2023
DOI: 10.1186/s40854-022-00438-2
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Online risk-based portfolio allocation on subsets of crypto assets applying a prototype-based clustering algorithm

Abstract: Mean-variance portfolio optimization models are sensitive to uncertainty in risk-return estimates, which may result in poor out-of-sample performance. In particular, the estimates may suffer when the number of assets considered is high and the length of the return time series is not sufficiently long. This is precisely the case in the cryptocurrency market, where there are hundreds of crypto assets that have been traded for a few years. We propose enhancing the mean-variance (MV) model with a pre-selection sta… Show more

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Cited by 8 publications
(6 citation statements)
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“…Silva et al (2022) critically evaluated cryptocurrency trading algorithms, identifying areas for further exploration. Lorenzo and Arroyo (2023) compared risk-based portfolio allocation on crypto asset subsets, enriching the portfolio management literature. Symitsi and Chalvatzis (2019) quantified the economic gains achievable through cryptocurrency portfolio strategies.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Silva et al (2022) critically evaluated cryptocurrency trading algorithms, identifying areas for further exploration. Lorenzo and Arroyo (2023) compared risk-based portfolio allocation on crypto asset subsets, enriching the portfolio management literature. Symitsi and Chalvatzis (2019) quantified the economic gains achievable through cryptocurrency portfolio strategies.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Sen and Jaydip [11] compared portfolios optimized using HRP and reinforcement learning based on annualized returns, risk, and Sharpe ratio, and demonstrated the superior performance of portfolios optimized using reinforcement learning. Lorenzo et al [12] proposed a strategy by selecting cryptocurrency assets for the portfolio using a prototype-based clustering algorithm that optimizes the mean-variance portfolio, and they compared it with portfolios optimized without selecting cryptocurrency assets. Their proposed strategy showed superior performance in terms of portfolio return and risk and empirically demonstrated the ability to improve portfolio performance using machine learning.…”
Section: Related Workmentioning
confidence: 99%
“…This liquidity buffer protects against cash flow changes, economic downturns, and unforeseen costs, maintaining smooth corporate operations . SMEs may confidently explore growth opportunities and weather financial crises without sacrificing their long-term financial success by keeping sufficient liquidity (Lorenzo & Arroyo, 2023).…”
Section: Hypotheses Developmentmentioning
confidence: 99%