarz criterion    17.82377    Log likelihood    -411.1582    F-statistic    703.9962    Durbin-Watson stat    0.746519    Prob(F-statistic)    0.000000    The Akaike and Schwartz criteria are used principally to compare two or more models (a model with a lower value of either of these statistics is preferred). As we are analysing only one model here, we will not discuss these two further.  Using tables provided by Gujarati (2004), the upper and lower limits for the DW test are:  DL = 1.383 DU = 1.666  The DW statistic calculated by EViews is 0.746, which is below DL. This results leads us to infer that there is no positive autocorrelation in the model. This is an unlikely result, given that we are dealing with increasing variables over time, but we shall examine the issue of autocorrelation in detail later on.  Multicollinearity  Ideally, there should be little or no significant correlation between the dependent variables; if two dependent variables are perfectly correlated, then one variable is redundant and the OLS equations could not be solved.  The correlation of variables table below shows that EXIM and POPN have a particularly high level of correlation (the removal of the ENERGY variable early on solved two other cases of multicollinearity).  It is important, however, to point out that multicollinearity does not violate any assumptions of the OLS process and Gujarati points out the multicollinearity is a consequence of the data being observed (indeed, section 10.4 of his book is entitled ââ¬Å"Multicollinearity; much ado about nothing?â⬠).  Correlations of Variables    GDP    EXIM    POPN    ENERGY    GDP    1.000000    EXIM    0.984644    POPN    0.960960    0.957558    ENERGY    0.835053    0.836279    0.914026    LABOUR    -0.380830    -0.320518    -0.259193    -0.166407    Analysis of Residuals  Overview  The following graph shows the relationship between actual, fitted and residual values. At first glance, the residuals appear to be reasonably well behaved; the values are not increasing over time and there several points at which the residual switches from positive to negative. A more detailed tabular version of this graph may be found at Appendix 2.  Heteroscedascicity  To examine the issue of heteroscedascicity more closely, we will employ Whiteââ¬â¢s test. As we are using a model with only three independent variables, we may use the version of the test which uses the cross-terms between the independent variables.    White Heteroskedasticity Test:    F-statistic    1.174056    Probability    0.339611    Obs*R-squared    10.44066    Probability    0.316002    Test Equation:    Dependent Variable: RESID^2    Method: Least Squares    Date: 04/16/08 Time: 08:24    Sample: 1960 2006    Included observations: 47    Variable    Coefficient    Std. Error    t-Statistic    Prob.    C    -2.99E+09    4.06E+09    -0.735744    0.4665    EXIM    -49439.98    45383.77    -1.089376    0.2830    EXIM^2    -0.175428    0.128496    -1.365249    0.1804    EXIM*LABOUR    -0.049223    0.047215    -1.042532    0.3039    EXIM*POPN    0.982165    0.879151    1.117174    0.2711    LABOUR    -18039.83    18496.29    -0.975322    0.3357    LABOUR^2    -0.018423    0.009986    -1.844849    0.0731    LABOUR*POPN    0.344698    0.336446    1.024526    0.3122    POPN    120773.0    157305.5    0.767761    0.4475    POPN^2    -1.217523    1.523271    -0.799282    0.4292    R-squared    0.222142    Mean dependent var    2322644.    Adjusted R-squared    0.032933    S.D. dependent var    3306810.    S.E. of regression    3251902.    Akaike info criterion    33.01368    Sum squared resid    3.91E+14    Schwarz criterion    33.40733    Log likelihood    -765.8215    F-statistic    1.174056    Durbin-Watson stat    1.306019    Prob(F-statistic)    0.339611    The 5% critical value for chi-squared with nine degrees of freedom is 16.919, whilst the computed value of Whiteââ¬â¢s statistic is 10.44. We may therefore conclude that, on the basis of the White test, there is no evidence of heteroscedascicity.  Autocorrelation  The existence of autocorrelation exists in the model if there exists correlation between residuals. In the context of a time series, we are particularly interested to see if successive residual values are related to prior values.  To determine autocorrelation, Gujaratiââ¬â¢s rule of thumb of using between a third and a quarter of the length of the time series was used. In this particular case, a lag of 15 was selected.    Date: 04/16/08 Time: 08:05    Sample: 1960 2006    Included observations: 47    Autocorrelation    Partial Correlation    AC    PAC    Q-Stat    Prob    . |**** |    . |**** |    1    0.494    0.494    12.234    0.000    . |*** |    . |** |    2    0.423    0.237    21.409    0.000    . |*. |    .*| . |    3    0.155    -0.171    22.669    0.000    . | . |    .*| . |    4    0.007    -0.145    22.672    0.000    .*| . |    .*| . |    5    -0.109    -0.069    23.319    0.000    **| . |    .*| . |    6    -0.244    -0.160    26.674    0.000    **| . |    . | . |    7    -0.194    0.037    28.845    0.000    **| . |    . | . |    8    -0.202    -0.004    31.247    0.000    **| . |    .*| . |    9    -0.226    -0.162    34.344    0.000    **| . |    .*| . |    10    -0.269    -0.186    38.859    0.000    .*| . |    . |*. |    11    -0.134    0.122    40.013    0.000    .*| . |    . | . |    12    -0.079    0.047    40.428    0.000    .*| . |    .*| . |    13    -0.078    -0.151    40.837    0.000    . | . |    . | . |    14    0.013    0.029    40.849    0.000    . | . |    . | . |    15    0.041    0.018    40.970    0.000    The results of the Q statistic indicate that the data is nonstationary; in other words, the mean and standard deviation of the data do indeed vary over time. This is not a surprising result, given growth in the UKââ¬â¢s economy and population since 1960.  A further test available to test for autocorrelation is the Breusch-Godfrey test. The results of this test on the model are detailed below.    Breusch-Godfrey Serial Correlation LM Test:    F-statistic    15.53618    Probability    0.000010    Obs*R-squared    20.26299    Probability    0.000040    Test Equation:    Dependent Variable: RESID    Method: Least Squares    Date: 04/16/08 Time: 09:23    Presample missing value lagged residuals set to zero.    Variable    Coefficient    Std. Error    t-Statistic    Prob.    C    9294.879    18204.51    0.510581    0.6124    EXIM    0.047292    0.092176    0.513065    0.6107    LABOUR    0.039181    0.031072    1.260967    0.2144    POPN    -0.182287    0.348222    -0.523479    0.6035    RESID(-1)    0.788084    0.154144    5.112655    0.0000    RESID(-2)    -0.180226    0.160485    -1.123009    0.2680    R-squared    0.431127    Mean dependent var    0.000100    Adjusted R-squared    0.361753    S.D. dependent var    1540.499    S.E. of regression    1230.710    Akaike info criterion    17.18731    Sum squared resid    62100572    Schwarz criterion    17.42350    Log likelihood    -397.9019    F-statistic    6.214475    Durbin-Watson stat    1.734584    Prob(F-statistic)    0.000225    We can observe from the results above that RESID(-1) has a high t value. In other words, we would reject the hypothesis of no first order autocorrelation. By contrast, second order autocorrelation does not appear to be present in the model.  Overcoming serial correlation  A method to overcome the problem of nonstationarity is to undertake a difference of the dependent variable (ie GDPyear1 ââ¬â GDPyear0) An initial attempt to improve the equation by using this differencing method produced a very poor result, as can be seen below.    Dependent Variable: GDPDIFF    Method: Least Squares    Date: 04/16/08 Time: 08:17    Sample: 1961 2006    Included observations: 46    Variable    Coefficient    Std. Error    t-Statistic    Prob.    C    14037.58    12694.29    1.105818    0.2753    EXIM    0.084287    0.052601    1.602398    0.1167    ENERGY    0.011470    0.011710    0.979487    0.3331    LABOUR    -0.004251    0.014304    -0.297230    0.7678    POPN    -0.300942    0.265082    -1.135279    0.2629    R-squared    0.207408    Mean dependent var    816.6959    Adjusted R-squared    0.130082    S.D. dependent var    657.1886    S.E. of regression    612.9557    Akaike info criterion    15.77678    Sum squared resid    15404304    Schwarz criterion    15.97555    Log likelihood    -357.8660    F-statistic    2.682255    Durbin-Watson stat    1.401626    Prob(F-statistic)    0.044754    Forecasting  The forecasts for the dependent variables are based on Kirby (2008) and are presented below.  The calculation of EXIM for future years was based upon growth rates for exports (47% of the 2006 total) and imports (53%) separately. The two streams were added together to produce the 1950 level GDP figure, from which year-on-year increases in GDP could be calculated. The results of the forecast are shown below.  The 2008 figure was felt to be particularly unrealistic, so a sensitivity test was applied to EXIM (population growth is relatively certain in the short term and calculating a forecast of labour days lost is a particularly difficult challenge).  Instead of EXIM growing by an average of 1.7% per annum during the forecast period, its growth was constrained to 0.7%. As we can see from the ââ¬Å"GDP2â⬠ column, GDP forecast growth is significantly lower in 2008 and 2009 as a result.  Critical evaluation of the econometric approach to model building and forecasting  GDP is dependent on many factors, many of which were excluded from this analysis due to the unavailability of data covering forty years. Although the main regression results appear highly significant, there are many activities which should be trialled to try to improve the approach:  a shorter time series with more available variables: using a short time series would enable a more intuitive set of variables to be trialled. For example, labour days lost is effectively a surrogate for productivity and cost per labour hour, but this is unavailable over 40 years;  transformation of variables: a logarithmic or other transformation should be trialled to ascertain if some of the problems observed, such as autocorrelation, could be mitigated to any extent. The other, more relevant transformation is to undertake differencing of the data to remove autocorrelation; the one attempt made in this paper was particularly unsuccessful!  Approximate word count, excluding all tables, charts and appendices: 1,400 Appendix 1 ââ¬â Scatter diagrammes of GDP against dependent variables  Appendix 2    obs    Actual    Fitted    Residual    Residual Plot    1960    17460.5    15933.8    1526.78    | . | * |    1961    17816.1    16494.5    1321.57    | . | *. |    1962    17883.8    16714.1    1169.67    | . | * . |    1963    18556.7    18153.6    403.108    | . |* . |    1964    19618.0    19117.8    500.191    | . | * . |    1965    20209.7    19558.9    650.773    | . | * . |    1966    20699.1    20272.1    426.905    | . |* . |    1967    21303.1    20973.3    329.754    | . |* . |    1968    22037.1    22395.3    -358.204    | . *| . |    1969    22518.6    22824.6    -305.982    | . *| . |    1970    23272.7    23147.8    124.912    | . * . |    1971    23729.9    23395.8    334.070    | . |* . |    1972    24806.3    22418.6    2387.67    | . | . * |    1973    26134.9    27249.5    -1114.60    | . * | . |    1974    25506.2    28880.9    -3374.64    | * . | . |    1975    25944.6    28401.8    -2457.14    | * . | . |    1976    26343.7    30306.2    -3962.47    |* . | . |    1977    26468.8    29829.1    -3360.31    | * . | . |    1978    28174.4    29922.0    -1747.61    | * | . |    1979    29232.7    27846.9    1385.71    | . | *. |    1980    28957.2    29271.0    -313.855    | . *| . |    1981    28384.0    29590.8    -1206.86    | .* | . |    1982    28626.2    29526.2    -899.933    | . * | . |    1983    29915.3    30883.9    -968.627    | . * | . |    1984    30531.7    29677.7    853.960    | . | * . |    1985    31494.3    33289.4    -1795.09    | * | . |    1986    32748.5    33293.0    -544.520    | . * | . |    1987    34609.2    34223.2    385.976    | . |* . |    1988    36842.2    34669.4    2172.76    | . | . * |    1989    37539.8    35938.6    1601.20    | . | * |    1990    37187.7    35988.5    1199.22    | . | *. |    1991    36922.2    35080.4    1841.84    | . | .* |    1992    37116.4    35793.7    1322.74    | . | *. |    1993    38357.7    38051.2    306.418    | . |* . |    1994    39696.7    39790.8    
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