Administrative Making Decisions to Determine the Depended Criteria in the Assignment Using the Analytic Hierarchical Process - An applied study in Imam Hussein Hospital in Dhi Qar

Authors

  • Noor A. Attia
  • Saleh M. AL Ameri
  • Watheq H. Laith

DOI:

https://doi.org/10.55562/jrucs.v46i1.77

Keywords:

Logistic Regression, Random Forests Regression

Abstract

Congenital malformation is a structural defect in one or more parts of the body from birth , The causes and sources of birth defects may be genetic or caused by a non-genetic event before birth , Some congenital malformations may be caused by taking drugs or sometimes the causes are unknown. In recent years, the rate of congenital malformations among newborn children in Iraq has increased and to identify this problem and identify the most important factors affecting it. A sample of children with congenital malformations was taken to the maternity hospitals of the Health Department of Baghdad / Rusafa and Karkh - Department of preterm infants of 2504 births , To identify the most important factors affecting the congenital malformations using artificial intelligence techniques and machine learning including random forests regression and logistic regression decline as these techniques are one of the most advanced techniques used in the case of big data , We concluded from this research, which aimed to find the best model for estimating the data of congenital anomalies in Iraq through the use of two types of machine learning models (artificial intelligence) and as these types are regression models at the same time and after estimating each model we compared using the mean squares error criterion and it was the best A model is a random forest model regression.

Downloads

Download data is not yet available.

Downloads

Published

2021-10-01

How to Cite

Administrative Making Decisions to Determine the Depended Criteria in the Assignment Using the Analytic Hierarchical Process - An applied study in Imam Hussein Hospital in Dhi Qar. (2021). Journal of Al-Rafidain University College For Sciences ( Print ISSN: 1681-6870 ,Online ISSN: 2790-2293 ), 46(1), 203-225. https://doi.org/10.55562/jrucs.v46i1.77