Operations Management Chapter 8: Forecasting
Four successful judgment methods are as follows:
(1) sales force estimates (2) executive opinion (3) consumer market research (4) the Delphi method.
Advantages of the naive forecast include:
- It is easy for users to understand. - It can serve as an accuracy standard for other techniques
Disadvantages of the naive forecast include:
- It is not very accurate. Because the forecast just traces the actual data - It does not smooth random variations
The cyclical pattern is difficult to predict
- because it is affected by national or international events - because of a lack of demand history reflecting the stages of demand from product development to decline
Forecasts can help a manager to do all of the following:
- reduce uncertainty in planning - design a system - plan the use of a system - schedule the use of a system
The Delphi method is useful:
- when no historical data are available - when you develop long-range forecasts and technological forecasting.
Three methods for averaging are:
1. simple moving average, 2. weighted moving average 3. exponential smoothing
Disadvantage of simple moving method
All values in the average are weighted equally
SSR / SST =
Explained Variation / Total Variation
Advantage of sales force estimates
Forecasts of individual salesforce members can be combined easily to get regional or national sales totals
Advantage of simple moving method
It is easy to compute and easy to understand
Demand Patterns
The repeated observations of the demand form a pattern known as a time series.
Exponential smoothing
To use the simple or weighted moving average methods, companies must keep huge databases dating back many years; the most frequently used formal forecasting method
simple linear regression analysis
When we have only two variables (a dependent variable and an independent variable)
Regression analysis
aims to determine the extent to which the independent variable (I.V.) can explain the variation in the dependent variable (D.V.)
If the correlation coefficient is negative,
an increase in "X" will result in a decrease in "Y"
If the correlation coefficient is positive
an increase in "X" will result in an increase in "Y"
The exponential smoothing method requires
an initial forecast
Sales force estimates
are forecasts compiled from estimates made periodically by members of a company's salesforce
averaging methods
are useful if we can assume that market demands will stay fairly steady over time
CFE
cumulative sum of forecast errors
weighted moving average method
each demand has the same weight in the average, namely 1/n;is similar to the simple moving average, except that it assigns more weight to the most recent values
The value of r can range
from -1.00 ≤ r ≤ 1.00
seasonal pattern
indicates that a time series increases or decreases due to calendar or climatic changes.
Executive opinion
is a forecasting method in which the opinions and experiences of high-level managers are summarized to arrive at a single forecast
cyclical pattern
is a pattern in annual data that tends to repeat every several years; is only used when making very long-range forecasts (more than 1 year or decades); It usually results from changes in economic conditions
Delphi method
is a process of gaining consensus from a group of experts while maintaining their anonymity; It uses a series of anonymous questionnaires to achieve a consensus forecast; Responses are anonymous; No group discussion is required.
Consumer market research
is a systematic approach to determine external customer interest in a service or product by creating and testing hypotheses through data-gathering surveys
trend pattern
is a systematic increase or decrease in an average demand; is a general upward or downward movement of the data for a long period of time
naive method
is a time-series method that uses a single previous value of a time series as the basis of a forecast
random variation
is one aspect of demand that makes every forecast inaccurate
advantage of the weighted moving average method
is that the weighted moving average is more reflective of the recent observations than the simple average forecast
forecast error for a given period t
is the difference found by subtracting the forecast from actual demand
The primary difference between the seasonal pattern and the cyclical pattern:
is the duration of the repeating patterns
horizontal demand pattern
is the fluctuation of data around a constant mean; data cluster
Time-series analysis
is the forecasting technique that attempts to predict the future demand by using only historical data
Forecasting
is the process of predicting the future
dependent variable
is the variable that we wish to predict or explain
independent (explanatory) variable
is the variable used to explain the variation in the dependent variable
Qualitative methods (forecasting technique)
judgment methods
MAD
mean absolute deviation; merely measures the average of the absolute forecast errors over a series of time periods
MAPE
mean absolute percent error; a measure that relates the forecast error to the level of demand and is useful for putting forecast performance in the proper perspective
MSE
mean squared error; measures the average of the squares of the forecast errors
correlation coefficient (r)
measures a direction and strength of the relationship between the independent variable and the dependent variable
coefficient of determination (R2)
measures the proportion of variation in the dependent variable that is explained by an independent variable(s) in a regression model
The zero value of r indicates
no linear relationship exists
estimated regression model
provides an estimate of the population regression model
simple moving average method
simply involves calculating the average demand for the "n" most recent periods and using it as the forecast for future time periods
σ
standard deviation of the errors; measure the dispersion of forecast errors attributed to trend
The closer to -1
the stronger the negative linear relationship
The closer to 1
the stronger the positive linear relationship
The closer to 0
the weaker the linear relationship
Judgment methods (forecasting technique)
translate the opinions of managers, expert opinions, consumer surveys, and sales force estimates into quantitative estimates; are widely used when introducing new products, redesigning existing products, and promoting sales on internet
The ratio of SSR / SST indicates
what proportion of the total variation of y can be explained by an independent variable in a regression model
Quantitative methods (forecasting technique)
• Causal methods (e.g., Linear regression) • Time-series methods (e.g., naive forecast)
Two steps are required to forecast the seasonal demand as follows:
• Step 1: Compute a seasonal index . 1. The seasonal index is a ratio of sales to a centered average. 2. The centered average should be positioned in the middle of the periods. • Step 2: Multiply an average seasonal index by the estimate of average demand.