Correlation adjusted penalization in regression analysis

dc.contributor.authorTan, Qi Er
dc.contributor.examiningcommitteeCheng, Smiley W. (Statistics) Mandal, Saumen (Statistics) Bohm, Eric (Surgery) Li, Deli (Lakehead University)en_US
dc.contributor.supervisorWang, Xikui (Statistics)en_US
dc.date.accessioned2012-09-25T22:15:38Z
dc.date.available2012-09-25T22:15:38Z
dc.date.issued2012-09-25
dc.degree.disciplineStatisticsen_US
dc.degree.levelDoctor of Philosophy (Ph.D.)en_US
dc.description.abstractThe PhD thesis introduces two new types of correlation adjusted penalization methods to address the issue of multicollinearity in regression analysis. The main purpose is to achieve simultaneous shrinkage of parameter estimators and variable selection for multiple linear regression and logistic regression when the predictor variables are highly correlated. The motivation is that when there is serious issue of multicollinearity, the variances of parameter estimators are significantly large. The new correlation adjusted penalization methods shrink the parameter estimators and their variances to alleviate the problem of multicollinearity. The latest important trend to deal with multicollinearity is to apply penalization methods for simultaneous shrinkage and variable selection. In the literature, the following penalization methods are popular: ridge, bridge, LASSO, SCAD, and OSCAR. Few papers have used correlation based penalization methods, and these correlation based methods in the literature do not work when some correlations are either 1 or -1. This means that these correlation based methods fail if at least two predictor variables are perfectly correlated. We introduce two new types of correlation adjusted penalization methods that work whether or not the predictor variables are perfectly correlated. The types of correlation adjusted penalization methods introduced in my thesis are intuitive and innovative. We investigate important theoretical properties of these new types of penalization methods, including bias, mean squared error, data argumentation and asymptotic properties, and plan to apply them to real data sets in the near future.en_US
dc.description.noteOctober 2012en_US
dc.identifier.urihttp://hdl.handle.net/1993/9147
dc.language.isoengen_US
dc.rightsopen accessen_US
dc.subjectStatisticsen_US
dc.titleCorrelation adjusted penalization in regression analysisen_US
dc.typedoctoral thesisen_US
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