基于网络模块化的聚类投资组合分配:蒙特卡罗模拟研究

S. Ferretti, Sara Montagna
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引用次数: 0

摘要

在研究金融应用中证券投资的表现时,认识到需要有效的模拟技术,因为观察到回测通常会引入显著的偏差。然而,虽然蒙特卡罗模拟通常用于该应用场景,但到目前为止还没有提出通用框架。本文描述了一个通用的建模和仿真框架,用于研究使用不同合成时间序列生成模型时分配方案的性能。此外,我们设计了一种新的投资组合配置方案,其中资产是一个复杂网络的节点,并通过模块化的方法检测和测量相关资产的社区。分配是通过在不同社区之间平均分配权重来获得的。我们在高斯、几何布朗运动和ARFIMA生成模型下,将这种新方案与最先进的方法在各种场景下进行比较。结果表明,该方案在许多场景下都优于其他方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Modularity based Clustering for Portfolio Allocation: a Monte-Carlo Simulation Study
The need for effective simulation techniques, when studying the performance of portfolio investments in financial applications, was recognized since it was observed that backtesting typically introduces significant bias. However, while Monte Carlo simulations are commonly used in this application scenario, up to now no general frameworks have been proposed. This paper describes a general modeling and simulation framework that is used to study how allocation schemes perform when different synthetic time series generation models are employed. Moreover, we devised a novel portfolio allocation scheme where assets are nodes of a complex network and communities of correlated assets are detected and measured by means of modularity. Allocation is than obtained by equally distributing weights among different communities. We compare this novel scheme against state-of-the-art approaches in various scenarios, under Gaussian, Geometric Brownian motion and ARFIMA generation models. Results show that the proposed scheme outperforms the others in many scenarios.
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