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Unit 11: Analysis of Time Series




                    (ii)  Customs and Traditions: The customs and traditions of the people also give  Notes
                         rise to the seasonal variations in time series. For example, the sale of garments
                         and ornaments may be highest during the marriage season, sale of sweets
                         during Diwali, etc., are variations that are the results of customs and traditions
                         of the people.
                    It should be noted here that both of the causes, mentioned above, occur regularly
                    and are often repeated after a gap of less than or equal to one year.

                    Objectives of Measuring Seasonal Variations
                    The main objectives of measuring seasonal variations are:
                    (i)  To analyse the past seasonal variations.
                    (ii)  To predict the value of a seasonal variation which could be helpful in short-
                         term planning.
                    (iii)  To eliminate the effect of seasonal variations from the data.
               (b)  Causes of Cyclical Variations: Cyclical variations are revealed by most of the economic
                    and business time series and, therefore, are also termed as trade (or business) cycles.
                    Any trade cycle has four phases which are respectively known as boom, recession,
                    depression and recovery phases. These phases are shown in Figure 11.1. Various
                    phases  repeat themselves regularly one after another in the given sequence.  The
                    time interval  between  two  identical phases is known  as the  period  of cyclical
                    variations. The period is  always greater than one year. Normally,  the period of
                    cyclical variations lies between 3 to 10 years.
                    Objectives of Measuring Cyclical Variations
                    The main objectives of measuring cyclical variations are:

                    (i)  To analyse the behaviour of cyclical variations in the past.
                    (ii)  To predict the effect of cyclical variations so as to provide guidelines for
                         future business policies.

          3.   Random or Irregular Variations: As the name suggests, these variations do not reveal any
               regular pattern of movements. These variations are caused by random factors such as
               strikes, floods, fire, war,  famines,  etc. Random variations is that component of a time
               series which cannot be explained in terms of any of the components discussed so far. This
               component is obtained as a residue after the elimination of trend, seasonal and cyclical
               components and hence is often termed as residual component.
               Random variations are usually short-term variations but sometimes their effect may be so
               intense that the value of trend may get permanently affected.

          11.1.3 Analysis of Time Series

          As mentioned earlier, the purpose of analysis of a time series is to decompose  Y  into various
                                                                            t
          components. However, before doing this, we have to make certain assumptions regarding the
          manner in which these components have combined themselves to give the value Y . Very often
                                                                             t
          it  is  assumed that  Y   is  given  by either  the  summation  or  the  multiplication  of  various
                            t
          components, and  accordingly we shall assume  two type  of models,  i.e.,  additive model or
          multiplicative model.







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