Search results for "Exponential smoothing"

showing 10 items of 13 documents

Forecasting correlated time series with exponential smoothing models

2011

Abstract This paper presents the Bayesian analysis of a general multivariate exponential smoothing model that allows us to forecast time series jointly, subject to correlated random disturbances. The general multivariate model, which can be formulated as a seemingly unrelated regression model, includes the previously studied homogeneous multivariate Holt-Winters’ model as a special case when all of the univariate series share a common structure. MCMC simulation techniques are required in order to approach the non-analytically tractable posterior distribution of the model parameters. The predictive distribution is then estimated using Monte Carlo integration. A Bayesian model selection crite…

Multivariate statisticsMathematical optimizationsymbols.namesakeModel selectionExponential smoothingPosterior probabilitysymbolsUnivariateMarkov chain Monte CarloBusiness and International ManagementSeemingly unrelated regressionsBayesian inferenceMathematicsInternational Journal of Forecasting
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Bayesian forecasting with the Holt–Winters model

2010

Exponential smoothing methods are widely used as forecasting techniques in inventory systems and business planning, where reliable prediction intervals are also required for a large number of series. This paper describes a Bayesian forecasting approach based on the Holt–Winters model, which allows obtaining accurate prediction intervals. We show how to build them incorporating the uncertainty due to the smoothing unknowns using a linear heteroscedastic model. That linear formulation simplifies obtaining the posterior distribution on the unknowns; a random sample from such posterior, which is not analytical, is provided using an acceptance sampling procedure and a Monte Carlo approach gives …

Marketing021103 operations researchComputer scienceStrategy and ManagementPosterior probabilityMonte Carlo methodExponential smoothingBayesian probability0211 other engineering and technologiesLinear modelPrediction intervalSampling (statistics)02 engineering and technologyManagement Science and Operations ResearchManagement Information SystemsAcceptance samplingStatistics0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingAlgorithmSmoothingJournal of the Operational Research Society
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SIOPRED performance in a Forecasting Blind Competition

2012

In this paper we present the results obtained by applying our automatic forecasting support system, named SIOPRED, over a data set of time series in a Forecasting Blind Competition. In order to apply our procedure for providing point forecasts it has been necessary to develop an interactive strategy for the choice of the suitable length of the seasonal cycle and the seasonality form for a generalized exponential smoothing method, which have been obtained using SIOPRED. For the choice of those essential characteristics of forecasting methods, also a certain multi-objective formulation which minimizes several measures of fitting is used. Once these specifications are established, the model pa…

Soft computingData setCompetition (economics)Mathematical optimizationSeries (mathematics)Computer scienceExponential smoothingPoint (geometry)Physics::Atmospheric and Oceanic PhysicsSmoothingNonlinear programming2012 IEEE Conference on Evolving and Adaptive Intelligent Systems
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A Forecasting Support System Based on Exponential Smoothing

2010

This chapter presents a forecasting support system based on the exponential smoothing scheme to forecast time-series data. Exponential smoothing methods are simple to apply, which facilitates computation and considerably reduces data storage requirements. Consequently, they are widely used as forecasting techniques in inventory systems and business planning. After selecting the most adequate model to replicate patterns of the time series under study, the system provides accurate forecasts which can play decisive roles in organizational planning, budgeting and performance monitoring.

Scheme (programming language)Mathematical optimizationSeries (mathematics)Computer sciencebusiness.industryComputationExponential smoothingPrediction intervalReplicatecomputer.software_genreComputer data storageData miningAutoregressive integrated moving averagebusinesscomputercomputer.programming_language
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Holt–Winters Forecasting: An Alternative Formulation Applied to UK Air Passenger Data

2007

Abstract This paper provides a formulation for the additive Holt–Winters forecasting procedure that simplifies both obtaining maximum likelihood estimates of all unknowns, smoothing parameters and initial conditions, and the computation of point forecasts and reliable predictive intervals. The stochastic component of the model is introduced by means of additive, uncorrelated, homoscedastic and Normal errors, and then the joint distribution of the data vector, a multivariate Normal distribution, is obtained. In the case where a data transformation was used to improve the fit of the model, cumulative forecasts are obtained here using a Monte-Carlo approximation. This paper describes the metho…

Statistics and ProbabilityExponential smoothingData transformation (statistics)Prediction intervalMultivariate normal distributionJoint probability distributionHomoscedasticityStatisticsEconometricsStatistics Probability and UncertaintyTime seriesPhysics::Atmospheric and Oceanic PhysicsSmoothingMathematicsJournal of Applied Statistics
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Forecasting time series with missing data using Holt's model

2009

This paper deals with the prediction of time series with missing data using an alternative formulation for Holt's model with additive errors. This formulation simplifies both the calculus of maximum likelihood estimators of all the unknowns in the model and the calculus of point forecasts. In the presence of missing data, the EM algorithm is used to obtain maximum likelihood estimates and point forecasts. Based on this application we propose a leave-one-out algorithm for the data transformation selection problem which allows us to analyse Holt's model with multiplicative errors. Some numerical results show the performance of these procedures for obtaining robust forecasts.

Statistics and ProbabilityApplied MathematicsAutocorrelationExponential smoothingLinear modelData transformation (statistics)EstimatorMissing dataExpectation–maximization algorithmStatisticsStatistics Probability and UncertaintyAdditive modelAlgorithmMathematicsJournal of Statistical Planning and Inference
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A spreadsheet modeling approach to the Holt–Winters optimal forecasting

2001

Abstract The objective of this paper is to determine the optimal forecasting for the Holt–Winters exponential smoothing model using spreadsheet modeling. This forecasting procedure is especially useful for short-term forecasts for series of sales data or levels of demand for goods. The non-linear programming problem associated with this forecasting model is formulated and a spreadsheet model is used to solve the problem of optimization efficiently. Also, a spreadsheet makes it possible to work in parallel with various objective functions (measures of forecast errors) and different procedures for calculating the initial values of the components of the model. Using a scenario analysis, the se…

Mathematical optimizationInformation Systems and ManagementGeneral Computer ScienceSeries (mathematics)Computer scienceExponential smoothingManagement Science and Operations ResearchIndustrial and Manufacturing EngineeringNonlinear programmingMaxima and minimaSet (abstract data type)Order (business)Modeling and SimulationScenario analysisPhysics::Atmospheric and Oceanic PhysicsEuropean Journal of Operational Research
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A fuzzy decision support tool for demand forecasting

2007

In this paper we present a decision support forecasting system to work with univariate time series based on the generalized exponential smoothing (Holt-Winters) approach. It is conceived as an integrated tool which has been implemented in Visual Basic. For improving the accuracy of the automatic forecasting it uses an optimization-based scheme which unifies the stages of estimation of the parameters and selects the best method using a fuzzy multicriteria approach. The elements of the set of local minima of the non-linear programming problems allow us to build the membership functions of the conflicting objectives. A set of real data is analyzed to show the performance of our forecasting too…

Decision support systembusiness.industryDecision theoryExponential smoothingFuzzy control systemDemand forecastingMachine learningcomputer.software_genreFuzzy logicNonlinear programmingArtificial intelligencebusinesscomputerEconomic forecastingMathematics2007 IEEE International Fuzzy Systems Conference
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A decision support system methodology for forecasting of time series based on soft computing

2006

Exponential procedures are widely used as forecasting techniques for inventory control and business planning. A number of modifications to the generalized exponential smoothing (Holt-Winters) approach to forecasting univariate time series is presented, which have been adapted into a tool for decision support systems. This methodology unifies the phases of estimation and model selection into just one optimization framework which permits the identification of robust solutions. This procedure may provide forecasts from different versions of exponential smoothing by fitting the updated formulas of Holt-Winters and selects the best method using a fuzzy multicriteria approach. The elements of the…

Statistics and ProbabilitySoft computingMathematical optimizationDecision support systembusiness.industryApplied MathematicsModel selectionExponential smoothingUnivariateFuzzy logicNonlinear programmingComputational MathematicsComputational Theory and MathematicsArtificial intelligencebusinessPhysics::Atmospheric and Oceanic PhysicsSmoothingMathematicsComputational Statistics & Data Analysis
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Improving demand forecasting accuracy using nonlinear programming software

2006

We address the problem of forecasting real time series with a proportion of zero values and a great variability among the nonzero values. In order to calculate forecasts for a time series, the model coefficients must be estimated. The appropriate choice of values for the smoothing parameters in exponential smoothing methods relies on the minimization of the fitting errors of historical data. We adapt the generalized Holt–Winters formulation so that it can consider the starting values of the local components of level, trend and seasonality as decision variables of the nonlinear programming problem associated with this forecasting procedure. A spreadsheet model is used to solve the problems o…

MarketingMathematical optimization021103 operations researchbusiness.industryComputer scienceStrategy and ManagementExponential smoothing0211 other engineering and technologies02 engineering and technologyManagement Science and Operations ResearchDemand forecastingSeasonalitymedicine.diseaseManagement Information SystemsNonlinear programmingSoftware0202 electrical engineering electronic engineering information engineeringEconometricsmedicineCurve fitting020201 artificial intelligence & image processingbusinessPhysics::Atmospheric and Oceanic PhysicsSmoothingJournal of the Operational Research Society
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