Development of a combined method for predicting discrete time series with non-stability for forecasting military goods demand

Authors

DOI:

https://doi.org/10.15587/2312-8372.2019.188188

Keywords:

forecasting model, discrete time series, random output data, combined forecasting method

Abstract

The object of research is a model of the production system of military goods with non-stationary processes. In the study of the time series of the characteristics of the production system, various competing models, as a rule, are obtained under production conditions with stochastic data on the output of products due to bottleneck problems. So, the choice of the best model that describes the production system becomes difficult and critical, because some models that most closely correspond to the observed data may not foresee future values in accordance with the complexity of the model. This study seeks to demonstrate the procedure for selecting a model in a random data system using adjusted weights. This paper presents a method for combining two sets of forecasts. The obtained measurements serve as input with an autocorrelation function and a partial autocorrelation function to obtain the order of predictive models. The model parameters are evaluated and used for forecasting and compared with the original and converted data to obtain the sum of squared errors in (SSE). Models are evaluated for adequacy and subsequently tested against Akaike and Schwarz criteria. Two separate sets of forecasts of time series data are combined to form a combined set of forecasts. It should be noted that when each set of forecasts contains some independent information, combined forecasts can provide an improvement. The proposed method for combining forecasts allows to change weights, can lead to better forecasts. The main conclusion is that a set of forecasts can lead to a lower standard error than any of the initial forecasts. Past errors of each of the initial forecasts are used to determine the weight for joining two original forecasts in the formation of combined forecasts. However, the effectiveness of the forecast may change over time.

Author Biographies

Stepan Kubiv, Kyiv, Ukraine

PhD, Associate Professor

 

Yuriy Balanyuk, National Aviation University 1, Kosmonavta Komarova str., Kyiv, Ukraine, 03058

PhD, Associate Professor

Department of Information Security

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Published

2019-11-21

How to Cite

Kubiv, S., & Balanyuk, Y. (2019). Development of a combined method for predicting discrete time series with non-stability for forecasting military goods demand. Technology Audit and Production Reserves, 6(4(50), 30–32. https://doi.org/10.15587/2312-8372.2019.188188