4.7 Article

An event-triggered iteratively reweighted convex optimization approach to multi-period portfolio selection

期刊

EXPERT SYSTEMS WITH APPLICATIONS
卷 216, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2022.119427

关键词

Portfolio selection; Portfolio optimization; Pseudoconvex optimization; Iteratively reweighted convex optimization; Event-triggering

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This paper focuses on multi-period portfolio selection driven by events. It proposes an event-triggering function to replicate fund managers and optimize Sharpe and Sortino ratios in the Markowitz's return-risk framework. The problem is formulated as a series of biconvex optimization problems with a variable weight and a surrogate objective function. The experiments demonstrate the effectiveness of the proposed approach in calculating market indices and equal-weighted portfolios using Sharpe and Sortino ratios.
This paper addresses multi-period portfolio selection driven by events. We define an event-triggering function to mimic fund managers to activate sequential portfolio rebalancing and maximize Sharpe and Sortino ratios in the Markowitz's return-risk framework. At first, the multi-period portfolio selection problem is formulated with a variable weight as a series of biconvex optimization problems with a surrogated objective function to maximize the Sharpe ratio or Sortino ratio. In each period, the portfolio optimization problem is further reformulated as an iteratively reweighted convex quadratic optimization problem. The multi-period portfolio selection problem is then solved sequentially based on a defined event-trigger function and a quadratic optimizer. The experiments are done on eight world stock markets datasets to show the capabilities of the proposed approach in calculating market indices and equal-weighted portfolios in terms of Sharpe and Sortino ratios.

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