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Published in: Advances in Data Analysis and Classification 3/2020

13-12-2019 | Regular Article

Modelling heterogeneity: on the problem of group comparisons with logistic regression and the potential of the heterogeneous choice model

Author: Gerhard Tutz

Published in: Advances in Data Analysis and Classification | Issue 3/2020

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Abstract

The comparison of coefficients of logit models obtained for different groups is widely considered as problematic because of possible heterogeneity of residual variances in latent variables. It is shown that the heterogeneous logit model can be used to account for this type of heterogeneity by considering reduced models that are identified. A model selection strategy is proposed that can distinguish between effects that are due to heterogeneity and substantial interaction effects. In contrast to the common understanding, the heterogeneous logit model is considered as a model that contains effect modifying terms, which are not necessarily linked to variances but can also represent other types of heterogeneity in the population. The alternative interpretation of the parameters in the heterogeneous logit model makes it a flexible tool that can account for various sources of heterogeneity. Although the model is typically derived from latent variables it is important that for the interpretation of parameters the reference to latent variables is not needed. Latent variables are considered as a motivation for binary models, but the effects in the models can be interpreted as effects on the binary response.

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Appendix
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Literature
go back to reference Agresti A (2013) Categorical data analysis, 3d edn. Wiley, New YorkMATH Agresti A (2013) Categorical data analysis, 3d edn. Wiley, New YorkMATH
go back to reference Allison PD (1999) Comparing logit and probit coefficients across groups. Sociol Methods Res 28(2):186–208 Allison PD (1999) Comparing logit and probit coefficients across groups. Sociol Methods Res 28(2):186–208
go back to reference Baumgartner H, Steenkamp J-BE (2001) Response styles in marketing research: a cross-national investigation. J Market Res 38(2):143–156 Baumgartner H, Steenkamp J-BE (2001) Response styles in marketing research: a cross-national investigation. J Market Res 38(2):143–156
go back to reference Berger M, Tutz G, Schmid M (2019) Tree-structured modelling of varying coefficients. Stat Comput 29(2):217–229MathSciNetMATH Berger M, Tutz G, Schmid M (2019) Tree-structured modelling of varying coefficients. Stat Comput 29(2):217–229MathSciNetMATH
go back to reference Breen R, Holm A, Karlson KB (2014) Correlations and nonlinear probability models. Sociol Methods Res 43(4):571–605MathSciNet Breen R, Holm A, Karlson KB (2014) Correlations and nonlinear probability models. Sociol Methods Res 43(4):571–605MathSciNet
go back to reference Cai Z, Fan J, Li R (2000) Efficient estimation and inferences for varying-coefficient models. J Am Stat Assoc 95(451):888–902MathSciNetMATH Cai Z, Fan J, Li R (2000) Efficient estimation and inferences for varying-coefficient models. J Am Stat Assoc 95(451):888–902MathSciNetMATH
go back to reference Fan J, Zhang W (1999) Statistical estimation in varying coefficient models. Ann Stat 27:1491–1518MathSciNetMATH Fan J, Zhang W (1999) Statistical estimation in varying coefficient models. Ann Stat 27:1491–1518MathSciNetMATH
go back to reference Fullerton AS, Xu J (2012) The proportional odds with partial proportionality constraints model for ordinal response variables. Soc Sci Res 41(1):182–198 Fullerton AS, Xu J (2012) The proportional odds with partial proportionality constraints model for ordinal response variables. Soc Sci Res 41(1):182–198
go back to reference Gertheiss J, Tutz G (2012) Regularization and model selection with categorial effect modifiers. Stat Sin 22:957–982MathSciNetMATH Gertheiss J, Tutz G (2012) Regularization and model selection with categorial effect modifiers. Stat Sin 22:957–982MathSciNetMATH
go back to reference Gollwitzer M, Eid M, Jürgensen R (2005) Response styles in the assessment of anger expression. Psychol Assess 17(1):56 Gollwitzer M, Eid M, Jürgensen R (2005) Response styles in the assessment of anger expression. Psychol Assess 17(1):56
go back to reference Hauser RM, Andrew M (2006) Another look at the stratification of educational transitions: the logistic response model with partial proportionality constraints. Sociol Methodol 36(1):1–26 Hauser RM, Andrew M (2006) Another look at the stratification of educational transitions: the logistic response model with partial proportionality constraints. Sociol Methodol 36(1):1–26
go back to reference Johnson TR (2003) On the use of heterogeneous thresholds ordinal regression models to account for individual differences in response style. Psychometrika 68(4):563–583MathSciNetMATH Johnson TR (2003) On the use of heterogeneous thresholds ordinal regression models to account for individual differences in response style. Psychometrika 68(4):563–583MathSciNetMATH
go back to reference Karlson KB, Holm A, Breen R (2012) Comparing regression coefficients between same-sample nested models using logit and probit: a new method. Sociol Methodol 42(1):286–313 Karlson KB, Holm A, Breen R (2012) Comparing regression coefficients between same-sample nested models using logit and probit: a new method. Sociol Methodol 42(1):286–313
go back to reference Maij-de Meij AM, Kelderman H, van der Flier H (2008) Fitting a mixture item response theory model to personality questionnaire data: Characterizing latent classes and investigating possibilities for improving prediction. Appl Psychol Meas 32(8):611–631MathSciNet Maij-de Meij AM, Kelderman H, van der Flier H (2008) Fitting a mixture item response theory model to personality questionnaire data: Characterizing latent classes and investigating possibilities for improving prediction. Appl Psychol Meas 32(8):611–631MathSciNet
go back to reference Mare RD (2006) Response: statistical models of educational stratification-Hauser and Andrew’s models for school transitions. Sociol Methodol 36:27–37 Mare RD (2006) Response: statistical models of educational stratification-Hauser and Andrew’s models for school transitions. Sociol Methodol 36:27–37
go back to reference McCullagh P (1980) Regression model for ordinal data (with discussion). J R Stat Soc B 42(2):109–127MATH McCullagh P (1980) Regression model for ordinal data (with discussion). J R Stat Soc B 42(2):109–127MATH
go back to reference McCullagh P, Nelder JA (1989) Generalized linear models, 2nd edn. Chapman & Hall, New YorkMATH McCullagh P, Nelder JA (1989) Generalized linear models, 2nd edn. Chapman & Hall, New YorkMATH
go back to reference Mood C (2010) Logistic regression: Why we cannot do what we think we can do, and what we can do about it? Eur Sociol Rev 26(1):67–82 Mood C (2010) Logistic regression: Why we cannot do what we think we can do, and what we can do about it? Eur Sociol Rev 26(1):67–82
go back to reference Park BU, Mammen E, Lee YK, Lee ER (2015) Varying coefficient regression models: a review and new developments. Int Stat Rev 83(1):36–64MathSciNet Park BU, Mammen E, Lee YK, Lee ER (2015) Varying coefficient regression models: a review and new developments. Int Stat Rev 83(1):36–64MathSciNet
go back to reference Plieninger H (2016) Mountain or molehill? A simulation study on the impact of response styles. Educ Psychol Meas 77:32–53 Plieninger H (2016) Mountain or molehill? A simulation study on the impact of response styles. Educ Psychol Meas 77:32–53
go back to reference R Core Team (2016). R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna R Core Team (2016). R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna
go back to reference Rohwer G (2015) A note on the heterogeneous choice model. Sociol Methods Res 44(1):145–148MathSciNet Rohwer G (2015) A note on the heterogeneous choice model. Sociol Methods Res 44(1):145–148MathSciNet
go back to reference Tutz G (2012) Regression for categorical data. Cambridge University Press, CambridgeMATH Tutz G (2012) Regression for categorical data. Cambridge University Press, CambridgeMATH
go back to reference Tutz G (2018) Binary response models with underlying heterogeneity: identification and interpretation of effects. Eur Sociol Rev 34:211–221 Tutz G (2018) Binary response models with underlying heterogeneity: identification and interpretation of effects. Eur Sociol Rev 34:211–221
go back to reference Van Vaerenbergh Y, Thomas TD (2013) Response styles in survey research: a literature review of antecedents, consequences, and remedies. Int J Publ Opin Res 25(2):195–217 Van Vaerenbergh Y, Thomas TD (2013) Response styles in survey research: a literature review of antecedents, consequences, and remedies. Int J Publ Opin Res 25(2):195–217
go back to reference Wetzel E, Carstensen CH (2017) Multidimensional modeling of traits and response styles. Eur J Psychol Assess 33:352–364 Wetzel E, Carstensen CH (2017) Multidimensional modeling of traits and response styles. Eur J Psychol Assess 33:352–364
go back to reference Williams R (2009) Using heterogeneous choice models to compare logit and probit coefficients across groups. Sociol Method Res 37(4):531–559MathSciNet Williams R (2009) Using heterogeneous choice models to compare logit and probit coefficients across groups. Sociol Method Res 37(4):531–559MathSciNet
go back to reference Williams R (2010) Fitting heterogeneous choice models with oglm. Stat J 10(4):540–567 Williams R (2010) Fitting heterogeneous choice models with oglm. Stat J 10(4):540–567
go back to reference Williams R (2016) Understanding and interpreting generalized ordered logit models. J Math Sociol 40(1):7–20MathSciNetMATH Williams R (2016) Understanding and interpreting generalized ordered logit models. J Math Sociol 40(1):7–20MathSciNetMATH
go back to reference Zhao W, Zhang R, Liu J (2014) Regularization and model selection for quantile varying coefficient model with categorical effect modifiers. Comput Stat Data Anal 79:44–62MathSciNetMATH Zhao W, Zhang R, Liu J (2014) Regularization and model selection for quantile varying coefficient model with categorical effect modifiers. Comput Stat Data Anal 79:44–62MathSciNetMATH
Metadata
Title
Modelling heterogeneity: on the problem of group comparisons with logistic regression and the potential of the heterogeneous choice model
Author
Gerhard Tutz
Publication date
13-12-2019
Publisher
Springer Berlin Heidelberg
Published in
Advances in Data Analysis and Classification / Issue 3/2020
Print ISSN: 1862-5347
Electronic ISSN: 1862-5355
DOI
https://doi.org/10.1007/s11634-019-00381-8

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