Hello everyone, I have time-series data from the year 2007 to 2019 looking into Rail & Inland Waterways Transportation. I have carried out the first difference of the two variables 'Rail Freight' and InlandFreightTonneKm' to create the variables 'RailFreightFirstDifference' and 'INWFreightFirstDifference'. Based on these two variables created, I carried out the ADF test separately and the time-series were stationary. Similarly, I carried the Akaike Information Criterion (AIC) and found the optimal lags in both cases were two.
Thus, my regression equations are the following:
ΔRoadt = β0 + β1ΔRoadt-1 + β2ΔRoadt-2 + ɛt
ΔRailt = β0 + β1ΔRailt-1 + β2ΔRailt-2 + ɛt
I am facing the following problem: I cannot understand how should I run the regression so that from the regression results, I could calculate predictions in the changes in Rail and Inland Transportation from 2020 to 2030.
I have also attached the example of the variables in the data set using dataex.
Thus, my regression equations are the following:
ΔRoadt = β0 + β1ΔRoadt-1 + β2ΔRoadt-2 + ɛt
ΔRailt = β0 + β1ΔRailt-1 + β2ΔRailt-2 + ɛt
I am facing the following problem: I cannot understand how should I run the regression so that from the regression results, I could calculate predictions in the changes in Rail and Inland Transportation from 2020 to 2030.
I have also attached the example of the variables in the data set using dataex.
Code:
* Example generated by -dataex-. To install: ssc install dataex clear input int year double(RailFreight InlandFreightTonneKilometers) float(RailFreightFirstDifference INWFreightFirstDifference) 2007 5215857.5 28064 . . 2008 5517042 29483 301184.5 1419 2009 6001460.5 37085 484418.5 7602 2010 6258546.5 40259 257086 3174 2011 6676754.5 38098 418208 -2161 2012 6492099.5 30629 -184655 -7469 2013 6656881 24183 164781.5 -6446 2014 6812517 28468 155636 4285 2015 6542969.5 34597 -269547.5 6129 2016 6205501.5 38308 -337468 3711 2017 6934109 41297.89 728607.5 2989.89 2018 7389954 47421.54 455845 6123.65 2019 7081282.5 44412.36 -308671.5 -3009.18 end