基于个人经历和向上标杆的参考点,制定稳健的投资组合策略

IF 1.9 Q2 BUSINESS, FINANCE
Zongrun Wang, Tangtang He, Xiaohang Ren, Luu Duc Toan Huynh
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引用次数: 0

摘要

本研究探讨了决策行为中的参照依赖概念,尤其是在投资组合领域。以往的研究已经证实,个人的自身情况和社会环境对其风险认知的形成起着举足轻重的作用。然而,对投资决策中参考点动态性质的探索却十分有限。针对这一文献空白,本研究旨在调查相关动态参考点在投资组合中的表现。在此过程中,建立了个人经验参考点和向上标杆参考点,并使用了包含 CVaR 测量的比较稳健投资组合模型。此外,还研究了不同参考行为对拟议投资组合模型性能的影响。此外,为了提高投资组合模型的样本外性能,还提出了一种利用聚类技术的情景形成方法。比较了几种聚类方法的性能,包括经典的层次聚类和频谱聚类,以及互惠近邻支持聚类。实证结果表明,个人经历参考点的正向行为能产生更好的预期收益,而负向行为则表现出较低的风险水平。此外,结果表明,利用频谱聚类可以显著提高所提出的稳健投资组合模型的样本外性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Robust portfolio strategies based on reference points for personal experience and upward pacesetters

Robust portfolio strategies based on reference points for personal experience and upward pacesetters

This study explores the concept of reference dependence in decision-making behavior, particularly in the realm of investment portfolios. Previous research has established that an individual’s own circumstances and societal surroundings play a pivotal role in shaping their perception of risk. However, there has been limited exploration into the dynamic nature of reference points in investment decision-making. To address this gap in the literature, the current study is aimed at investigating the performances of relevant dynamic reference points in investment portfolios. In doing so, the personal experience and upward pacesetter reference points are established, and a comparative robust portfolio model incorporating the CVaR measure is utilized. The impacts of different reference behaviors on the proposed portfolio model’s performance are also examined. Furthermore, to enhance the portfolio model’s out-of-sample performance, a scenario formation method that leverages clustering techniques is proposed. The performances of several clustering methods, including classic hierarchical and spectral clustering, as well as reciprocal-nearest-neighbors supported clustering, are compared. The empirical results indicate that the positive behavior of the personal experience reference point yields a better expected return, while the negative behavior exhibits a lower level of risk. Moreover, the results suggest that the utilization of spectral clustering can significantly improve the out-of-sample performance of the proposed robust portfolio model.

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来源期刊
CiteScore
3.20
自引率
17.60%
发文量
87
期刊介绍: Review of Quantitative Finance and Accounting deals with research involving the interaction of finance with accounting, economics, and quantitative methods, focused on finance and accounting. The papers published present useful theoretical and methodological results with the support of interesting empirical applications. Purely theoretical and methodological research with the potential for important applications is also published. Besides the traditional high-quality theoretical and empirical research in finance, the journal also publishes papers dealing with interdisciplinary topics.
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