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Simonis_53251600_2021.pdf
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- A challenging problem in active asset management is the selection of stocks and their weighting to form a balanced portfolio. In this regard, we employ machine learning techniques that aim to predict which stocks will outperform their benchmark during the coming quarter. We then integrate these picks into a portfolio in such a way as to minimize its variance. Our approach is evaluated using a rolling window that allows us to measure the performance over an out-of-sample period from August 2004 to May 2021. Our empirical findings show that machine learning-based selection models can be used to construct portfolios that exhibit a higher return and a lower risk than the benchmark. The best performing model obtained a Sharpe ratio of 0.811 while the benchmark index had one of 0.681.