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Research Methodology




                    Notes          Double Exponential Smoothing (Trend-Adjusted Exponential Smoothing)
                                   When a trend exists, the  forecasting technique must consider the trend  as well as the series
                                   average ignoring the trend will cause the forecast to always be below (with an increasing trend)
                                   or above (with a decreasing  trend) actual demand double  exponential smoothing  smooths
                                   (averages) both the series average and the trend

                                   forecast for period t + 1: Ft + 1 = At + Tt
                                   average: At = aDt + (1 – a) (At – 1 + Tt – 1) = aDt + (1 – a) Ft
                                   average trend: Tt = B CTt + (1 – B) Tt - 1
                                   current trend: CTt = At – At – 1

                                   forecast for p periods into the future: Ft + p = At + pTt
                                   where:
                                   At = exponentially smoothed average of the series in period t
                                   Tt = exponentially smoothed average of the trend in period t

                                   CTt = current estimate of the trend in period t
                                   a = smoothing parameter between 0 and 1 for smoothing the averages
                                   B = smoothing parameter between 0 and 1 for smoothing the trend

                                   Self Assessment

                                   Fill in the blanks:

                                   7.  Time series forecasting methods are based on analysis of ……………data.
                                   8.  …………………..gives greater weight to demand in more recent periods.
                                   9.  …………………..method is based on the principle that the total effect of periodic variations
                                       at different points of time in its cycle gets completely neutralised.
                                   10.4 The Mean Absolute Deviation (MAD)


                                   The mean absolute deviation is the sum of the absolute values of the deviations from the mean.
                                   Procedure
                                   1.  Find the mean of the data

                                   2.  Subtract the mean from each data value to get the deviation from the mean
                                   3.  Take the absolute value of each deviation from the mean
                                   4.  Total the absolute values of the deviations from the mean
                                   5.  Divide the total by the sample size.

                                   Typically the point from which the deviation is measured is the value of either the median or the
                                   mean of the data set.
                                          |D| = |x – m(X)|
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