TY - JOUR T1 - Alternative Goodness-of-Fit Test in Logistic Regression Models AU - Udomboso, C.A. AU - Chukwu, A.U. AU - Enang, E.I. AU - Nja, M.E. JO - Journal of Modern Mathematics and Statistics VL - 5 IS - 2 SP - 43 EP - 46 PY - 2011 DA - 2001/08/19 SN - 1994-5388 DO - jmmstat.2011.43.46 UR - https://makhillpublications.co/view-article.php?doi=jmmstat.2011.43.46 KW - predicted probabilities KW -observed proportions KW -standard error KW -Pearson chi-square KW -Deviance KW -p value KW -Nigeria AB - The Deviance and the Pearson chi-square are two traditional goodness-of-fit tests in generalized linear models for which the logistic model is a special case. The effort involved in the computation of either the Deviance or Pearson chi-square statistic is enormous and this provides a reason for prospecting an alternative goodness-of-fit test in logistic regression models with discrete predictor variables. The Deviance is based on the log likelihood function while the Pearson chi-square derives from the discrepancies between observed and predicted counts. Replacing observed and predicted counts with observed proportions and predicted probabilities, respectively in a cross-classification data arrangement, the standard error of estimate is proposed as an alternative goodness-of-fit test in logistic regression models. The illustrative example returns favourable comparisons with Deviance and the Pearson chi-square statistics. ER -