Portfolio Management: The Holistic Data Lifecycle

Research output: Contribution to a Journal (Peer & Non Peer)Articlepeer-review

Abstract

Machine learning provides many benefits to Portfolio Managers in analysing data and has the potential to provide much more. A concern with the approach to Machine Learning in Portfolio Management is that is caught between two domains: finance and information systems. In reality, to ensure its success, having these two separate and distinct domains are problematic. What is required is a holistic view, facilitating discussions, with data being the unifying concept and the one that is key to success. The data value map is a lens that allows all involved, in the use or adoption of Machine Learning in Portfolio Management, to form a shared understanding of the lifecycle of the data involved. Rather than being seen as a financial concept or a technical concept, this view of the data lifecycle provides a platform for all involved to determine what is required, and to identify and deal with any potential pitfalls along the way. A holistic view, and shared understanding, are required for the success of Machine Learning in Portfolio Management. Research on the intersection between Machine Learning and Portfolio Management is currently lacking. A focus on the different parts of the data lifecycle provides an opportunity for further research.
Original languageEnglish (Ireland)
JournalDrake Management Review
Volume12
DOIs
Publication statusPublished - 1 Oct 2022

Authors (Note for portal: view the doc link for the full list of authors)

  • Authors
  • McAvoy, J., Murphy, C., Mushtaq, L., O'Donnell, J., Brennan, A., Dempsey, M., Kiely, G.

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