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Ponencia
Predictive model selection in partial least squares path modeling (PLS-PM)
Autor/es | Nidhi Sharma, Pratyush
Shmueli, Galit Sarstedt, Marko Kim, Kevin H. |
Fecha de publicación | 2015 |
Fecha de depósito | 2017-03-07 |
Publicado en |
|
ISBN/ISSN | 9789036540568 |
Resumen | Predictive model selection metrics are used to select models with the highest out-of-sample
predictive power among a set of models. R2
and related metrics, which are heavily used in partial
least squares path modeling, ... Predictive model selection metrics are used to select models with the highest out-of-sample predictive power among a set of models. R2 and related metrics, which are heavily used in partial least squares path modeling, are often mistaken as predictive metrics. We introduce information theoretic model selection criteria that are designed for out-of-sample prediction and which do not require creating a holdout sample. Using a Monte Carlo study, we compare the performance of frequently used model evaluation criteria and information theoretic criteria in selecting the best predictive model under various conditions of sample size, effect size, loading patterns, and data distribution. |
Cita | Nidhi Sharma, P., Shmueli, G., Sarstedt, M. y Kim, K.H. (2015). Predictive model selection in partial least squares path modeling (PLS-PM). En 2nd International Symposium on Partial Least Squares Path Modeling - The Conference for PLS Users (1-6), Sevilla: University of Twente. |
Ficheros | Tamaño | Formato | Ver | Descripción |
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Predictive model selection.pdf | 280.8Kb | [PDF] | Ver/ | |