LOGISTIC REGRESSION AND THE GENERALIZED LINEAR MODEL

1997 ◽  
Vol 85 (1) ◽  
pp. 66-66
Author(s):  
Michael C. White ◽  
Rebecca G. Long ◽  
Richard Tansey

A new statistical technique is now being used quite frequently in the behavioral and social sciences but appears to be poorly understood due to undue reliance perhaps on explanations in statistical packages.


2007 ◽  
Vol 37 (1) ◽  
pp. 83-117 ◽  
Author(s):  
Paul T. von Hippel

When fitting a generalized linear model—such as linear regression, logistic regression, or hierarchical linear modeling—analysts often wonder how to handle missing values of the dependent variable Y. If missing values have been filled in using multiple imputation, the usual advice is to use the imputed Y values in analysis. We show, however, that using imputed Ys can add needless noise to the estimates. Better estimates can usually be obtained using a modified strategy that we call multiple imputation, then deletion (MID). Under MID, all cases are used for imputation but, following imputation, cases with imputed Y values are excluded from the analysis. When there is something wrong with the imputed Y values, MID protects the estimates from the problematic imputations. And when the imputed Y values are acceptable, MID usually offers somewhat more efficient estimates than an ordinary MI strategy.


2021 ◽  
Vol 36 (1) ◽  
pp. 399-405
Author(s):  
K. Harini ◽  
K. Sashi Rekha

Aim: To predict the accuracy percentage of At - risk students based on High withdrawal and Failure rate. Materials and methods: Logistic Regression with sample size = 20 and Generalised Linear Model (GLM) with sample size = 20 was iterated different times for predicting accuracy percentage of At - risk students. The Novel sigmoid function used in Logistic Regression maps prediction to probabilities which helps to improve the prediction of accuracy percentage. Results and Discussion: Logistic Regression has significantly better accuracy (94.48 %) compared to GLM accuracy (92.76 %). There was a statistical significance between Logistic regression and GLM (p=0.000) (p<0.05). Conclusion: Logistic Regression with Novel Sigmoid function helps in predicting with more accuracy percentage of At - risk students.


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