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Forecasting Stationary Series

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Forecasting Planning Forecast Customer Production Process Finished Goods Inputs Forecasting Marketing: forecasts sales for new and existing products. – PowerPoint PPT presentation

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Title: Forecasting Stationary Series


1
Forecasting
2
(No Transcript)
3
Forecasting
  • Marketing forecasts sales for new and
  • existing products.
  • Production uses sales forecasts to plan
  • production and operations sometimes
  • involved in generating sales forecasts.

4
Characteristics of Forecasts
  • They are usually wrong
  • A good forecast is usually more than a single
    number
  • Aggregate forecast are more accurate
  • The longer the forecasting horizon, the less
    accurate the forecasts will be
  • Forecasts should not be used to the exclusion of
    known information

5
Forecasting Horizon
  • Short term
  • (inventory management, production plans..)
  • Intermediate term
  • (sales patterns for product families..)
  • Long term
  • (long term planning of capacity needs)

6
Forecasting Techniques
Forecasting Technique


Judgmental Models
Time Series Methods
Causal Methods
Delphi Method
Moving Average
Regression Analysis
Exponential Smoothing
Seasonality Models
7
Types of forecasting Methods
  • Subjective methods
  • FREE HAND METHOD
  • Objective methods
  • SEMI AVERAGE
  • EVEN DATA
  • ODD DATA
  • LEAST SQUARE
  • TREND MOMENT

8
FREE HAND METHOD
9
SEMI AVERAGE EVEN DATA
10
Y a bX

No. Year Sales (Y-axis) Base time (X-axis)
1 1988 1850 0 ? 1-6 11520
2 1989 1800 1 Y1 1920
3 1990 1900 2 X1 2.5
4 1991 2000 3
5 1992 1950 4
6 1993 2020 5 a 3514.81 and b 291.72 a 3514.81 and b 291.72 a 3514.81 and b 291.72
7 1994 1980 6 ? 7-12 11979
8 1995 1960 7 Y2 1996.5
9 1996 2000 8 X2 8.5
10 1997 2200 9
11 1998 2240 10
12 1999 2220 11

11
SEMI AVERAGE ODD DATA
12
Y a bX
No. Year Sales (Y-axis) Base time (X-axis)
1 1988 1850 0 ? 1-5 9500
2 1989 1800 1 Y1 1900
3 1990 1900 2 X1 2
4 1991 2000 3
5 1992 1950 4
6 1993 2020 5 a 1868 and b 16 a 1868 and b 16
7 1994 1980 6 ? 7-11 9980
8 1995 1960 7 Y2 1996
9 1996 2000 8 X2 8
10 1997 2200 9
11 1998 2240 10

13
TREND MOMENT METHOD
14
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15
LEAST SQUARE METHOD
16
EVEN DATA CASE
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