Gri Modellere Giriş


Güleryüz R., Uyar B.

ICPAM VAN 2022 4th International Conference on Pure and Applied Mathematics, Van, Türkiye, 22 - 23 Haziran 2022, ss.96

  • Yayın Türü: Bildiri / Özet Bildiri
  • Basıldığı Şehir: Van
  • Basıldığı Ülke: Türkiye
  • Sayfa Sayıları: ss.96
  • Van Yüzüncü Yıl Üniversitesi Adresli: Evet

Özet

Grey system theory was introduced to find solutions to problems involving small sample and weak information. Its application areas have five components, namely Grey relational analysis (GRA), Grey modelling, Gray prediction, Grey control and Grey decision making. In the process of creating the grey prediction model, the original data is accumulated into a new data column with strong regularity and a new model is created. Then, the reduction model is created from this new data column by inverse operation and the final prediction model is obtained. The GM(1,1) model is the most widely used grey forecasting model. The grey model was developed to make inferences for future periods and to predict them based on the values of data from past periods. Today, many quantitative techniques are used for the estimation of time series. However, the important thing here is to keep the error rates that occur as a result of the predictions made by the techniques at a minimum level. In this sense, sometimes by modifying the error terms and sometimes by combining different techniques, it is tried to reduce the error rates and to obtain more accurate estimations. Because the plans made for the future and the policies that can be determined gain meaning only with these predictions. The lower the error rate, the higher the performance of the prediction model will be. With these in mind, GM(1,1) is one of the most commonly used Grey forecasting models. This model is a time series prediction model consisting of first order differential equations. The minimum number of data should be four to create the GM(1,1) model. In general, GM(n,m) refers to the grey model. n is the number of nth order differential equations, m is the number of variables.