Modeling asset allocations and a new portfolio performance score.

Digital finance Pub Date : 2021-01-01 Epub Date: 2021-09-02 DOI:10.1007/s42521-021-00040-8
Apostolos Chalkis, Emmanouil Christoforou, Ioannis Z Emiris, Theodore Dalamagas
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引用次数: 2

Abstract

We discuss and extend a powerful, geometric framework to represent the set of portfolios, which identifies the space of asset allocations with the points lying in a convex polytope. Based on this viewpoint, we survey certain state-of-the-art tools from geometric and statistical computing to handle important and difficult problems in digital finance. Although our tools are quite general, in this paper, we focus on two specific questions. The first concerns crisis detection, which is of prime interest for the public in general and for policy makers in particular because of the significant impact that crises have on the economy. Certain features in stock markets lead to this type of anomaly detection: Given the assets' returns, we describe the relationship between portfolios' return and volatility by means of a copula, without making any assumption on investors' strategies. We examine a recent method relying on copulae to construct an appropriate indicator that allows us to automate crisis detection. On real data the indicator detects all past crashes in the cryptocurrency market and from the DJ600-Europe index, from 1990 to 2008, the indicator identifies correctly 4 crises and issues one false positive for which we offer an explanation. Our second contribution is to introduce an original computational framework to model asset allocation strategies, which is of independent interest for digital finance and its applications. Our approach addresses the crucial question of evaluating portfolio management, and is relevant the individual managers as well as financial institutions. To evaluate portfolio performance, we provide a new portfolio score, based on the aforementioned framework and concepts. In particular, it relies on statistical properties of portfolios, and we show how they can be computed efficiently.

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建模资产配置和新的投资组合绩效评分。
我们讨论并扩展了一个强大的几何框架来表示投资组合集,该框架用凸多面体中的点来标识资产配置空间。基于这一观点,我们从几何计算和统计计算中考察了一些最先进的工具来处理数字金融中的重要和困难问题。虽然我们的工具非常通用,但在本文中,我们将重点关注两个具体问题。第一个问题涉及危机检测,这是公众尤其是政策制定者最感兴趣的问题,因为危机对经济有重大影响。股票市场的某些特征导致了这种类型的异常检测:给定资产的收益,我们通过联结关系来描述投资组合的收益与波动之间的关系,而不对投资者的策略做任何假设。我们研究了一种最近的方法,依靠copulae来构建一个适当的指标,使我们能够自动检测危机。在真实数据中,该指标检测加密货币市场和dj600 -欧洲指数从1990年到2008年的所有过去的崩溃,该指标正确识别了4次危机,并发出了一个假阳性,对此我们提供了解释。我们的第二个贡献是引入了一个原始的计算框架来模拟资产配置策略,这对数字金融及其应用具有独立的兴趣。我们的方法解决了评估投资组合管理的关键问题,并且与个人经理以及金融机构相关。为了评估投资组合的表现,我们基于上述框架和概念提供了一个新的投资组合得分。特别是,它依赖于投资组合的统计特性,我们展示了如何有效地计算它们。
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