Multiple Regression Analysis

In multi regression analysis, the regression equation is used where demand for commodity is deemed to be the functions of many variables; the process of multi regression analysis may be briefly described as:

  • The first step in multiple regression analysis is to specify the variables that are supposed to explain the variations in demand for the product under reference. The explanatory variables are generally chosen from the determinants of demand, viz. price of the product, price of its substitute, consumer’s income and their tastes and preference. For estimating the demand for durable consumer goods (e.g. TV sets refrigerators, houses etc,), the explanatory variables which are considered are availability of credit and rate of interest. For estimating the demand of capital goods (e.g. machinery, and equipment) the relevant variables are additional corporate investments, rate of depreciation, cost of capital goods cost of other inputs (e.g., labor and raw materials) market rate of interest etc.
  • Once the explanatory or independent variable is specified, the second step is to collect time-series data on the independent variables.
  • After necessary data is collected, the next step is to specify the form of the equation which can appropriately describe the nature and extent of relationship between the dependent and the independent variables.
  • The final step is to estimate the parameters in the chosen equations with the help of statistical techniques. The multivariate equation cannot be easily estimated manually. They have to be estimated with the help of computers.

The reliability of the demand forecast depends to a large extent on the form of equation and degree of consistency of the explanatory variables in the estimated demand function. The greater the degree of consistency, the higher the reliability of the estimated demand and vice versa adequate precautions should, therefore, be taken in specifying the equation to be estimated

Selection of the Forecasting Model: We have discussed several statistical forecasting models for demand estimation in planning and control. As a manager, you now have the task of selecting the best model for your needs. Which one should you choose, and what criteria should you use to make the decision. The most important criteria are:

  • Cost , and
  • Accuracy

Accuracy (forecast error), can be converted into cost. Costs to be considered in the model selection are;

  • Implementation costs,
  • Systemic costs
  • Forecast error costs.

Of these three, forecast error costs are perhaps the most complex to evaluate. They depend upon the noise in the time series, the demand pattern, the length of forecast period and the measure of the forecast error. Several studies have evaluated and compared the performance of different models. In general, different models are best, depending on the demand pattern, noise levels and length of the forecast period .It is typical to have a choice of several good models for any one demand pattern, when the choice is based only on forecast error

Combining Naïve Forecasting Models: In comprehensive studies it has been found that average and weighted average methods of forecasting is different from other forecasting methods from these studies we can conclude that forecasting accuracy improves, and that the variability of accuracy among different combinations decreases, as number of methods in the average increases. Combining forecast models holds considerable promise for operations. As Makridakis and Walker state “Combining forecasts seem to be reasonable practical alternatives when , as is often the case a true model of the data-generating process or single best forecast method cannot or is not, for whatever reason, identified.”

Behavioral Dimensions of Forecasting: To understand some of the dimensions of forecasting, it is wise to consider human behaviors, because forecasts are not always made with statistical models. Individuals can and do forecasts by intuitively casting forth past data, and they often intervene in other ways in the statistical forecasting procedure as well. A manager may feel that item forecast generated by models must be checked for reasonableness by qualified operating decision makers. Forecasts generated by models should not be followed blindly; potential cost consequences must be considered. Decision makers can take into account qualitative data that are not in the model. Decision makers should use the forecasting model as an aid in decision making; they should not rely totally on the forecasting models for all decisions. Many, perhaps most, forecasts for production/operation management are individual intuitive forecasts.

Intuitive Forecasting as a Judgmental Process: Currently, little is known about the effectiveness of intuitive forecasting. We can, however analyze some of the mental processes involved. A forecast may be regarded as the culmination of a process consisting of several stages, including information search and information processing. It results in human inferences about the future that are based on particular patterns of historical data presented to the forecaster. We can speculate about a number of environmental factors that may affect intuitive forecasting.

Meaningfulness: Forecasting requires considering a restricted set of information about historical demand. When we discuss job enrichment and job design we see that if repetitive tasks can be made meaningful to the person performing them, positive effects usually result. Imparting meaningfulness to the task of forecasting, then, may be expected to affect the reliability of intuitive forecasting task, the more accurate the intuitive forecast.

Pattern Complexity: Pattern complexity, the shape of demand pattern, is in general, a critical variable in intuitive forecasting, just as it is in model forecasting. Some behavioral studies suggest that intuitive forecasts may perform better on a linear than on non-linear demand patterns. In addition, people apparently try to use non-linear date in a linear manner.

Degree of Noise: Given sufficient historical data, the forecasting problems are trivial for most cases without noise. Introducing random variations, however, often it brings about a condition called cue uncertainty. Very high noise levels obscure the basis for accurate forecasting, and often the result is lower forecast accuracy.

Individual Variability: Another finding in intuitive forecasting studies which is the wide variability of performance of the forecasters. When comparing forecasters with models, there are typically a few very good forecasters, but there are even more very poor forecasters. If planning and directing production and operation are based on poor intuitive forecasts, these variations in performance can be very expensive.

Individual versus Model Performance: How do individuals compare to naïve forecasting models? In studies, exponential smoothening models, when fit to the historical demands given to intuitive forecasters significantly outperformed group average performance. Only a very few good intuitive forecasters outperformed the models. The operation manager would be wise to consider models as an alternative to individuals. Models generally are more accurate, and if large number of items must be forecast, the models are more economical.

Forecasting, Planning and Behavior: An excellent literature review and evaluation compares many modeling and psychological dimensions of forecasting, planning and decision making. Many information processing limitation and biases involving human judgment apply to forecasting and planning as well. Errors in forecasting procedures are caused by using redundant information, failing to seek possible disconfirming evidence, and being overconfident about judgments. In addition, numerous studies show that predictive judgment of humans is frequently less reliable than that of simple quantitative models.

Linear Regression Analysis
Other Forecasting Methods

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