PT - JOURNAL ARTICLE AU - Söhnke M. Bartram AU - Jürgen Branke AU - Giuliano De Rossi AU - Mehrshad Motahari TI - Machine Learning for Active Portfolio Management AID - 10.3905/jfds.2021.1.071 DP - 2021 Jul 31 TA - The Journal of Financial Data Science PG - 9--30 VI - 3 IP - 3 4099 - https://pm-research.com/content/3/3/9.short 4100 - https://pm-research.com/content/3/3/9.full AB - Machine learning (ML) methods are attracting considerable attention among academics in the field of finance. However, it is commonly believed that ML has not transformed the asset management industry to the same extent as other sectors. This survey focuses on the ML methods and empirical results available in the literature that matter most for active portfolio management. ML has asset management applications for signal generation, portfolio construction, and trade execution, and promising findings have been reported. Reinforcement learning (RL), in particular, is expected to play a more significant role in the industry. Nevertheless, the performance of a sample of active exchange-traded funds (ETF) that use ML in their investments tends to be mixed. Overall, ML techniques show great promise for active portfolio management, but investors should be cautioned against their main potential pitfalls.TOPICS: Big data/machine learning, portfolio construction, exchange-traded funds and applications, performance measurementKey Findings▪ Machine learning (ML) methods have several advantages that can lead to successful applications in active portfolio management, including the ability to capture nonlinear patterns and a focus on prediction through ensemble learning.▪ ML methods can be applied to different steps of the investment process, including signal generation, portfolio construction, and trade execution, with reinforcement learning expected to play a more significant role in the industry.▪ Empirically, the investment performance of ML-based active exchange-traded funds is mixed.