fbpx
Wikipedia

Demand forecasting

Demand forecasting refers to the process of predicting the quantity of goods and services that will be demanded by consumers at a future point in time.[1] More specifically, the methods of demand forecasting entail using predictive analytics to estimate customer demand in consideration of key economic conditions. This is an important tool in optimizing business profitability through efficient supply chain management. Demand forecasting methods are divided into two major categories, qualitative and quantitative methods. Qualitative methods are based on expert opinion and information gathered from the field. This method is mostly used in situations when there is minimal data available for analysis such as when a business or product has recently been introduced to the market. Quantitative methods, however, use available data, and analytical tools in order to produce predictions. Demand forecasting may be used in resource allocation, inventory management, assessing future capacity requirements, or making decisions on whether to enter a new market.[2]

Importance of demand forecasting for businesses edit

Demand forecasting plays an important role for businesses in different industries, particularly with regard to mitigating the risks associated with particular business activities. However, demand forecasting is known to be a challenging task for businesses due to the intricacies of analysis, specifically quantitative analysis.[3] Nevertheless, understanding customer needs is an indispensable part of any industry in order for business activities to be implemented efficiently and more appropriately respond to market needs. If businesses are able to forecast demand effectively, several benefits can be accrued. These include but are not limited to, waste reduction, optimized allocation of resources, and potentially large increases in sales and revenue.

Elaborating on the above, some of the reasons why businesses require demand forecasting include:

  1. Meeting goals - Most successful organisations will have pre-determined growth trajectories and long-term plans to ensure the business is operating at an ideal output. By having an understanding of future demand markets, businesses can be proactive in ensuring that goals will be met in this business environment.
  2. Business decisions - In reference to meeting goals, by having a thorough understanding of future industry demand, management and key board members can make strategic business decisions that encourage higher profitability and growth. These decisions are generally associated with the concepts of capacity, market targeting, raw material acquisition and understanding vendor contract direction.
  3. Growth - By having an accurate understanding of future forecasts, companies can gauge the need for expansion within a timeframe that allows them to do so cost effectively.[4]
  4. Human capital management - If there is a rapid demand increase in an industry but a business does not have enough employees to satisy the sales orders, consumer loyalty may be adversely affected as customers are forced to purchase from competitors.[5]
  5. Financial planning - It is crucial to understand demand forecasts in order to efficiently budget for future operations in terms of factors such as cash flow, inventory accounting and general operational costs.[6] The use of an accurate demand forecasting model can result in significant decreases in operational costs for businesses, since less safety stock is required to be held.[7]

Methods for Forecasting Demand edit

There are various statistical and econometric analyses used to forecast demand.[8] Forecasting demand can be broken down into seven stage process, the seven stages are described as:

Stage 1: Statement of a theory or hypothesis edit

The first step to forecast demand is to determine a set of objectives or information to derive different business strategies. These objectives are based on a set of hypotheses that usually come from a mixture of economic theory or previous empirical studies. For example, a manager may wish to find what the optimal price and production amount would be for a new product, based on how demand elasticity affected past company sales.

Stage 2: Model Specification edit

There are many different econometric models which differ depending on the analysis that managers wish to perform. The type of model that is chosen to forecast demand depends on many different aspects such as the type of data obtained or the number of observations, etc.[9] In this stage it is important to define the type of variables that will be used to forecast demand. Regression analysis is the main statistical method for forecasting. There are many different types of regression analysis but fundamentally, they provide an analysis of how one or multiple variables affect the dependent variable being measured. An example of a model for forecasting demand is M.Roodman's (1986) demand forecasting regression model for measuring the seasonality affects on a data point being measured.[10] The model was based on a linear regression model, and is used to measure linear trends based on seasonal cycles and their affects on demand i.e. the seasonal demand for a product based on sales in summer and winter.

The linear regression model is described as:

 

Where   is the dependent variable,   is the intercept,   is the slope coefficient,   is the independent variable and e is the error term.

M.Roodman's demand forecasting model is based on linear regression and is described as:

 

  is defined as the set of all t - indices for quarter q. The process that generates the data for all periods t that fall in quarter q is given by:

 
  •   = the datum for period
  • β = base demand at the beginning of the time series horizon
  • τ = the linear trend per quarter
  •   = the multiplicative seasonal factor for the quarter
  • e = a disturbance term

Stage 3: Data Collection edit

Once the type of model is specified in stage 2, the data and the method of collecting data must be specified. The model must be specified first in order to determine the variables which need to be collected. Conversely, when deciding on the desired forecasting model, the available data or methods to collect data need to be considered in order to formulate the correct model. Gathering Time series data and cross-sectional data are the different collection methods that may be used. Time series data are based on historical observations taken sequentially in time. These observations are used to derive relevant statistics, characteristics, and insight from the data.[11] The data points that may be collected using time series data may be sales, prices, manufacturing costs, and their corresponding time intervals i.e., weekly, monthly, quarterly, annually, or any other regular interval.  Cross-sectional data refers to data collected on a single entity at different periods of time. Cross-sectional data used in demand forecasting usually depicts a data point gathered from an individual, firm, industry, or area. For example, sales for Firm A during quarter 1. This type of data encapsulates a variety of data points which resulted in the final data point. The subset of data points may not be observable or feasible to determine but can be a practical method for adding precision to the demand forecast model.[12] The source for the data can be found via the firm's records, commercial or private agencies, or official sources.

Stage 4: Estimation of Parameters edit

Once the model and data are obtained then the values can be computed to determine the effects the independent variables have on the dependent variable in focus. Using the linear regression model as an example of estimating parameters, the following steps are taken:

Linear regression formula:

 

The first step is to find the line that minimizes the sum of the squares of the difference between the observed values of the dependent variable and the fitted values from the line.[8] This is expressed as   which minimizes   and  , the fitted value from the regression line.

  and   also need to be represented to find the intercept and slope of the line. The method of determining   and   is to use partial differentiation with respect to both   and   by setting both expressions equal to zero and solving them simultaneously. The method for omitting these variables is described below:

 

Stage 5: Checking the Accuracy of the Model edit

Calculating demand forecast accuracy is the process of determining the accuracy of forecasts made regarding customer demand for a product.[13][14] Understanding and predicting customer demand is vital to manufacturers and distributors to avoid stock-outs and to maintain adequate inventory levels. While forecasts are never perfect, they are necessary to prepare for actual demand. In order to maintain an optimized inventory and effective supply chain, accurate demand forecasts are imperative.

Calculating the accuracy of supply chain forecasts edit

Forecast accuracy in the supply chain is typically measured using the Mean Absolute Percent Error or MAPE. Statistically, MAPE is defined as the average of percentage errors.

Most practitioners, however, define and use the MAPE as the Mean Absolute Deviation divided by Average Sales, which is just a volume-weighted MAPE, also referred to as the MAD/Mean ratio. This is the same as dividing the sum of the absolute deviations by the total sales of all products. This calculation , where A is the actual value and F the forecast, is also known as WAPE, or the Weighted Absolute Percent Error.

Another interesting option is the weighted  . The advantage of this measure is that can weight errors. The only problem is that for seasonal products you will create an undefined result when sales = 0 and that is not symmetrical. This means that you can be much more inaccurate if sales are higher than if they are lower than the forecast. So sMAPE also known as symmetric Mean Absolute Percentage Error, is used to correct this.

Finally, for intermittent demand patterns, none of the above are particularly useful. In this situation, a business may consider MASE (Mean Absolute Scaled Error) as a key performance indicator to use. However, the use of this calculation is challenging as it is not as intuitive as the above-mentioned.[15] Another metric to consider, especially when there are intermittent or lumpy demand patterns at hand, is SPEC (Stock-keeping-oriented Prediction Error Costs).[16] The idea behind this metric is to compare predicted demand and actual demand by computing theoretical incurred costs over the forecast horizon. It assumes, that predicted demand higher than actual demand results in stock-keeping costs, whereas predicted demand lower than actual demand results in opportunity costs. SPEC takes into account temporal shifts (prediction before or after actual demand) or cost-related aspects and allows comparisons between demand forecasts based on business aspects as well.

Calculating forecast error edit

The forecast error needs to be calculated using actual sales as a base. There are several forms of forecast error calculation methods used, namely Mean Percent Error, Root Mean Squared Error, Tracking Signal and Forecast Bias.

Stage 6: Hypothesis testing edit

Once the model has been determined, the model is used to test the theory or hypothesis stated in the first stage. The results should describe what is trying to be achieved and determine if the theory or hypothesis is true or false. In relation to the example provided in the first stage, the model should show the relationship between demand elasticity of the market and the correlation it has to past company sales. This should enable managers to make an informed decisions regarding the optimal price and production levels for the new product.

Stage 7: Forecasting edit

The final step is to then forecast demand based on the data set and model created. In order to forecast demand, estimations of a chosen variable are used to determine the effects it has on demand. Regarding the estimation of the chosen variable, a regression model can be used or both qualitative and quantitative assessments can be implemented. Examples of qualitative and quantitative assessments are:

Qualitative assessment edit

Quantitative assessment edit

Others edit

Others include:

  1.  
    moving average
    Time series projection methods
  2.  
    leading indicator
    Causal methods

See also edit

References edit

  1. ^ Acar, A. Zafer; Yilmaz, Behlül; Kocaoglu, Batuhan (2014-06-16). "DEMAND FORECAST, UP-TO-DATE MODELS, AND SUGGESTIONS FOR IMPROVEMENT AN EXAMPLE OF A BUSINESS" (PDF). Journal of Global Strategic Management. 1 (8): 26–26. doi:10.20460/JGSM.2014815650. ISSN 1307-6205.
  2. ^ Adhikari, Nimai Chand Das; Domakonda, Nishanth; Chandan, Chinmaya; Gupta, Gaurav; Garg, Rajat; Teja, S.; Das, Lalit; Misra, Ashutosh (2019), Smys, S.; Bestak, Robert; Chen, Joy Iong-Zong; Kotuliak, Ivan (eds.), "An Intelligent Approach to Demand Forecasting", International Conference on Computer Networks and Communication Technologies, Singapore: Springer Singapore, vol. 15, pp. 167–183, doi:10.1007/978-981-10-8681-6_17, ISBN 978-981-10-8680-9, retrieved 2023-04-27
  3. ^ Ivanov, Dmitry; Tsipoulanidis, Alexander; Schönberger, Jörn (2021), Ivanov, Dmitry; Tsipoulanidis, Alexander; Schönberger, Jörn (eds.), "Demand Forecasting", Global Supply Chain and Operations Management: A Decision-Oriented Introduction to the Creation of Value, Cham: Springer International Publishing, pp. 341–357, doi:10.1007/978-3-030-72331-6_11#doi, ISBN 978-3-030-72331-6, retrieved 2023-04-27
  4. ^ "Demand Forecasting: An Industry Guide". Demand Caster.
  5. ^ "The Advantages of Demand Forecasting". Small Business - Chron.com. Retrieved 2023-04-27.
  6. ^ Diezhandino, Ernesto (2022-07-04). "Importance and Benefits of Forecasting Customer Demand". Keepler | Cloud Data Driven Partner. Retrieved 2023-04-27.
  7. ^ Hamiche, Koussaila; Abouaïssa, Hassane; Goncalves, Gilles; Hsu, Tienté (2018-01-01). "A Robust and Easy Approach for Demand Forecasting in Supply Chains". IFAC-PapersOnLine. 16th IFAC Symposium on Information Control Problems in Manufacturing INCOM 2018. 51 (11): 1732–1737. doi:10.1016/j.ifacol.2018.08.206. ISSN 2405-8963.
  8. ^ a b Wilkinson, Nick (2005-05-05). Managerial Economics: A Problem-Solving Approach (1 ed.). Cambridge University Press. doi:10.1017/cbo9780511810534.008. ISBN 978-0-521-81993-0.
  9. ^ Sukhanova*, E.I.; Shirnaeva, S.Y.; Zaychikova, N.A. (2019-03-20). "Modeling And Forecasting Financial Performance Of A Business: Statistical And Econometric Approach". The European Proceedings of Social and Behavioural Sciences. Cognitive-Crcs: 487–496. doi:10.15405/epsbs.2019.03.48. S2CID 159058405.
  10. ^ Roodman, Gary M. (1986). "Exponentially smoothed regression analysis for demand forecasting". Journal of Operations Management. 6 (3–4): 485–497. doi:10.1016/0272-6963(86)90019-7.
  11. ^ Ngan, Chun-Kit, ed. (2019-11-06). Time Series Analysis - Data, Methods, and Applications. IntechOpen. doi:10.5772/intechopen.78491. ISBN 978-1-78984-778-9. S2CID 209066704.
  12. ^ Johnston, Richard G. C.; Brady, Henry E. (2006). Capturing Campaign Effects. Ann Arbor: University of Michigan Press. ISBN 978-0-472-02303-5.
  13. ^ Hyndman, R.J., Koehler, A.B (2005) " Another look at measures of forecast accuracy", Monash University.
  14. ^ Hoover, Jim (2009) "How to Track Forecast Accuracy to Guide Process Improvement", Foresight: The International Journal of Applied Forecasting.
  15. ^ You can find an interesting discussion here.
  16. ^ Martin, Dominik; Spitzer, Philipp; Kühl, Niklas (2020). "A New Metric for Lumpy and Intermittent Demand Forecasts: Stock-keeping-oriented Prediction Error Costs". Proceedings of the 53rd Annual Hawaii International Conference on System Sciences. doi:10.5445/IR/1000098446.

Bibliography edit

  • Milgate, Murray (March 2008). "Goods and commodities". In Steven N. Durlauf and Lawrence E. Blume. The New Palgrave Dictionary of Economics (2nd ed.). Palgrave Macmillan. pp. 546–48. doi:10.1057/9780230226203.0657. Retrieved 2010-03-24.
  • Montani, Guido (1987). "Scarcity". In Eatwell, J. Millgate, M., Newman, P. The New Palgrave. A Dictionary of Economics 4. Palgrave, Houndsmill. pp. 253–54.

demand, forecasting, this, article, includes, list, general, references, lacks, sufficient, corresponding, inline, citations, please, help, improve, this, article, introducing, more, precise, citations, 2022, learn, when, remove, this, template, message, refer. This article includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this article by introducing more precise citations May 2022 Learn how and when to remove this template message Demand forecasting refers to the process of predicting the quantity of goods and services that will be demanded by consumers at a future point in time 1 More specifically the methods of demand forecasting entail using predictive analytics to estimate customer demand in consideration of key economic conditions This is an important tool in optimizing business profitability through efficient supply chain management Demand forecasting methods are divided into two major categories qualitative and quantitative methods Qualitative methods are based on expert opinion and information gathered from the field This method is mostly used in situations when there is minimal data available for analysis such as when a business or product has recently been introduced to the market Quantitative methods however use available data and analytical tools in order to produce predictions Demand forecasting may be used in resource allocation inventory management assessing future capacity requirements or making decisions on whether to enter a new market 2 Contents 1 Importance of demand forecasting for businesses 2 Methods for Forecasting Demand 2 1 Stage 1 Statement of a theory or hypothesis 2 2 Stage 2 Model Specification 2 3 Stage 3 Data Collection 2 4 Stage 4 Estimation of Parameters 2 5 Stage 5 Checking the Accuracy of the Model 2 5 1 Calculating the accuracy of supply chain forecasts 2 5 2 Calculating forecast error 2 6 Stage 6 Hypothesis testing 2 7 Stage 7 Forecasting 2 7 1 Qualitative assessment 2 7 2 Quantitative assessment 2 7 3 Others 3 See also 4 References 5 BibliographyImportance of demand forecasting for businesses editDemand forecasting plays an important role for businesses in different industries particularly with regard to mitigating the risks associated with particular business activities However demand forecasting is known to be a challenging task for businesses due to the intricacies of analysis specifically quantitative analysis 3 Nevertheless understanding customer needs is an indispensable part of any industry in order for business activities to be implemented efficiently and more appropriately respond to market needs If businesses are able to forecast demand effectively several benefits can be accrued These include but are not limited to waste reduction optimized allocation of resources and potentially large increases in sales and revenue Elaborating on the above some of the reasons why businesses require demand forecasting include Meeting goals Most successful organisations will have pre determined growth trajectories and long term plans to ensure the business is operating at an ideal output By having an understanding of future demand markets businesses can be proactive in ensuring that goals will be met in this business environment Business decisions In reference to meeting goals by having a thorough understanding of future industry demand management and key board members can make strategic business decisions that encourage higher profitability and growth These decisions are generally associated with the concepts of capacity market targeting raw material acquisition and understanding vendor contract direction Growth By having an accurate understanding of future forecasts companies can gauge the need for expansion within a timeframe that allows them to do so cost effectively 4 Human capital management If there is a rapid demand increase in an industry but a business does not have enough employees to satisy the sales orders consumer loyalty may be adversely affected as customers are forced to purchase from competitors 5 Financial planning It is crucial to understand demand forecasts in order to efficiently budget for future operations in terms of factors such as cash flow inventory accounting and general operational costs 6 The use of an accurate demand forecasting model can result in significant decreases in operational costs for businesses since less safety stock is required to be held 7 Methods for Forecasting Demand editThere are various statistical and econometric analyses used to forecast demand 8 Forecasting demand can be broken down into seven stage process the seven stages are described as Stage 1 Statement of a theory or hypothesis edit The first step to forecast demand is to determine a set of objectives or information to derive different business strategies These objectives are based on a set of hypotheses that usually come from a mixture of economic theory or previous empirical studies For example a manager may wish to find what the optimal price and production amount would be for a new product based on how demand elasticity affected past company sales Stage 2 Model Specification edit There are many different econometric models which differ depending on the analysis that managers wish to perform The type of model that is chosen to forecast demand depends on many different aspects such as the type of data obtained or the number of observations etc 9 In this stage it is important to define the type of variables that will be used to forecast demand Regression analysis is the main statistical method for forecasting There are many different types of regression analysis but fundamentally they provide an analysis of how one or multiple variables affect the dependent variable being measured An example of a model for forecasting demand is M Roodman s 1986 demand forecasting regression model for measuring the seasonality affects on a data point being measured 10 The model was based on a linear regression model and is used to measure linear trends based on seasonal cycles and their affects on demand i e the seasonal demand for a product based on sales in summer and winter The linear regression model is described as Y i b 0 b 1 X i e displaystyle Y i beta 0 beta 1 X i e nbsp Where Y i displaystyle Y i nbsp is the dependent variable b 0 displaystyle beta 0 nbsp is the intercept b 1 displaystyle beta 1 nbsp is the slope coefficient X i displaystyle X i nbsp is the independent variable and e is the error term M Roodman s demand forecasting model is based on linear regression and is described as l q t t 1 n and t mod Q q q 1 Q displaystyle lambda q t mid t 1 dots n text and t bmod Q q qquad q 1 dots Q nbsp l q displaystyle lambda q nbsp is defined as the set of all t indices for quarter q The process that generates the data for all periods t that fall in quarter q is given by Y t b t t s q e displaystyle Y t beta tau times t times sigma q e nbsp Y t displaystyle Y t nbsp the datum for period b base demand at the beginning of the time series horizon t the linear trend per quarter s q displaystyle sigma q nbsp the multiplicative seasonal factor for the quarter e a disturbance termStage 3 Data Collection edit Once the type of model is specified in stage 2 the data and the method of collecting data must be specified The model must be specified first in order to determine the variables which need to be collected Conversely when deciding on the desired forecasting model the available data or methods to collect data need to be considered in order to formulate the correct model Gathering Time series data and cross sectional data are the different collection methods that may be used Time series data are based on historical observations taken sequentially in time These observations are used to derive relevant statistics characteristics and insight from the data 11 The data points that may be collected using time series data may be sales prices manufacturing costs and their corresponding time intervals i e weekly monthly quarterly annually or any other regular interval Cross sectional data refers to data collected on a single entity at different periods of time Cross sectional data used in demand forecasting usually depicts a data point gathered from an individual firm industry or area For example sales for Firm A during quarter 1 This type of data encapsulates a variety of data points which resulted in the final data point The subset of data points may not be observable or feasible to determine but can be a practical method for adding precision to the demand forecast model 12 The source for the data can be found via the firm s records commercial or private agencies or official sources Stage 4 Estimation of Parameters edit Once the model and data are obtained then the values can be computed to determine the effects the independent variables have on the dependent variable in focus Using the linear regression model as an example of estimating parameters the following steps are taken Linear regression formula Y i b 0 b 1 X i e displaystyle Y i beta 0 beta 1 X i e nbsp The first step is to find the line that minimizes the sum of the squares of the difference between the observed values of the dependent variable and the fitted values from the line 8 This is expressed as Y i b 0 b 1 X i displaystyle hat Y i beta 0 beta 1 X i nbsp which minimizes S Y i Y i 2 displaystyle Sigma Y i hat Y i 2 nbsp and Y i b 0 displaystyle hat Y i beta 0 nbsp the fitted value from the regression line b 0 displaystyle beta 0 nbsp and b 1 displaystyle beta 1 nbsp also need to be represented to find the intercept and slope of the line The method of determining b 0 displaystyle beta 0 nbsp and b 1 displaystyle beta 1 nbsp is to use partial differentiation with respect to both b 0 displaystyle beta 0 nbsp and b 1 displaystyle beta 1 nbsp by setting both expressions equal to zero and solving them simultaneously The method for omitting these variables is described below b 1 n S X Y S X S y n S X 2 S X 2 b 0 S Y n b 1 S X n displaystyle begin aligned beta 1 amp frac n Sigma XY Sigma X Sigma y n Sigma X 2 Sigma X 2 beta 0 amp frac Sigma Y n frac beta 1 Sigma X n end aligned nbsp Stage 5 Checking the Accuracy of the Model edit Calculating demand forecast accuracy is the process of determining the accuracy of forecasts made regarding customer demand for a product 13 14 Understanding and predicting customer demand is vital to manufacturers and distributors to avoid stock outs and to maintain adequate inventory levels While forecasts are never perfect they are necessary to prepare for actual demand In order to maintain an optimized inventory and effective supply chain accurate demand forecasts are imperative Calculating the accuracy of supply chain forecasts edit Forecast accuracy in the supply chain is typically measured using the Mean Absolute Percent Error or MAPE Statistically MAPE is defined as the average of percentage errors Most practitioners however define and use the MAPE as the Mean Absolute Deviation divided by Average Sales which is just a volume weighted MAPE also referred to as the MAD Mean ratio This is the same as dividing the sum of the absolute deviations by the total sales of all products This calculation A F A displaystyle frac sum A F sum A nbsp where A is the actual value and F the forecast is also known as WAPE or the Weighted Absolute Percent Error Another interesting option is the weighted MAPE w A F w A displaystyle text MAPE frac sum w cdot A F sum w cdot A nbsp The advantage of this measure is that can weight errors The only problem is that for seasonal products you will create an undefined result when sales 0 and that is not symmetrical This means that you can be much more inaccurate if sales are higher than if they are lower than the forecast So sMAPE also known as symmetric Mean Absolute Percentage Error is used to correct this Finally for intermittent demand patterns none of the above are particularly useful In this situation a business may consider MASE Mean Absolute Scaled Error as a key performance indicator to use However the use of this calculation is challenging as it is not as intuitive as the above mentioned 15 Another metric to consider especially when there are intermittent or lumpy demand patterns at hand is SPEC Stock keeping oriented Prediction Error Costs 16 The idea behind this metric is to compare predicted demand and actual demand by computing theoretical incurred costs over the forecast horizon It assumes that predicted demand higher than actual demand results in stock keeping costs whereas predicted demand lower than actual demand results in opportunity costs SPEC takes into account temporal shifts prediction before or after actual demand or cost related aspects and allows comparisons between demand forecasts based on business aspects as well Calculating forecast error edit The forecast error needs to be calculated using actual sales as a base There are several forms of forecast error calculation methods used namely Mean Percent Error Root Mean Squared Error Tracking Signal and Forecast Bias Stage 6 Hypothesis testing edit Once the model has been determined the model is used to test the theory or hypothesis stated in the first stage The results should describe what is trying to be achieved and determine if the theory or hypothesis is true or false In relation to the example provided in the first stage the model should show the relationship between demand elasticity of the market and the correlation it has to past company sales This should enable managers to make an informed decisions regarding the optimal price and production levels for the new product Stage 7 Forecasting edit The final step is to then forecast demand based on the data set and model created In order to forecast demand estimations of a chosen variable are used to determine the effects it has on demand Regarding the estimation of the chosen variable a regression model can be used or both qualitative and quantitative assessments can be implemented Examples of qualitative and quantitative assessments are Qualitative assessment edit Unaided judgment Prediction market Delphi technique Game theory Judgmental bootstrapping Simulated interaction Intentions and expectations survey jury of executive methodQuantitative assessment edit Discrete event simulation Extrapolation Group method of data handling GMDH Reference class forecasting Quantitative analogies Rule based forecasting Diffusion of innovation Neural networks Data mining Conjoint analysis Causal models Segmentation Exponential smoothing models Box Jenkins models Hybrid modelsOthers edit Others include nbsp moving average Time series projection methodsMoving average method Exponential smoothing method Trend projection methods nbsp leading indicator Causal methodsChain ratio method Consumption level method End use method Leading indicator methodSee also editSupply and demand Demand chain Demand Modeling Elasticity of Demand Inventory Principle of inventory proportionality Reference class forecasting Consensus forecasts Optimism bias Production budgetReferences edit Acar A Zafer Yilmaz Behlul Kocaoglu Batuhan 2014 06 16 DEMAND FORECAST UP TO DATE MODELS AND SUGGESTIONS FOR IMPROVEMENT AN EXAMPLE OF A BUSINESS PDF Journal of Global Strategic Management 1 8 26 26 doi 10 20460 JGSM 2014815650 ISSN 1307 6205 Adhikari Nimai Chand Das Domakonda Nishanth Chandan Chinmaya Gupta Gaurav Garg Rajat Teja S Das Lalit Misra Ashutosh 2019 Smys S Bestak Robert Chen Joy Iong Zong Kotuliak Ivan eds An Intelligent Approach to Demand Forecasting International Conference on Computer Networks and Communication Technologies Singapore Springer Singapore vol 15 pp 167 183 doi 10 1007 978 981 10 8681 6 17 ISBN 978 981 10 8680 9 retrieved 2023 04 27 Ivanov Dmitry Tsipoulanidis Alexander Schonberger Jorn 2021 Ivanov Dmitry Tsipoulanidis Alexander Schonberger Jorn eds Demand Forecasting Global Supply Chain and Operations Management A Decision Oriented Introduction to the Creation of Value Cham Springer International Publishing pp 341 357 doi 10 1007 978 3 030 72331 6 11 doi ISBN 978 3 030 72331 6 retrieved 2023 04 27 Demand Forecasting An Industry Guide Demand Caster The Advantages of Demand Forecasting Small Business Chron com Retrieved 2023 04 27 Diezhandino Ernesto 2022 07 04 Importance and Benefits of Forecasting Customer Demand Keepler Cloud Data Driven Partner Retrieved 2023 04 27 Hamiche Koussaila Abouaissa Hassane Goncalves Gilles Hsu Tiente 2018 01 01 A Robust and Easy Approach for Demand Forecasting in Supply Chains IFAC PapersOnLine 16th IFAC Symposium on Information Control Problems in Manufacturing INCOM 2018 51 11 1732 1737 doi 10 1016 j ifacol 2018 08 206 ISSN 2405 8963 a b Wilkinson Nick 2005 05 05 Managerial Economics A Problem Solving Approach 1 ed Cambridge University Press doi 10 1017 cbo9780511810534 008 ISBN 978 0 521 81993 0 Sukhanova E I Shirnaeva S Y Zaychikova N A 2019 03 20 Modeling And Forecasting Financial Performance Of A Business Statistical And Econometric Approach The European Proceedings of Social and Behavioural Sciences Cognitive Crcs 487 496 doi 10 15405 epsbs 2019 03 48 S2CID 159058405 Roodman Gary M 1986 Exponentially smoothed regression analysis for demand forecasting Journal of Operations Management 6 3 4 485 497 doi 10 1016 0272 6963 86 90019 7 Ngan Chun Kit ed 2019 11 06 Time Series Analysis Data Methods and Applications IntechOpen doi 10 5772 intechopen 78491 ISBN 978 1 78984 778 9 S2CID 209066704 Johnston Richard G C Brady Henry E 2006 Capturing Campaign Effects Ann Arbor University of Michigan Press ISBN 978 0 472 02303 5 Hyndman R J Koehler A B 2005 Another look at measures of forecast accuracy Monash University Hoover Jim 2009 How to Track Forecast Accuracy to Guide Process Improvement Foresight The International Journal of Applied Forecasting You can find an interesting discussion here Martin Dominik Spitzer Philipp Kuhl Niklas 2020 A New Metric for Lumpy and Intermittent Demand Forecasts Stock keeping oriented Prediction Error Costs Proceedings of the 53rd Annual Hawaii International Conference on System Sciences doi 10 5445 IR 1000098446 Bibliography editMilgate Murray March 2008 Goods and commodities In Steven N Durlauf and Lawrence E Blume The New Palgrave Dictionary of Economics 2nd ed Palgrave Macmillan pp 546 48 doi 10 1057 9780230226203 0657 Retrieved 2010 03 24 Montani Guido 1987 Scarcity In Eatwell J Millgate M Newman P The New Palgrave A Dictionary of Economics 4 Palgrave Houndsmill pp 253 54 Retrieved from https en wikipedia org w index php title Demand forecasting amp oldid 1194814498, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.