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2. Forecasting

2. Forecasting. Forecasting. Using past data to help us determine what we think will happen in the future Things typically forecasted Demand for products and services Raw material prices Human resources costs Economic forecasts: inflation rates, money supplies, housing starts.

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2. Forecasting

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  1. 2. Forecasting

  2. Forecasting • Using past data to help us determine what we think will happen in the future • Things typically forecasted • Demand for products and services • Raw material prices • Human resources costs • Economic forecasts: inflation rates, money supplies, housing starts

  3. Why do we forecast? • We forecast as an input to production/services planning, so that we have some idea of demand/resources, etc. • Forecasts drive a lot of decision-making • We should never expect forecasts to be exactly correct, we only hope that they give us a reasonable idea as to what the future holds

  4. Laws of Forecasting • Forecasts are always wrong • Detailed forecasts are worse than aggregate forecasts • The further into the future, the less reliable the forecast will be

  5. Ranges of Forecasts • Short range • less than three months • Purchasing, job scheduling, workforce levels • should be accurate • Medium range • Three months to three years • Sales, production planning, budgeting • should be good

  6. Ranges of Forecasts (Continued) • Long range • several years • New products, capital expenditure, facility location and expansion • hopefully good

  7. Types of Forecasting • Qualitative Methods - Subjective estimates of future • Time Series Analysis - using past data to predict future • Causal Relationships - data pattern is explained by various factors

  8. Forecasting Sequence • Determine the use of the forecast • Select the items to be forecasted • Determine the time horizon of the forecast • Select the forecasting models • Gather the data • Make the forecast • Validate and implement results

  9. Qualitative Forecasting

  10. Quantitative Forecasting

  11. Components of Data • Average value • Trend - a slow direction/shift • Seasonal influence - sensitivity to time of year • Cyclical elements - high and low points • Random variation (white noise) - unexplainable behavior

  12. Trend component Seasonal peaks Actual demand Demand for product or service Average demand over four years Random variation | | | | 1 2 3 4 Year Forecast Using Different Components

  13. Time Series Analysis - Notation • Dt is the actual demand for period t • Ft is the forecast for period t • Ft+k is the forecast made at period t for k periods ahead

  14. Moving Average • Ft+1 = (Dt + Dt-1 + …+ Dt-N+1) / N • Ft+2 = (Dt+1 + Dt + …+ Dt-N+2) / N = Ft+1 + (Dt+1 - Dt-N+1) / N • N is the number of averaging periods (typically, N is 5 to 7) • Better for constant processes

  15. Effect of Number of Periods • Smaller N is good for quick response, but larger N ignores random fluctuations

  16. Actual 3-Month Month Shed Sales Moving Average January 10 February 12 March 13 April 16 May 19 June 23 July 26 10 12 13 (10 + 12 + 13)/3 = 11 2/3 Example (12 + 13 + 16)/3 = 13 2/3 (13 + 16 + 19)/3 = 16 (16 + 19 + 23)/3 = 19 1/3

  17. Moving Average Forecast 30 – 28 – 26 – 24 – 22 – 20 – 18 – 16 – 14 – 12 – 10 – Actual Sales Shed Sales | | | | | | | | | | | | J F M A M J J A S O N D Example

  18. Actual 3-Month Weighted Month Shed Sales Moving Average January 10 February 12 March 13 April 16 May 19 June 23 July 26 10 12 13 [(3 x 13) + (2 x 12) + (10)]/6 = 121/6 Weighted Moving Average Weights applied: 3, 2, 1 [(3 x 16) + (2 x 13) + (12)]/6 = 141/3 [(3 x 19) + (2 x 16) + (13)]/6 = 17 [(3 x 23) + (2 x 19) + (16)]/6 = 201/2

  19. Weighted moving average 30 – 25 – 20 – 15 – 10 – 5 – Actual sales Sales demand Moving average | | | | | | | | | | | | J F M A M J J A S O N D Example

  20. Weight Assigned to Most 2nd Most 3rd Most 4th Most 5th Most Recent Recent Recent Recent Recent Smoothing Period Period Period Period Period Constant (a) a(1 - a) a(1 - a)2a(1 - a)3a(1 - a)4 a = .1 .1 .09 .081 .073 .066 a = .5 .5 .25 .125 .063 .031 Exponential Smoothing • Ft+1 = αDt + α(1- α)Dt-1 + α(1- α)2Dt-2 + … • Ft+2 = αDt+1 + α(1- α)Dt + α(1- α)2Dt-1 + … = αDt+1 + (1- α)Ft+1 where 0 < α < 1. (typically, α is 0.1 to 0.3) Better for constant processes

  21. Effect of α • Larger α gives greater weight to new data • Use small values for  if demand is stable, larger values for  if demand is fluctuating

  22. Example Predicted demand = 142 Ford Mustangs Actual demand = 153 Smoothing constant a = .20 New forecast = .8 x 142 + .2 x 153 = 144.2 ≈ 144 cars

  23. 225 – 200 – 175 – 150 – Actual demand a = .5 Demand a = .1 | | | | | | | | | 1 2 3 4 5 6 7 8 9 Quarter Example

  24. Trend Process(Double Exponential Smoothing) • Simple exponential smoothing tends to lag behind a trend. Correct this by estimating the slope and multiply this slope by the number of periods. • At = αDt + (1- α)(At-1+Bt-1) • Bt = β(At-At-1) + (1- β)Bt-1 • Ft+k = At + kBt

  25. Example

  26. Seasonal Process • At = αDt/Ct-4 + (1- α)(At-1+Bt-1) • Bt = β(At-At-1) + (1- β)Bt-1 • Ct = γDt/At + (1- γ)Ct-4 • Ft+k = (At + kBt) Ct+k-4

  27. Example

  28. Causal Relationships – Linear (Multiple) Regression Model • A forecasting technique that assumes that the relationship between the dependent and independent variables. Useful if there is a strong relationship and a time lag between variables. • Yt = a + bXt where Yt is dependent variable to be solved for and Xt is independent variable. a is interceptand b is slope of the line.

  29. Example

  30. Forecast Error • Projection of past trends into the future • Bias errors • Consistent mistakes causing a forecast to be too high or too low: wrong models, wrong trend line, errors in shifting seasonal demand, undetected trends • Random errors • Variations (noise) in a forecast that cannot be explained by the forecast model

  31. Forecast Error Measurements • MAD (Mean absolute deviation) • MSE (Mean squared error) • MAPE (Mean absolute percent error)

  32. Rounded Absolute Rounded Absolute Actual Forecast Deviation Forecast Deviation Tonnage with for with for Quarter Unloadeda = .10 a = .10 a = .50 a = .50 1 180 175 5.00 175 5.00 2 168 175.5 7.50 177.50 9.50 3 159 174.75 15.75 172.75 13.75 4 175 173.18 1.82 165.88 9.12 5 190 173.36 16.64 170.44 19.56 6 205 175.02 29.98 180.22 24.78 7 180 178.02 1.98 192.61 12.61 8 182 178.22 3.78 186.30 4.30 82.45 98.62 MAD 10.31 12.33 MSE 190.82 195.24 MAPE 5.59% 6.76% Example

  33. Selection of Parameters

  34. Video Case Study • Describe three different forecasting applications. Name three other areas in which you think Hard Rock could use forecasting models. • Justify the use of the weighting system used for evaluating managers for annual bonuses. • Name several variables besides those mentioned in the case that could be used as good predictors of daily sales.

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