textabstractMultiplicative interaction models, such as Goodman's RC(M) association models, can be a useful tool for analyzing the content of interaction effects. However, most models for interaction effects are only suitable for data sets with two or three predictor variables. Here, we discuss an optimal scaling model for analyzing the content of interaction effects in generalized linear models with any number of categorical predictor variables. This model, which we call the optimal scaling of interactions (OSI) model, is a parsimonious, one-dimensional multiplicative interaction model. We discuss how the model can be used to visually interpret the interaction effects. Two empirical data sets are used to show how the results of the model ca...
Abstract. Structural equation models with mean structure and non-linear constraints are the most fre...
Introduction: Statistical interactions are a common component of data analysis across a broad range ...
Correspondence Analysis (CA) is particularly suited to categorical variables, as long as 2-way conti...
Multiplicative interaction models, such as CitationGoodman's (1981) RC(M) association models, can be...
Multiplicative interaction models, such as Goodman's RC(M) association models, can be a useful tool ...
Attribute interactions are the irreducible dependencies between attributes. Interactions underlie fe...
There is substantial confusion in political science and related literatures about the meaning and in...
Contains fulltext : 168867.pdf (publisher's version ) (Open Access)Sweeney and Ulv...
The problem of interaction selection in high-dimensional data analysis has recently received much at...
In hierarchical data, the effect of a lower-level predictor on a lower-level outcome may often be co...
Including pairwise interactions between the predictors of a regression model can produce better pred...
Simple slopes, regions of significance, and confidence bands are commonly used to evaluate interact...
used to test for the presence of interactions. When an interaction term is composed of correlated va...
Numerous penalization based methods have been proposed for fitting a tra-ditional linear regression ...
The concomitant proliferation of causal modeling and hypotheses of multiplica-tive effects has broug...
Abstract. Structural equation models with mean structure and non-linear constraints are the most fre...
Introduction: Statistical interactions are a common component of data analysis across a broad range ...
Correspondence Analysis (CA) is particularly suited to categorical variables, as long as 2-way conti...
Multiplicative interaction models, such as CitationGoodman's (1981) RC(M) association models, can be...
Multiplicative interaction models, such as Goodman's RC(M) association models, can be a useful tool ...
Attribute interactions are the irreducible dependencies between attributes. Interactions underlie fe...
There is substantial confusion in political science and related literatures about the meaning and in...
Contains fulltext : 168867.pdf (publisher's version ) (Open Access)Sweeney and Ulv...
The problem of interaction selection in high-dimensional data analysis has recently received much at...
In hierarchical data, the effect of a lower-level predictor on a lower-level outcome may often be co...
Including pairwise interactions between the predictors of a regression model can produce better pred...
Simple slopes, regions of significance, and confidence bands are commonly used to evaluate interact...
used to test for the presence of interactions. When an interaction term is composed of correlated va...
Numerous penalization based methods have been proposed for fitting a tra-ditional linear regression ...
The concomitant proliferation of causal modeling and hypotheses of multiplica-tive effects has broug...
Abstract. Structural equation models with mean structure and non-linear constraints are the most fre...
Introduction: Statistical interactions are a common component of data analysis across a broad range ...
Correspondence Analysis (CA) is particularly suited to categorical variables, as long as 2-way conti...