Please use this identifier to cite or link to this item: http://hdl.handle.net/10362/156097
Title: Evaluation of an unsupervised learning approach for portfolio optimization
Author: Sandrucci, Dario
Advisor: d’Arienzo, Daniele
Keywords: Unsupervised learning
K-means
Omega ratio
Minkowski distance
Portfolio optimization
Defense Date: 13-Jan-2023
Abstract: Throughout this directed research, we aim to identify opportunities for machine learning to support portfolio optimization. Based on a thorough literature review we decide to pursue an unsupervised learning approach and test its performance by conducting benchmarking against classic portfolio optimization techniques. To ensure the validity of our findings we explore the model’s robustness by conducting an array of experiments. In summary, we deem our version of the clustering algorithm to provide a suitable investment framework for return-focused investors with lower risk aversion. We suggest further research towards mitigating the algorithm’s inconsistencies and exploring additional tuning methodologies.
URI: http://hdl.handle.net/10362/156097
Designation: A Work Project, presented as part of the requirements for the Award of a Masters Degree in Finance from the NOVA – School of Business and Economics
Appears in Collections:NSBE: Nova SBE - MA Dissertations

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