Ciencias,UNAM

Generalized covariance-adjusted discriminants: Perspective and application

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dc.contributor.author Tu, XM
dc.contributor.author Kowalski, J
dc.contributor.author Randall, J
dc.contributor.author MendozaBlanco, J
dc.contributor.author Shear, MK
dc.contributor.author Monk, TH
dc.contributor.author Frank, E
dc.contributor.author Kupfer, DJ
dc.date.accessioned 2011-01-22T10:27:54Z
dc.date.available 2011-01-22T10:27:54Z
dc.date.issued 1997
dc.identifier.issn 0006-341X
dc.identifier.uri http://hdl.handle.net/11154/3364
dc.description.abstract When discriminant analysis is used in practice for assessing the usefulness of diagnostic markers, the lack of control over covariates motivates the need for their adjustment in the analysis. This necessity for adjustment arises especially when the researcher's aim is classification based on a set of diagnostic markers and is not based on a set of covariates for which there exists known heterogeneity among the subjects with respect to the groups under consideration. The traditional covariance-adjusted approach is restrictive for such applications in that they assume linear covariates and a normal distribution for the the feature vector. Further, there is no available method for variable selection in using such covariance-adjusted models. In this paper, we generalize the traditional covariance-adjusted model to a general normal and logistic model, where these generalized models not only relax the distributional assumptions on the feature vector but also allow for nonlinear covariates. Exact and asymptotic tests are also derived for the problem of variable selection for these new models. The methodology is illustrated with both simulated data and an actual data set from a psychiatric study on using the Social Rhythm Metric for patients with anxiety disorders. en_US
dc.language.iso en en_US
dc.title Generalized covariance-adjusted discriminants: Perspective and application en_US
dc.type Article en_US
dc.identifier.idprometeo 2934
dc.source.novolpages 53(3):900-909
dc.subject.wos Biology
dc.subject.wos Mathematical & Computational Biology
dc.subject.wos Statistics & Probability
dc.description.index WoS: SCI, SSCI o AHCI
dc.subject.keywords Bayes risk consistent allocation rule
dc.subject.keywords covariance-adjusted discriminant
dc.subject.keywords logistic discriminant
dc.subject.keywords normal discriminant
dc.subject.keywords variable selection
dc.relation.journal Biometrics

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