Biostatistics series module 10: Brief overview of multivariate methods

Multivariate analysis refers to statistical techniques that simultaneously look at three or more variables in relation to the subjects under investigation with the aim of identifying or clarifying the relationships between them. These techniques have been broadly classified as dependence techniques,...

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Main Authors: Avijit Hazra, Nithya Gogtay
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2017-01-01
Series:Indian Journal of Dermatology
Subjects:
Online Access:http://www.e-ijd.org/article.asp?issn=0019-5154;year=2017;volume=62;issue=4;spage=358;epage=366;aulast=Hazra
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spelling doaj-784304de5f1a46cca008f58a68536a682020-11-24T23:27:19ZengWolters Kluwer Medknow PublicationsIndian Journal of Dermatology0019-51541998-36112017-01-0162435836610.4103/ijd.IJD_296_17Biostatistics series module 10: Brief overview of multivariate methodsAvijit HazraNithya GogtayMultivariate analysis refers to statistical techniques that simultaneously look at three or more variables in relation to the subjects under investigation with the aim of identifying or clarifying the relationships between them. These techniques have been broadly classified as dependence techniques, which explore the relationship between one or more dependent variables and their independent predictors, and interdependence techniques, that make no such distinction but treat all variables equally in a search for underlying relationships. Multiple linear regression models a situation where a single numerical dependent variable is to be predicted from multiple numerical independent variables. Logistic regression is used when the outcome variable is dichotomous in nature. The log-linear technique models count type of data and can be used to analyze cross-tabulations where more than two variables are included. Analysis of covariance is an extension of analysis of variance (ANOVA), in which an additional independent variable of interest, the covariate, is brought into the analysis. It tries to examine whether a difference persists after “controlling” for the effect of the covariate that can impact the numerical dependent variable of interest. Multivariate analysis of variance (MANOVA) is a multivariate extension of ANOVA used when multiple numerical dependent variables have to be incorporated in the analysis. Interdependence techniques are more commonly applied to psychometrics, social sciences and market research. Exploratory factor analysis and principal component analysis are related techniques that seek to extract from a larger number of metric variables, a smaller number of composite factors or components, which are linearly related to the original variables. Cluster analysis aims to identify, in a large number of cases, relatively homogeneous groups called clusters, without prior information about the groups. The calculation intensive nature of multivariate analysis has so far precluded most researchers from using these techniques routinely. The situation is now changing with wider availability, and increasing sophistication of statistical software and researchers should no longer shy away from exploring the applications of multivariate methods to real-life data sets.http://www.e-ijd.org/article.asp?issn=0019-5154;year=2017;volume=62;issue=4;spage=358;epage=366;aulast=HazraCluster analysisdiscriminant function analysisfactor analysislogistic regressionmultiple linear regressionmultivariate analysisprincipal components analysis
collection DOAJ
language English
format Article
sources DOAJ
author Avijit Hazra
Nithya Gogtay
spellingShingle Avijit Hazra
Nithya Gogtay
Biostatistics series module 10: Brief overview of multivariate methods
Indian Journal of Dermatology
Cluster analysis
discriminant function analysis
factor analysis
logistic regression
multiple linear regression
multivariate analysis
principal components analysis
author_facet Avijit Hazra
Nithya Gogtay
author_sort Avijit Hazra
title Biostatistics series module 10: Brief overview of multivariate methods
title_short Biostatistics series module 10: Brief overview of multivariate methods
title_full Biostatistics series module 10: Brief overview of multivariate methods
title_fullStr Biostatistics series module 10: Brief overview of multivariate methods
title_full_unstemmed Biostatistics series module 10: Brief overview of multivariate methods
title_sort biostatistics series module 10: brief overview of multivariate methods
publisher Wolters Kluwer Medknow Publications
series Indian Journal of Dermatology
issn 0019-5154
1998-3611
publishDate 2017-01-01
description Multivariate analysis refers to statistical techniques that simultaneously look at three or more variables in relation to the subjects under investigation with the aim of identifying or clarifying the relationships between them. These techniques have been broadly classified as dependence techniques, which explore the relationship between one or more dependent variables and their independent predictors, and interdependence techniques, that make no such distinction but treat all variables equally in a search for underlying relationships. Multiple linear regression models a situation where a single numerical dependent variable is to be predicted from multiple numerical independent variables. Logistic regression is used when the outcome variable is dichotomous in nature. The log-linear technique models count type of data and can be used to analyze cross-tabulations where more than two variables are included. Analysis of covariance is an extension of analysis of variance (ANOVA), in which an additional independent variable of interest, the covariate, is brought into the analysis. It tries to examine whether a difference persists after “controlling” for the effect of the covariate that can impact the numerical dependent variable of interest. Multivariate analysis of variance (MANOVA) is a multivariate extension of ANOVA used when multiple numerical dependent variables have to be incorporated in the analysis. Interdependence techniques are more commonly applied to psychometrics, social sciences and market research. Exploratory factor analysis and principal component analysis are related techniques that seek to extract from a larger number of metric variables, a smaller number of composite factors or components, which are linearly related to the original variables. Cluster analysis aims to identify, in a large number of cases, relatively homogeneous groups called clusters, without prior information about the groups. The calculation intensive nature of multivariate analysis has so far precluded most researchers from using these techniques routinely. The situation is now changing with wider availability, and increasing sophistication of statistical software and researchers should no longer shy away from exploring the applications of multivariate methods to real-life data sets.
topic Cluster analysis
discriminant function analysis
factor analysis
logistic regression
multiple linear regression
multivariate analysis
principal components analysis
url http://www.e-ijd.org/article.asp?issn=0019-5154;year=2017;volume=62;issue=4;spage=358;epage=366;aulast=Hazra
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