Program > Papers by speaker > Kazak Ekaterina

Portfolio Pretesting with Machine Learning
Ekaterina Kazak  1@  , Winfried Pohlmeier  1@  
1 : University of Konstanz  -  Website
78457 Konstanz -  Germany

This paper exploits the idea of pretesting to choose between competing portfolio strategies. We propose a strategy that optimally trades off between between the risk of going for a false positive strategy choice versus the risk of making a false negative choice. Various different data driven approaches are proposed based on an optimal choice of the pretested certainty equivalent. Our approach belongs to the class of shrinkage portfolio estimators. However, contrary to previous approaches the shrinkage intensity is continuously updated to incorporate the most recent information in the rolling window forecasting set-up. We show that the bagged pretest estimator performs exceptionally well, especially when combined with adaptive smoothing. The resulting strategy allows for a flexible and smooth switch between the underlying strategies and is shown to outperform the corresponding stand-alone strategies.


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