Operations Management CH 8 Forecasting
Seasonal index
the percentage amount by which data for each season are above or below the mean.
Linear regression
the procedure that models a straight-line relationship between two variables.
Multiplicative seasonality
the seasonality expressed as a percentage of the average.
Dependent variable
the variable being forecast
Delphi weaknesses
time-consuming to develop.
Types of forecasting trends
trend adjusted exponential smoothing, linear trend line,
Random variation
unexplained variation that cannot be predicted.
Exponential smoothing
uses a sophisticated weighted average procedure to generate a forecast.
Collaborative planning, forecasting, and replenishment (CPFR)
a collaborative process between two trading partners that establishes formal guidelines for joint forecasting and planning.
Weighted moving average method
a forecasting method in which n of the most recent observations are averaged and past observations may be weighted differently, provided that all the weights add up to 1.
Forecast bias
a persistent tendency for a forecast to be over or under the actual value of the data.
Correlation coefficient
a statistic that measures the direction and strength of the linear relationship between two variables.
Linear trend line
a time series technique that computes a forecast with trend by drawing a straight line through a set of data.
Tracking signal
a tool used to monitor the quality of a forecast.
Selecting the right model
amout and type of available data, degree of accuracy required, length of forecast horizon, and data patterns present.
Market research
an approach that uses surveys and interviews to determine customer likes, dislikes, and preferences and to identify new-product ideas.
Seasonality
any data pattern that regularly repeats itself and is of a constant length.
Time series models characteristics
assume that all the information needed to generate a forecast is contained in the time series of data
Casual models
assume that the variable we wish to forecast is somehow related to other variables in the environment.
Naïve method
assumes that the next period's forecast is equal to the current periods actual.
Qualitative characteristics
based on human judgment, opinions; subjective and nonmathematical.
Quantitative forecasting method
based on mathematical modeling.
Quantitative characteristics
based on mathematics; quantitiative in nature.
Qualitative weaknesses
can bias the forecast and reduce forecast accuracy.
Qualitative strengths
can incorporate latest changes in the enviornment and "inside information"
Quantitative strengths
consistent and objective; able to consider much infomration and data at one time.
Trend
data exhibit an increasing or decreasing pattern over time.
Cycles
data patterns created by economic fluctuations.
Level or horizontal
data values fluctuate around a constant mean. This is the simplest pattern and the easiest to predict.
Steps in the process
decide what to forecast, evaluate and analyze appropriate data, select and test the forecasting model, generate the forecast, monitor forecast accuracy.
Multiple regression
develops a relationship between a variable and multiple independent variables.
Delphi strengths
excellent for forecasting long-term product demand, technological changes, and scientific advances.
Features of forecasting models
forecasts are rarely perfect, forecasts are more accurate for groups or families rather than for individual items, forecasts are more accurate for shorter than longer time horizons.
Market strengths
good determinant of customer preferences.
Executive strengths
good for strategic or new-product forecasting.
Overforecasting
having too much of an expensive product that will quickly become obsolete.
Simple moving average method
including only n of the most recent periods in the average.
Executive opinion
is a forecasting method in which a group of managers meet and collectively develop a forecast.
Delphi method
is a forecasting method in which the objective is to reach a consensus among a group of experts while maintaining their anonymity.
Time series
is a series of observations taken at regular intervals over a specified period of time.
Trend adjusted exponential smoothing
is the exponential smoothing model that is suited to data that exhibit a trend.
Market weaknesses
it can be difficult to develop a good questionnaire.
Time series models
level or horizontal, trend, seasonality, and cycles
Types of casual models
linear regression, correlation coefficeint, multiple regression
Types of level or horizontal patterns
naïve method, simple mean or average method, simple moving average method, weighted moving average method, exponential smoothing model
r = -1
negative relationship
r = 0
no relationship
Qualitative forecasting methods
often called judgmental methods, are methods in which the forecast is made subjectively by the forecaster.
Quantitative weaknesses
often quantifiable data are not available. Only as good as the data on which they are based.
Executive weaknesses
one person's opinion can dominate the forecast.
r = +1
perfect relationship
Forecasting
predicting the future
Level pattern models
simple mean, simple moving average, weighted moving average.
Independent variable
some other variable
Linear trend
straight line
Simple mean or average method
the average of a set of data.
Forecast error
the difference between forecast and actual value for a given period.
Lagging data
the forecasts are trailing behind the actual data, which happens when you apply a model that is good only for a level pattern to data that have a trend.
Mean squared error (MSE)
the measure of forecast error that computes error as the average of the squared error.
Mean absolute deviation (MAD)
the measure of forecast error that computes error as the average of the sum of the absolute error.