TY - JOUR ID - 56003 TI - Detection of Outliers and Influential Observations in Linear Ridge Measurement Error Models with Stochastic Linear Restrictions JO - Journal of Sciences, Islamic Republic of Iran JA - JSCIENCES LA - en SN - 1016-1104 AU - Ghapani, F. AU - Rasekh, A. R. AU - Akhoond, M. R. AU - Babadi, B. AD - Department of Statistics, Faculty of Mathematical Sciences and Computer, Shahid Chamran University, Ahvaz, Islamic Republic of Iran Y1 - 2015 PY - 2015 VL - 26 IS - 4 SP - 355 EP - 366 KW - Case deletion KW - Corrected likelihood KW - Influential observations KW - Mean shift outlier model KW - Outliers DO - N2 - The aim of this paper is to propose some diagnostic methods in linear ridge measurement error models with stochastic linear restrictions using the corrected likelihood. Based on the bias-corrected estimation of model parameters, diagnostic measures are developed to identify outlying and influential observations. In addition, we derive the corrected score test statistic for outliers detection based on mean shift outlier models. The analogues of Cook's distance and likelihood distance are proposed to determine influential observations based on case deletion model. A parametric bootstrap procedure is used to obtain empirical distributions of the test statistics and a simulation study has been given to show the performance of the score test statistic. Finally, the proposed diagnostic procedures are illustrated on a numerical example to show the theoretical results. UR - https://jsciences.ut.ac.ir/article_56003.html L1 - https://jsciences.ut.ac.ir/article_56003_cafa1ae3bfeea7e25defc125719d71f8.pdf ER -