Marketing scholars are increasingly recognizing the importance of investigating phenomena at multiple levels. However, the analyses methods that are currently dominant within marketing may not be appropriate to dealing with multilevel or nested data structures. We identify the state of contemporary multilevel marketing research, finding that typical empirical approaches within marketing research may be less effective at explicitly taking account of multilevel data structures than those in other organizational disciplines. A Monte Carlo simulation, based on results from a previously published marketing study, demonstrates that different approaches to analysis of the same data can result in very different results (both in terms of power and e...
This study analyzed the reporting of multilevel modeling applications of a sample of 98 articles dra...
The domain of this review includes the development and application of multidimensional scaling (MD...
In this article, the effect of ignoring one or more levels of variation in hierarchical linear regre...
Many phenomena in marketing involve multiple levels of theory and analysis. Adopting a multilevel le...
Organizations are hierarchical in nature. Individuals are subject to various group influences; and t...
203 p.This book deals with multidimensional scaling and related techniques, a relatively new, comput...
Whenever research is concerned with the analysis of relationships between lowerlevel units (e.g., in...
Multi-level structures are omnipresent. Consumers live in geographical locations, shop in specific s...
Multilevel datasets are commonly used and increasingly popular in research in the organizational and...
Although interest in multilevel organizational theory, research, and methods has been on the rise in...
Multilevel modeling is an approach that can be used to summarize single-case experimental design (SC...
In this paper, I outline several conceptual and methodological issues related to modeling individual...
Many important marketing issues deal with the study of change in marketing variables based on an ana...
Multiple-level (or mixed linear) modeling (MLM) can simultaneously test hypotheses at several levels...
Multilevel modeling allows researchers to understand whether relationships between lower-level varia...
This study analyzed the reporting of multilevel modeling applications of a sample of 98 articles dra...
The domain of this review includes the development and application of multidimensional scaling (MD...
In this article, the effect of ignoring one or more levels of variation in hierarchical linear regre...
Many phenomena in marketing involve multiple levels of theory and analysis. Adopting a multilevel le...
Organizations are hierarchical in nature. Individuals are subject to various group influences; and t...
203 p.This book deals with multidimensional scaling and related techniques, a relatively new, comput...
Whenever research is concerned with the analysis of relationships between lowerlevel units (e.g., in...
Multi-level structures are omnipresent. Consumers live in geographical locations, shop in specific s...
Multilevel datasets are commonly used and increasingly popular in research in the organizational and...
Although interest in multilevel organizational theory, research, and methods has been on the rise in...
Multilevel modeling is an approach that can be used to summarize single-case experimental design (SC...
In this paper, I outline several conceptual and methodological issues related to modeling individual...
Many important marketing issues deal with the study of change in marketing variables based on an ana...
Multiple-level (or mixed linear) modeling (MLM) can simultaneously test hypotheses at several levels...
Multilevel modeling allows researchers to understand whether relationships between lower-level varia...
This study analyzed the reporting of multilevel modeling applications of a sample of 98 articles dra...
The domain of this review includes the development and application of multidimensional scaling (MD...
In this article, the effect of ignoring one or more levels of variation in hierarchical linear regre...