Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Filters

Peter M Steiner

Showing results (11-20 of 24) with videos related to

Pageof 3
Sort By:
Multivariate Behavioral Research|January 24, 2016
How Bias Reduction Is Affected by Covariate Choice, Unreliability, and Mode of Data Analysis: Results From Two Types of Within-Study ComparisonsThomas D Cook, Peter M Steiner, Steffi Pohl
The British Journal of Mathematical and Statistical Psychology|October 23, 2018
When does measurement error in covariates impact causal effect estimates? Analytic derivations of different scenarios and an empirical illustrationMarie-Ann Sengewald, Peter M Steiner, Steffi Pohl
Psychological Methods|July 27, 2023
Correspondence measures for assessing replication successPeter M Steiner, Patrick Sheehan, Vivian C Wong
Evaluation Review|October 16, 2018
What Can Be Learned From Empirical Evaluations of Nonexperimental Methods?Vivian C Wong, Peter M Steiner, Kylie L Anglin
Psychological Methods|June 3, 2014
An introduction to modeling longitudinal data with generalized additive models: applications to single-case designsKristynn J Sullivan, William R Shadish, Peter M Steiner
Multivariate Behavioral Research|January 21, 2016
Abstract: Data Mining Alternatives to Logistic Regression for Propensity Score Estimation: Neural Networks and Support Vector MachinesBryan S B Keller, Jee-Seon Kim, Peter M Steiner
Sociological Methods & Research|September 4, 2018
Graphical Models for Quasi-experimental DesignsPeter M Steiner, Yongnam Kim, Courtney E Hall, et al.
Communications for Statistical Applications and Methods|August 31, 2019
Practice of causal inference with the propensity of being zero or one: assessing the effect of arbitrary cutoffs of propensity scoresJoseph Kang, Wendy Chan, Mi-Ok Kim, et al.
Prevention Science : the Official Journal of the Society for Prevention Research|November 17, 2016
Pretest Measures of the Study Outcome and the Elimination of Selection Bias: Evidence from Three Within Study ComparisonsKelly Hallberg, Thomas D Cook, Peter M Steiner, et al.
Psychological Methods|September 9, 2010
The importance of covariate selection in controlling for selection bias in observational studiesPeter M Steiner, Thomas D Cook, William R Shadish, et al.
Pageof 3

Showing results (11-20 of 24) with videos related to

Sort By:
Pageof 3
Multivariate Behavioral Research|January 24, 2016
How Bias Reduction Is Affected by Covariate Choice, Unreliability, and Mode of Data Analysis: Results From Two Types of Within-Study ComparisonsThomas D Cook, Peter M Steiner, Steffi Pohl
The British Journal of Mathematical and Statistical Psychology|October 23, 2018
When does measurement error in covariates impact causal effect estimates? Analytic derivations of different scenarios and an empirical illustrationMarie-Ann Sengewald, Peter M Steiner, Steffi Pohl
Psychological Methods|July 27, 2023
Correspondence measures for assessing replication successPeter M Steiner, Patrick Sheehan, Vivian C Wong
Evaluation Review|October 16, 2018
What Can Be Learned From Empirical Evaluations of Nonexperimental Methods?Vivian C Wong, Peter M Steiner, Kylie L Anglin
Psychological Methods|June 3, 2014
An introduction to modeling longitudinal data with generalized additive models: applications to single-case designsKristynn J Sullivan, William R Shadish, Peter M Steiner
Multivariate Behavioral Research|January 21, 2016
Abstract: Data Mining Alternatives to Logistic Regression for Propensity Score Estimation: Neural Networks and Support Vector MachinesBryan S B Keller, Jee-Seon Kim, Peter M Steiner
Sociological Methods & Research|September 4, 2018
Graphical Models for Quasi-experimental DesignsPeter M Steiner, Yongnam Kim, Courtney E Hall, et al.
Communications for Statistical Applications and Methods|August 31, 2019
Practice of causal inference with the propensity of being zero or one: assessing the effect of arbitrary cutoffs of propensity scoresJoseph Kang, Wendy Chan, Mi-Ok Kim, et al.
Prevention Science : the Official Journal of the Society for Prevention Research|November 17, 2016
Pretest Measures of the Study Outcome and the Elimination of Selection Bias: Evidence from Three Within Study ComparisonsKelly Hallberg, Thomas D Cook, Peter M Steiner, et al.
Psychological Methods|September 9, 2010
The importance of covariate selection in controlling for selection bias in observational studiesPeter M Steiner, Thomas D Cook, William R Shadish, et al.
Pageof 3