Bí kíp về Which of the following managerial tools provides the best control over the expenditures and revenues in a firm? Mới Nhất
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journal article Managerial and Stockholder Welfare Models of Firm Expenditures The Review of Economics and Statistics Vol. 54, No. 1 (Feb., 1972) , pp. 9-24 (16 pages) Published By: The MIT Press https://doi.org/10.2307/1927491 https://www.jstor.org/stable/1927491 Read and Log in through your school or library Alternate access options For independent researchers Read Online Read 100 articles/month không lấy phí Subscribe to JPASS Unlimited reading + 10 downloads Purchase article $19.00 – Download now and later Journal The Review of Economics and Statistics is an 84-year old general journal of applied (especially quantitative) economics. Edited at Harvard University’s Kennedy School of Government, The Review has published some of the most important articles in empirical economics. From time to time, The Review also publishes collections of papers or symposia devoted to a single topic of methodological or empirical interest. Publisher Information Among the largest university presses in the world, The MIT Press publishes over 200 new books each year along with 30 journals in the arts and humanities, economics, international affairs, history, political science, science and technology along with other disciplines. We were among the first university presses to offer titles electronically and we continue to adopt technologies that allow us to better tư vấn the scholarly mission and disseminate our content widely. The Press’s enthusiasm Rights & Usage This item is part of a JSTOR Collection.
In virtually every decision they make, executives today consider some kind of forecast. Sound predictions of demands and trends are no longer luxury items, but a necessity, if managers are to cope with seasonality, sudden changes in demand levels, price-cutting maneuvers of the competition, strikes, and large swings of the economy. To handle the increasing variety and complexity of managerial forecasting problems, many forecasting techniques have been developed in recent years. Each has its special use, and care must be taken to select the correct technique for a particular application. The manager as well as The selection of a method depends on many factors—the context of the forecast, the relevance and availability of historical data, the degree of accuracy desirable, the time period to be forecast, the cost/ benefit (or value) of the forecast to the company, and the time available These factors must be weighed constantly, and on a variety of levels. In general, for example, the forecaster should choose a technique that makes the best use of available data. If the forecaster can readily apply one technique of acceptable accuracy, he or she should not try to “gold plate” by using a more advanced technique that offers potentially greater accuracy but that requires nonexistent information or information that is costly to obtain. This kind of Read more aboutFurthermore, where a company wishes to forecast with reference to a particular product, it must consider the stage of the product’s life cycle for which it is making the forecast. The availability of data and the possibility of establishing relationships between the factors depend directly on the maturity of a product, and Our purpose here is to present an overview of this field by discussing the way a company ought to approach a forecasting problem, describing the methods available, and explaining how to match method to problem. We shall illustrate the use of the various techniques from our experience with them at Corning, and then close with our own forecast for the future of forecasting. Although we believe Manager, Forecaster & Choice of MethodsA manager generally assumes that when asking a forecaster to prepare a specific projection, the request itself provides sufficient information for the forecaster to go to work and do the job. This is almost never true. Successful forecasting begins with a collaboration between the manager and the 1. What is the purpose of the forecast—how is it to be used? This determines the accuracy and power required of the techniques, and hence governs selection. Deciding whether to enter a business may require only a rather gross estimate of the size of the market, whereas a forecast made for budgeting purposes should be quite accurate. The appropriate techniques differ accordingly. Again, if the forecast is Forecasts that simply sketch what the future will be like if a company makes no significant changes in tactics and strategy are usually not good enough for planning purposes. On the other Techniques vary in their costs, as well as in scope and accuracy. The manager must fix the level of inaccuracy he or she can tolerate—in other words, decide how his or her decision will vary, depending on the range of accuracy of the For example, in production and inventory control, increased accuracy is likely to lead to lower safety stocks. Here the manager and forecaster must weigh the cost of a more sophisticated and more expensive technique against potential savings in inventory costs. Exhibit I shows how cost and accuracy increase with sophistication and charts this against the corresponding cost of Exhibit I Cost of Forecasting Versus Cost of Inaccuracy For a Medium-Range Forecast, Given Data Availability Once the manager has defined the purpose of the forecast, the forecaster 2. What are the dynamics and components of the system for Exhibit II displays these elements for the system through which CGW’s major component for color TV sets—the bulb—flows to the consumer. Note the points where inventories are Exhibit II Flow Chart of TV Distribution System All the elements in dark gray directly affect forecasting procedure to some extent, and the color key The flow chart should also show which parts of the system are under the control of the company doing the forecasting. In Exhibit II, this is merely the volume of glass panels and funnels supplied by Corning to the tube manufacturers. In The Daily Alert Stay on top of our latest content with links to all the digital articles, videos, and The flow chart has special value for the forecaster where causal prediction methods are called for because it enables him or her to conjecture about the possible variations in sales levels caused by inventories and the like, and to determine which factors must be considered by the technique to provide the executive with a forecast of acceptable accuracy. Once these factors and their relationships 3. How important is the past in estimating the future? Significant changes in the system—new products, new competitive strategies, and so forth—diminish the similarity of past and future. Over the short term, recent changes are unlikely to cause overall patterns to alter, but over the Three General TypesOnce the manager and the forecaster have formulated their problem, the forecaster will be in a position to choose a method. There are three basic types—qualitative techniques, time series analysis and projection, and causal models. The first uses qualitative data (expert opinion, for example) and information about special events of The second, on the other hand, focuses entirely on patterns and pattern changes, and thus relies entirely on historical data. The third uses highly refined and specific information about relationships between system elements, and is powerful enough to take special events formally into account. As with time series analysis and projection techniques, the past is important to causal models. These The major part of the balance of this article will be concerned with the problem of suiting the technique to the life-cycle stages. We hope to give the executive insight into the Qualitative techniquesPrimarily, these are used when data are scarce—for example, when a product is first introduced into a market. They use human judgment and rating schemes to turn qualitative information into quantitative estimates. The objective here is to bring The multi-page chart “Basic Forecasting Techniques” presents several examples of this type (see the first Basic Forecasting Techniques A The reader Time series analysisThese are statistical techniques used when several years’ data for a product or product line are available and when relationships and trends are both clear and relatively stable. One of the basic principles of statistical forecasting—indeed, of all forecasting when historical data are available—is that the forecaster should use the data on past performance to get a The matter is not so simple as it sounds, however. It is usually difficult to make projections from raw data since the rates and trends are not immediately obvious; they are mixed Now, a time series is a set of chronologically ordered points of raw data—for example, a division’s sales of a given product, by month, for several years. Time series analysis helps to identify and explain:
(Unfortunately, most existing methods identify only the seasonals, the combined effect of trends and cycles, and the irregular, or chance, component. That is, they do not separate trends from cycles. We shall return to Once the analysis is complete, the work of projecting future sales (or whatever) can begin. We should note that while we have separated analysis from projection here for purposes of explanation, most statistical forecasting techniques actually combine both functions in a single operation. A future like the past:It is obvious from this description that all statistical techniques For this same reason, these techniques ordinarily cannot predict when the rate of growth in a trend Such points are called turning points. They are naturally of the greatest consequence to the manager, and, as we shall see, the forecaster must use different tools from pure statistical techniques to predict when they will occur. Causal modelsWhen historical data are available and enough analysis has been performed to spell out explicitly A causal model is the most sophisticated kind of forecasting tool. It expresses mathematically the relevant causal relationships, and may include pipeline considerations (i.e., inventories) and market survey information. It may also directly incorporate the results of a time series The causal model takes into account everything known of the dynamics of the flow system and utilizes predictions of related events such as competitive actions, strikes, and promotions. If the data are available, the model generally includes factors for each location in the flow chart (as illustrated in Exhibit II) and connects these by equations to describe overall product flow. If certain kinds of data are lacking, initially it may be necessary to make assumptions about some of the Again, see the gatefold for a rundown on the most common types of causal techniques. As the chart shows, causal models are by far the best for predicting turning points and preparing long-range forecasts. Methods, Products & the Life CycleAt each stage of the life of a product, from Exhibit Equally, different products may require different kinds of forecasting. Two CGW products that have been handled quite differently are the major glass components for color TV tubes, of which Corning is a prime supplier, and Corning Ware cookware, a proprietary consumer product line. We shall trace the forecasting methods used at each of the four different stages of maturity of these Before we begin, let us note how the situations differ for the two kinds of products:
Many of the changes in shipment rates and in overall profitability are therefore due to actions taken by manufacturers themselves. Tactical decisions on promotions, specials, and pricing are usually at their discretion as well. The technique selected by the forecaster for projecting sales therefore should permit incorporation of such “special information.” One may have to start with simple techniques and work up to more sophisticated ones that embrace such possibilities,
Between these two examples, our discussion will embrace nearly the whole range of forecasting techniques. As necessary, however, we shall touch on other products and other forecasting methods. 1. Product DevelopmentIn the early stages of product development, the manager wants answers to questions such as these:
Forecasts that help to answer these long-range questions must necessarily have long A common objection to much long-range forecasting is that it is virtually impossible to predict with accuracy what will happen several years into the future. We agree that uncertainty increases when a forecast is made for a period more than two years out. However, at the very least, the forecast and a measure of its accuracy enable the manager to know the risks in pursuing a selected strategy and in this knowledge to choose an appropriate strategy from those Systematic market research is, of course, a mainstay in this area. For example, priority pattern analysis can describe consumers’ preferences and the likelihood they will buy a product, and thus is of great value in forecasting (and updating) penetration levels and rates. But there are other tools as well, depending on the state of the market and the product concept. For a defined marketWhile there can be no direct data about a product that is still a gleam in the First, one can compare a proposed product with competitors’ present and planned products, ranking it on quantitative scales for different factors. We call this product differences measurement.2 If this approach is to be successful, it is essential that the (in-house) experts who provide the basic data come Second, and more formalistically, one can construct disaggregate market models by separating off different segments of a complex market for individual study and consideration. Specifically, it is often useful to project the S-shaped growth curves for the levels of income of different geographical regions. When color TV bulbs were proposed as a Third, one can compare a projected product with an “ancestor” that has similar characteristics. In 1965, we disaggregated the market for color television by income levels and The prices of black-and-white TV and other major household appliances in 1949, consumer disposable income in 1949, the prices of color TV and other appliances in 1965, and consumer disposable income for 1965 were all profitably considered in developing our long-range forecast for color-TV penetration on a national basis. The success patterns of black-and-white TV, then, provided insight into the likelihood of success and sales potential of color TV. Our predictions of consumer acceptance of Corning Ware cookware, on the other hand, were derived primarily from one expert source, a manager who thoroughly understood consumer preferences and the housewares market. These predictions have been well borne out. This reinforces our belief that sales forecasts for a new product that will compete in an existing market are bound to be incomplete and uncertain unless one culls the best judgments of fully experienced personnel. For an undefinedFrequently, however, the market for a new product is weakly defined or few data are available, the product concept is still fluid, and history seems irrelevant. This is the case for gas turbines, electric and steam automobiles, modular housing, pollution measurement devices, and time-shared computer terminals. Many organizations have applied the Delphi method of soliciting and consolidating experts’ opinions under these circumstances. At CGW, in several instances, we have Input-output analysis, combined with other techniques, can be extremely useful in projecting the future course of broad technologies and broad changes in the economy. The basic tools here are the input-output tables of U.S. industry for 1947, 1958, and 1963, and various updatings of the 1963 tables prepared by a number of groups who wished to extrapolate the 1963 figures or to make forecasts for later years. Since a 2. Testing & IntroductionBefore a product can enter its (hopefully) rapid penetration stage, the market potential must be tested out and the product must be introduced—and then more market testing may be advisable. At this stage, management needs answers to these questions:
Significant profits depend on finding the right answers, and it is therefore economically feasible to expend relatively large amounts of effort and money on obtaining good forecasts, short-, medium-, A sales forecast at this stage should provide three points of information: the date when rapid sales will begin, the rate of market penetration during the rapid-sales stage, and the ultimate level of penetration, or sales rate, during the steady-state stage. Using early dataThe date when a product will enter the rapid-growth stage is hard to Furthermore, the greatest care should be taken in analyzing the early sales data that start to accumulate once the product has been introduced into the market. For example, it is important to Tracking the two groups means market research, possibly via opinion panels. A panel ought to contain both innovators and imitators, The color TV set, for example, was introduced in 1954, but did not gain acceptance from the majority of consumers until late 1964. To be sure, the color TV set could not leave the introduction stage and enter the rapid-growth stage until the networks had substantially increased their color programming. However, special flag signals like Similar-product techniqueAlthough statistical tracking is a useful tool during the early introduction stages, there are rarely sufficient data for statistical forecasting. Market research Again, let’s consider color television and the forecasts we prepared in 1965. For the year 1947–1968, Exhibit IV shows Exhibit IV Certain special fluctuations in these figures are of special significance here. When black-and-white TV was introduced as a new product in 1948–1951, the ratio of expenditures on radio and TV sets to total expenditures for consumer goods (see column 7) increased about 33% (from 1.23% to 1.63%), as against a modest increase of only 13% (from Probably the acceptance of black-and-white TV as a major appliance in 1950 caused the ratio of all major household appliances to total consumer goods (see column 5) to rise to 4.98%; in other words, the innovation of TV caused the consumer to start spending more money on major appliances around Our expectation in mid-1965 was that the introduction of color TV would induce a similar increase. Thus, although this product comparison did not provide us with an accurate or detailed forecast, it did place an upper bound on the future total sales we could expect. The next step was to look at the cumulative penetration curve for black-and-white TVs in U.S. households, shown in Exhibit V. We assumed color-TV penetration would have a similar S-curve, but that it would take Exhibit V Long-term Household Penetration Curves for Color and Black-and-White TV At With these data and assumptions, we forecast retail sales for the remainder of 1965 through mid-1970 (see the dotted section of the lower curve in Exhibit V). The forecasts were accurate through 1966 but too high in the following three years, We should note that when we developed these forecasts and techniques, we recognized that additional techniques would be necessary at later times to maintain the accuracy that would be needed in subsequent periods. These forecasts provided acceptable accuracy for the time they were made, however, since the major goal then was only to estimate the penetration rate and the ultimate, steady-state level of Other approaches:When it is not possible to identify a similar product, as was the case with CGW’s self-cleaning oven and flat-top cooking range (Counterange), another approach must be used. For the purposes of initial introduction into the markets, it may only be necessary to determine the minimum sales rate required Predicting rapid growthTo estimate the date by which a product will enter the rapid-growth stage is another matter. As we have seen, this date is a As well as by reviewing the behavior of similar products, the date may be estimated through Delphi exercises or through rating and ranking schemes, whereby the factors important to customer acceptance are estimated, each competitor product is rated on each factor, and As we have said, it is usually difficult to forecast precisely when the turning point will occur; and, in our experience, the best accuracy that can be expected is within three months to two years of the actual time. It is occasionally true, of course, that one can be certain a new product will be enthusiastically accepted. Market tests and initial customer reaction made it clear there would be a 3. Rapid GrowthWhen a product enters this stage, the most important decisions relate to facilities expansion. These decisions generally involve the largest expenditures in the cycle Forecasting and tracking must provide the executive with three kinds of data at this juncture:
Forecasting the growth rateMedium- and long-range forecasting of the market growth rate and of the attainment of steady-state sales requires the same measures as does the product introduction stage—detailed marketing studies (especially intention-to-buy surveys) and product comparisons. When a product has entered rapid growth, on the other hand, there are generally sufficient data available to We estimated the growth rate and steady-state rate of color TV by a crude econometric-marketing model from data available at the beginning of this stage. We conducted frequent marketing studies as well. The growth rate for Corning Ware Cookware, as we explained, was limited primarily by our production capabilities; and As well as merely buffering information, in the case of a component product, the pipeline exerts certain distorting effects on the Simulating the pipelineWhile the ware-in-process demand in the pipeline has an S-curve like that of retail sales, it may lag or lead sales by several months, distorting the shape of the demand on the component supplier. Exhibit VI shows the long-term trend of demand on a component supplier other than Corning as a function of Exhibit VI Patterns for Color-TV Distributor Sales, Distributor Inventories, and Component Sales Note: Scales Here we have used components for color TV sets for our illustration because we know from our own experience the importance of the long flow time for color TVs that results from the many sequential steps in manufacturing and distribution (recall Exhibit II). There are more spectacular examples; for instance, it is not uncommon To estimate total demand on CGW production, we used a retail demand model and a pipeline simulation. The model incorporated penetration rates, mortality curves, and the like. We combined the data generated by the model with market-share data, data on glass losses, and other information to make up the corpus of inputs for the pipeline simulation. The simulation output allowed us Simulation is an excellent tool for these circumstances because it is essentially simpler than the alternative—namely, building a more formal, more “mathematical” model. That is, simulation bypasses the need for analytical solution techniques and for mathematical duplication of a complex environment and allows experimentation. Simulation also informs us how the pipeline elements will Tracking & warningThis knowledge is not absolutely “hard,” of course, and pipeline dynamics must be carefully tracked to determine if the various estimates and assumptions made were indeed correct. Statistical methods provide a good short-term basis for estimating and checking the growth rate and signaling when turning points will In late 1965 it appeared to us that the ware-in-process demand was increasing, since there was a consistent positive difference between actual TV bulb sales and forecasted bulb sales. Conversations with product managers and other personnel indicated there might have been a significant change in pipeline activity; it appeared that rapid increases in retail demand were boosting glass requirements for ware-in-process, which could create a hump in the S-curve like the one illustrated in The inventories all along the pipeline also follow an S-curve (as shown in Exhibit VI), a fact that creates and compounds two characteristic conditions in the pipeline as a whole: initial overfilling and subsequent shifts between For example, the simpler distribution system for Corning Ware had an S-curve like the ones we have examined. When the retail sales slowed from rapid to normal growth, however, there were no early indications from shipment data that this crucial turning point had been reached. Data on distributor inventories gave us some warning that the pipeline was over filling, but the turning point at Main concernsOne main activity during the rapid-growth stage, then, is to check earlier estimates and, if they appear incorrect, to compute as accurately as possible the error in the forecast and obtain a revised estimate. In Equally, during the rapid-growth stage, submodels of We also The preceding is only one approach that can be used in forecasting sales of new products that are in a rapid growth. Others have discussed different ones.3 4. Steady StateThe decisions the manager at this stage are quite different from those made earlier. Most of
The manager will also need a good tracking and warning system to identify significantly declining demand for the product (but hopefully that is a long way off). To be sure, the manager will want margin and profit projection and long-range forecasts to assist planning at the corporate level. However, short- and medium-term sales Adequate tools at handIn planning production and establishing marketing strategy for the short and medium term, the manager’s first considerations are usually an accurate estimate of the present sales level and an accurate estimate of the rate at which this level is changing. The forecaster thus is called on for two related contributions at this stage:
The type of product under scrutiny is very important in selecting the techniques to be used. For Corning Ware, where the levels of the distribution system are organized in a relatively straightforward way, we use statistical methods to forecast shipments and field information to forecast changes in shipment rates. We are now in the process of incorporating special information—marketing strategies, economic forecasts, and so on—directly into the On the other hand, a component supplier may be able to forecast total sales with sufficient accuracy for broad-load production planning, but the pipeline environment may be so complex that the best recourse for short-term projections is to rely primarily on salespersons’ estimates. We find this true, for example, in estimating the demand for TV glass by size and customer. In such cases, the best role for In general, however, at this point in the life cycle, sufficient time series data are available and enough causal relationships are known from direct experience and market studies so that the forecaster can indeed apply these two powerful sets of tools. Historical data for at least the last several years should be available. The forecaster will use all of it, one way or another. We might mention a common We think this point of view had little validity. A graph of several years’ sales data, such as the one shown in Part A of Exhibit VII Data Plots of Factory Sales of Color TV Sets In practice, we find, overall patterns tend to continue for a minimum of one or two For short-term forecasting for one to three months ahead, the effects of such factors as general economic conditions are minimal, and do not cause radical shifts in demand patterns. And because trends tend to change gradually rather than suddenly, statistical and other quantitative methods are excellent for short-term forecasting. Using one or Not directly related to product life-cycle forecasting, but still important to its success, are certain applications which we briefly mention here for those who are particularly interested. Inventory ControlWhile the X-11 method and econometric or causal models Some of the requirements that a forecasting technique for production and inventory control purposes must meet are these:
One of the first techniques developed to meet these criteria is called exponential smoothing, where the most recent data points are given greater weight than previous data points, and where very little data storage is required. This technique is a considerable improvement over the Adaptive forecasting also meets these criteria. An extension of exponential smoothing, it computes seasonals and thereby provides a more accurate forecast than can be obtained by exponential smoothing if there is a significant seasonal. There are a number of variations in the exponential smoothing and adaptive forecasting methods; however, all Virtually all the statistical techniques described in our discussion of the steady-state phase except the X-11 should be categorized as special cases of the recently developed Box-Jenkins technique. This technique requires considerably more computer time for each item and, at the present time, human attention as well. Until However, the Box-Jenkins has one very important feature not existing in the other statistical techniques: the ability to incorporate special information (for example, price changes and economic data) into the forecast. The reason the Box-Jenkins and the X-11 are more costly than other statistical techniques is that the user must select a particular version of the We expect that better computer methods will be developed in the near future to significantly reduce these costs. Group-Item ForecastsIn some instances where statistical methods do not provide acceptable accuracy for individual items, one Forecasters commonly use this approach to get acceptable accuracy in situations where it is virtually impossible to obtain accurate forecasts for individual items. Long-Term DemandsAlso, it is sometimes possible to accurately forecast long-term demands, even though the short-term swings may be so chaotic that they cannot be accurately forecasted. Hence, two types of forecasts are needed:
For this reason, and because the low-cost forecasting techniques such as exponential smoothing and adaptive forecasting do not permit the incorporation of special information, it is advantageous to also use a more sophisticated technique such as the X-11 for groups of items. This technique is applied to analyze and forecast rates for total businesses, and also to Granting the applicability of the techniques, we must go on to explain how the forecaster identifies precisely Sorting trends & seasonalsA trend and a seasonal are obviously two quite different things, and they must be handled separately in forecasting. Consider what would happen, for example, if a forecaster were merely to take an average of the most recent data points along a curve, combine this with other, similar average points stretching backward into the immediate To avoid precisely this sort of error, the moving average technique, which is similar to the hypothetical one just described, uses data points in such a way that the effects of seasonals (and irregularities) are eliminated. Furthermore, the executive needs accurate Before going any further, it might be well to illustrate what such sorting-out looks like. Parts A, B, and C of Exhibit VII show the initial decomposition of raw data for factory sales of color TV sets Part C shows the result of discounting the raw data curve by the seasonals of Part B; this is the so-called deseasonalized data curve. Next, in Part D, In sum, then, the objective of the forecasting technique used here is to do the best possible job of sorting out trends Still, sorting-out approaches have proved themselves in practice. We can best explain the reasons for their success by roughly outlining the way we construct a sales forecast
In special cases where there are no seasonals to be considered, of course, this We have found that an analysis of the patterns of change in the growth rate gives us more accuracy in predicting turning points (and therefore changes from positive to negative growth, and vice versa) than when we use only the trend cycle. The main advantage of considering growth change, in fact, is that it is frequently possible to predict earlier when a no-growth situation will occur. The graph of X-11 techniqueThe reader will be curious to know how one breaks the seasonals out of raw sales data and exactly how one derives the change-in-growth curve from the trend line. One of the best techniques we know for analyzing historical data in depth to determine seasonals, present sales rate, and growth is the X-11 Census Bureau Technique, which Although the X-11 was not originally developed In particular, when recent data seem to reflect sharp growth or decline in sales or any other Generally, even when growth patterns can be associated with specific events, the X-11 technique and other statistical methods do not give good results when forecasting beyond six months, because of the uncertainty or We have used it to provide sales estimates for each division for three periods into the future, as well as to determine changes in sales rates. We have compared our X-11 forecasts with forecasts developed by each of several divisions, where the divisions have used a variety of methods, some of which take into account salespersons’ estimates and other The division forecasts had slightly less error than those provided by the X-11 method; however, the division forecasts have been found to be slightly biased on the optimistic side, whereas those provided by the X-11 method are unbiased. This suggested to us that a better job of forecasting could be done by combining special knowledge, the The X-11 method has also been used to make sales projections for the immediate future to serve as a standard for evaluating various marketing strategies. This has been found to be especially effective for estimating the effects of price changes and promotions. As we have indicated earlier, trend analysis is frequently Econometric modelsOver a long period of time, changes in general economic conditions will account for a However, the development of such a model, usually called an econometric model, requires sufficient data so that the correct During the rapid-growth state of color TV, we recognized that economic conditions would probably effect the sales rate significantly. However, the macroanalyses of black-and-white TV data we made in 1965 for the recessions in the late 1940s and early 1950s did not show any substantial economic effects at all; hence we did not have sufficient data to establish good econometric relationships for a color TV model. (A later investigation did establish definite In 1969 Corning decided that a better method than the X-11 was definitely needed to predict turning points in retail sales for color TV six months to two years into the future. Statistical methods and salespersons’ estimates cannot spot these turning points far enough in advance to assist decision making; for example, a production manager should have three to six months’ warning of such changes in order to maintain a stable work Adequate data seemed to be available to build an econometric model, and analyses were therefore begun to develop such a model for both black-and-white and color TV sales. Our knowledge of seasonals, trends, and growth for these products formed a natural base for constructing the equations of the models. The economic inputs for the model are primarily obtained from information generated by the Wharton Econometric Model, but other sources are also utilized. Using data In the steady-state phase, Finally, through the steady-state phase, it is useful to set up quarterly reviews where statistical tracking and warning charts and new information are brought forward. At these meetings, the decision to revise or update a model or forecast is weighed against various costs and the Forecasting in the FutureIn concluding an article on forecasting, it is appropriate that we make a prediction about the techniques that will be used in the short- and long-term future. As we have already said, it is not too difficult to forecast the immediate future, since long-term trends do not change overnight. Many of the techniques described are only The costs of using these techniques will be reduced significantly; this will enhance their implementation. We expect that computer timesharing companies will offer access, at nominal cost, to input-output data banks, broken down into more business segments than are available today. The continuing declining trend in At the present time, most short-term forecasting uses only statistical methods, with little qualitative information. Where qualitative information is used, it is only used Econometric models will be utilized more extensively in the next five years, with most large companies developing and refining econometric models of their major businesses. Marketing simulation models for new products will also be developed for the While some companies have already developed their own input-output models in tandem with the government input-output data and statistical projections, it will be another five to ten years before input-output models are effectively used by most major corporations. Within five years, however, we shall see extensive use of Further out, consumer simulation models will become commonplace. The models will predict the behavior of consumers and forecast their reactions to various marketing strategies such as pricing, promotions, new product introductions, and competitive actions. Probabilistic models will be used frequently in the forecasting process. Finally, most computerized forecasting will relate to the analytical techniques described in this Final WordWith an understanding of the basic features and limitations of the techniques, the decision maker can help the forecaster formulate the forecasting problem properly and can therefore have more confidence in the forecasts provided and use them more effectively. The forecaster, in turn, must The need today, we believe, is not for better forecasting methods, but for better application of the techniques at hand. 1. See Harper Q.. North and Donald L. Pyke, “‘Probes’ of the Technological Future,” HBR May–June 1969, p.. 68. 2. See John C. Chambers, Satinder K. Mullick, and David A. Goodman, “Catalytic Agent for Effective Planning,” HBR January–February 1971, p.. 110. 3. See Graham F. Pyatt, A version of this Which of the following usually is the first step in the process for establishing sales territories?Prospecting The first step in the sales process is prospecting. In this stage, you find potential customers and determine whether they have a need for your product or service—and whether they can afford what you offer. Which of the following is the best reason for continuing to carry a product when a sales volume analysis indicates it is a low volume item?Which of the following is the best reason for continuing to carry a product when a sales volume analysis indicates it is a low-volume item? The item is needed to round out the company’s product line. |
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