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~subject:"Systematischer Fehler"
~subject:"Structural equation model"
~institution:"University of California, San Diego / Department of Economics"
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Systematischer Fehler
Structural equation model
Bias
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Kleinste-Quadrate-Methode
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Lasso
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Least squares method
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OLS
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Sampling
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debiased Lasso
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nite sample analysis
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omitted variablebias
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size distortions
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Zhu, Ying
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International Conference on Partial Least Squares Structural Equation Modeling Conference <2022, Cluj-Napoca; Online>
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Omitted variable bias of Lasso-based inference methods : a finite sample analysis
Wüthrich, Kaspar
;
Zhu, Ying
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University of California, San Diego / Department of …
-
2022
-
This version: September 14, 2021
Persistent link: https://www.econbiz.de/10013387539
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