使用传统和数据驱动模型对加密货币和股票进行弹性投资组合优化

Joylal Das, Sulalitha Bowala, R. Thulasiram, A. Thavaneswaran
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引用次数: 0

摘要

构建弹性投资组合对投资管理至关重要。本研究比较了构建弹性投资组合的传统模型和数据驱动模型,并分析了它们在股票(标准普尔500指数)和高度波动的加密货币市场中的表现。本研究考察了均值方差和约束优化等传统模型的性能,以及最近提出的数据驱动的股票弹性投资组合优化模型。此外,该研究还用标准普尔CME比特币期货指数和Crypto20指数来分析这些方法。这些分析表明,需要进一步研究传统的和数据驱动的弹性投资组合优化方法,包括高阶矩,特别是在不同的市场条件下。本研究为投资者和投资组合经理提供了宝贵的见解,旨在建立可在不同市场环境中使用的弹性投资组合。
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Resilient Portfolio Optimization using Traditional and Data-Driven Models for Cryptocurrencies and Stocks
Constructing resilient portfolios is of crucial and utmost importance to investment management. This study compares traditional and data-driven models for building resilient portfolios and analyzes their performance for stocks (S&P 500) and highly volatile cryptocurrency markets. The study investigates the performance of traditional models, such as mean-variance and constrained optimization, and a recently proposed data-driven resilient portfolio optimization model for stocks. Moreover, the study analyzes these methods with evolving S&P CME bitcoin futures index and the Crypto20 index. These analyses highlight the need for further investigation into traditional and data-driven approaches for resilient portfolio optimization, including higher-order moments, particularly under varying market conditions. This study provides valuable insights for investors and portfolio managers aiming to build resilient portfolios that could be used in different market environments.
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