Active Preference Learning for Personalized Portfolio Construction
In financial asset management, choosing a portfolio requires balancing returns, risk, exposure, liquidity, volatility and other factors. These concerns are difficult to compare explicitly, with many asset managers using an intuitive or implicit sense of their interaction. We propose a mechanism for...
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Zusammenfassung: | In financial asset management, choosing a portfolio requires balancing
returns, risk, exposure, liquidity, volatility and other factors. These
concerns are difficult to compare explicitly, with many asset managers using an
intuitive or implicit sense of their interaction. We propose a mechanism for
learning someone's sense of distinctness between portfolios with the goal of
being able to identify portfolios which are predicted to perform well but are
distinct from the perspective of the user. This identification occurs, e.g., in
the context of Bayesian optimization of a backtested performance metric.
Numerical experiments are presented which show the impact of personal beliefs
in informing the development of a diverse and high-performing portfolio. |
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DOI: | 10.48550/arxiv.1708.07567 |