ANL317: Discuss the Importance of Stationarity for Forecasting and How to Convert a non-Stationary Series to Become Stationary: Business Forecasting Assignment, SUSS, Singapore

University Singapore University of Social Science (SUSS)
Subject ANL317: Business Forecasting

Question 1

Stationarity is one of the main time-series properties.

  • Discuss the importance of stationarity for forecasting and how to convert a non-stationary series to become stationary.
  • Give an example of a non-stationary time series. Explain the difficulty and possible adjustment measures in doing forecasting on your example series.

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Question 2

Below are the quarterly gross domestic product (GDP) data of country X from 1980 to 1989.

Create a SAS Studio dataset/SAS Forecast Studio project for the analytics tasks below.

Quarter GDP Quarter GDP
1980Q1 2650.1 1985Q1 3940.0
1980Q2 2643.9 1985Q2 3997.5
1980Q3 2705.3 1985Q3 4076.9
1980Q4 2832.9 1985Q4 4140.5
1981Q1 2953.5 1986Q1 4215.7
1981Q2 2993.0 1986Q2 4232.0
1981Q3 3079.6 1986Q3 4290.2
1981Q4 3096.3 1986Q4 4336.6
1982Q1 3092.9 1987Q1 4408.3
1982Q2 3146.2 1987Q2 4494.9
1982Q3 3164.2 1987Q3 4573.5
1982Q4 3195.1 1987Q4 4683.0
1983Q1 3254.9 1988Q1 4752.4
1983Q2 3367.1 1988Q2 4857.2
1983Q3 3450.9 1988Q3 4947.3
1983Q4 3547.3 1988Q4 5044.6
1984Q1 3666.9 1989Q1 5139.9
1984Q2 3754.6 1989Q2 5218.5
1984Q3 3818.2 1989Q3 5277.3
1984Q4 3869.1 1989Q4 5340.4

a. Determine the trend of the series by applying linear regression for curve fitting.

b. Evaluate whether there are any seasonal effects in this time series by creating a new quarterly variable as the independent variable of linear regression.

c. Combine the trend and seasonal variables that you have used in (a) and (b) to construct a joint linear regression model for the GDP. Comment on whether the findings regarding the trend and seasonal effects in (a) and (b) are still relevant in this joint effect model.

d. Compute the simple moving averages for these data with the most appropriate order by comparing the mean absolute percentage errors (MAPE) of some possible moving average orders.

e. Propose and construct the most suitable exponential smoothing model for these data based on the findings in (a), (b), and (c). Report and conclude on the coefficients that you can find in the output of SAS Forecast Studio.

f. Calculate the GDP forecast for the four quarters in 1990 using the models estimated in (c), (d) and (e). Comment on the forecasting accuracy of these models if the observed data are

Quarter GDP
1990Q1 5422.4
1990Q2 5504.7
1990Q3 5570.5
1990Q4 5557.5

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