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Department: Graduate School of Business.
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Several recent studies report a seemingly counterintuitive result of positive cross advertising effects. We examine this phenomenon, and document its prevalence and persistence using time series data for several mature packaged goods categories. For this purpose we develop a hierarchical dynamic...
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In this study we propose a multivariate stochastic model for website visit duration, page views, purchase incidence and the sale amount for online retailers. The model is constructed by composition from carefully selected distributions, and involves copula components. It allows for the strong...
Persistent link: https://www.econbiz.de/10013063707
This paper develops a maximum likelihood based method for simultaneously performing multidimensional scaling and cluster analysis on two-way dominance or profile data. This MULTICLUS procedure utilizes mixtures of multivariate conditional normal distributions to estimate a joint space of...
Persistent link: https://www.econbiz.de/10009476613
The vast majority of existing multidimensional scaling (MDS) procedures devised for the analysis of paired comparison preference/choice judgments are typically based on either scalar product (i.e., vector) or unfolding (i.e., ideal-point) models. Such methods tend to ignore many of the essential...
Persistent link: https://www.econbiz.de/10009476614
This paper presents a new stochastic multidimensional scaling procedure for the analysis of three-mode, three-way pick any/ J data. The method provides either a vector or ideal-point model to represent the structure in such data, as well as “floating” model specifications (e.g., different...
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