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Research Methodology




                    Notes          Further, SS.I. = 1198.9  1200. Thus, we have to adjust these values such that their total is 1200.
                                                                           1200
                                   This can be done by multiplying each figure by   . The resulting figures are the adjusted
                                                                          1198.9
                                   seasonal indices, as given below:

                                          Jan  Feb  Mar  Apr   May   Jun   Jul  Aug  Sep  Oct  Nov   Dec
                                         101.5 99.2  96.9 103.8 103.8 104.7 106.0  97.8  94.6 93.2  96.2  102.3
                                   Remarks:  The totals equal  to 1200, in case of monthly indices and 400, in  case of quarterly
                                   indices, indicate that the ups and downs in the time series, due to seasons, neutralise themselves
                                   within that year. It is because of this that the annual data are free from seasonal component.




                                      Task  Compute the seasonal index from the following data  by the method of simple
                                     averages.


                                              Year  Quarter  Y   Year  Quarter  Y  Year  Quarter  Y
                                              1980    I     106  1982    I     90  1984    I     80
                                                      II    124          II   112          II    104
                                                      III   104         III   101          III    95
                                                      IV     90         IV     85          IV     83
                                              1981    I      84  1983    I     76  1985    I     104
                                                      II    114          II    94          II    112
                                                      III   107         III    91          III   102
                                                      IV     88         IV     76          IV     84


                                   Merits and Demerits

                                   This is a simple method of  measuring seasonal variations which is based  on the  unrealistic
                                   assumption that the trend and cyclical variations are absent from the data. However, we shall
                                   see later that this method, being a part of the other methods of measuring seasonal variations,
                                   is very useful.

                                   10.6.2 Ratio to Trend Method

                                   This  method is used when cyclical variations  are absent from the data, i.e.,  the time series
                                   variable Y consists of trend, seasonal and random components.

                                   Using symbols, we can write Y = T.S.R.
                                   Various steps in the computation of seasonal indices are:
                                   1.  Obtain the trend values for each month or quarter, etc., by the method of least squares.
                                   2.  Divide the original values by the corresponding trend values. This would eliminate trend
                                       values from the data. To get figures in percentages, the quotients are multiplied by 100.

                                                             S
                                                    Y      T . .R
                                       Thus, we have     100 =    100  = S.R.100
                                                    T        T
                                   3.  Finally, the random component is eliminated by the method of simple averages.







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