Please use this identifier to cite or link to this item: http://148.72.244.84/xmlui/handle/xmlui/16129
Title: Application of Grey Forecasting Models for Forecasting the Number of Marriages in Halabja Governorate-Iraq
Authors: Shahen Mohammed Faraj
Keywords: Time series, Grey Model, Mean Absolute Percentage Error
Issue Date: 20-Dec-2024
Publisher: KHAZAYIN OF ECONOMIC AND ADMINISTRATIVE SCIENCES
Citation: https://doi.org/10.69938/Keas.24010214
Series/Report no.: Khazayin Of Economic and Administrative Sciences Vol. 1, NO. 2, December 2024;170-181
Abstract: Time series forecasting encompasses the examination of historical data to anticipate future values, rely on relevant historical and present data or information for forecasting upcoming values. Thus, gray theory deals with systems with inadequate, poor, and uncertain information. Modeling on insufficient sample and saturation sequences. The objective of this study is to determine the most suitable model from the models proposed (GM (1,1) Model, Discrete Grey Model (DGM) (1,1), Grey Verhulst Model (GVM) (1,1), and Exponential Grey Model (EXGM) (1,1)) for predicting the number of marriages in Halabja governorate, Iraq, in the future. Annual data on the number of marriages from 2016 to 2023 are utilized in this research and Microsoft excel to analyze data. Experimental results indicatethat the EXGM (1,1) model is the most accurate model selected in this study, with the lowest average value of MAPE (2.8405%) and a higher level of precision of 97.1595% compared to the other models. This suggests that the EXGM (1,1) model provides more accurate values than the other models. EXGM (1,1) is strongly recommended for forecasting the number of marriages in Halabja governorate, Iraq, for the period 2024-2040
URI: http://148.72.244.84/xmlui/handle/xmlui/16129
ISSN: 2960-1363
3007-9020
Appears in Collections:خزائن للعلوم الاقتصادية والادارية Khazayin Of Economic and Administrative Sciences



Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.