交互式学习粗糙策略以动态满足多目标指数追踪中投资者偏好

Interactively Learning Rough Strategies That Dynamically Satisfy Investor’s Preferences in Multiobjective Index Tracking

IEEE Transactions on Evolutionary Computation · 2023
被引 2
ABS 4

中文导读

研究了一种交互式多目标优化方法,结合粗糙集和进化算法,帮助投资者在指数追踪中动态调整投资组合,满足其偏好,并分析了交互次数和认知简化方法对效果的影响。

Abstract

Multiobjective index tracking models optimize portfolios considering investors’ desire to replicate or outperform a market index. It is possible to search for the best portfolio in the optimal Pareto Front for a given investor with interactive multiobjective optimization using dominance-based rough sets approach (IMO-DRSA). However, obtaining the optimal Pareto front can be impractical as the index size grows. Therefore, evolutionary multiobjective approaches (EMO) can be used to find good fronts in a reasonable time. A simulated IMO-DRSA approach was adopted and extended to offer insights on how to design interactive processes for index tracking considering the stochastic output of EMO. The extended simulated IMO-DRSA approach analyzes how different factors, such as the number of interactions and methods for cognitive effort reduction, affect the capacity of an EMO to produce good portfolios for different types of artificial investors during interactions and to maintain their goodness over time. In contrast to previous studies, this research explores various approaches for displaying potential portfolios to investors and investigates the performance of an evolutionary algorithm guided by IMO-DRSA in multiple problem instances with an increased number of objectives.

多目标优化指数追踪粗糙集交互式优化进化算法