2022
DOI: 10.34312/jjom.v4i2.13529
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Backwards Stepwise Binary Logistic Regression for Determination Population Growth Rate Factor in Java Island

Abstract: The high population growth rate can impact various fields due to several factors. Some of the impacts of this high rate are high poverty rates, unemployment, consumption levels, inequality in education figures, gender empowerment index, and increasingly narrow land or area. Therefore, research on the rate of population growth using data on poverty, unemployment, consumption levels, education rates, gender empowerment index, and area makes sense. This data was taken from the official website of the Central Stat… Show more

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Cited by 5 publications
(3 citation statements)
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“…A univariate logistic regression analysis was used to calculate the p value and unadjusted odds ratio for the studied variables. Factors were input into the multiple logistic regression analysis using the backward method to provide the best model [ 24 ]. The factors remaining in the predictive model were those with a p of less than 0.20.…”
Section: Methodsmentioning
confidence: 99%
“…A univariate logistic regression analysis was used to calculate the p value and unadjusted odds ratio for the studied variables. Factors were input into the multiple logistic regression analysis using the backward method to provide the best model [ 24 ]. The factors remaining in the predictive model were those with a p of less than 0.20.…”
Section: Methodsmentioning
confidence: 99%
“…El SB fue operacionalizado en una variable dicotómica a partir del punto de corte, por lo que se aplicó una regresión logística binaria que estableció la relación entre la variable dependiente (SB severo) y los demás factores, a través de un modelo explicativo con la razón de momios y su intervalo de confianza del 95% como estimadores 17 . El modelo inicial permitió conocer la influencia de los factores sobre el SB severo, y se eliminaron en cada paso variables con las asociaciones más débiles, mediante el método backward , hasta quedar aquellas con nivel de significancia p < 0,05 en el modelo final 18 .…”
Section: Materials Y Métodosunclassified
“…The stepwise regression method is a combination of forward selection and backward elimination. Stepwise regression uses to overcome the multicollinearity problem [14,15]. In other words, stepwise regression models included only significant coefficients and variables (P < 0.05), and this method provides one of the most effective predictive models [16].…”
Section: Introductionmentioning
confidence: 99%