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Main Authors: Jing, Ruixue, Kobayashi, Ryota, Rocha, Luis Enrique Correa
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.24831
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author Jing, Ruixue
Kobayashi, Ryota
Rocha, Luis Enrique Correa
author_facet Jing, Ruixue
Kobayashi, Ryota
Rocha, Luis Enrique Correa
contents The rapidly evolving cryptocurrency market presents unique challenges for investment due to its inherent volatility and evolving regulatory environment. Collective price movements can be exploited to construct diversified portfolios with improved risk-return profiles. This paper introduces an integrated framework that combines network analysis, price forecasting, and portfolio theory to identify stable groups of highly correlated cryptocurrencies for profitable portfolio construction. We employ the Louvain community detection algorithm together with consensus clustering to extract temporally persistent correlation clusters, and incorporate ARIMA-based price forecasts to enhance forward-looking cluster formation. Using 5 years of daily closing prices, we evaluate portfolio performance across multiple strategies and holding horizons, assessing both profitability and downside risk with return-based and tail-risk metrics. Our empirical results show that predictive consensus-clustering portfolios maintain consistently positive and stable performance up to a 14-day horizon, exhibit favourable gain-loss asymmetry, and achieve tighter tail-risk control. These findings demonstrate that stable interdependencies in cryptocurrency markets can be leveraged to construct profitable and risk-aware portfolios across short-term holding horizons.
format Preprint
id arxiv_https___arxiv_org_abs_2505_24831
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimising cryptocurrency portfolios through stable clustering of price correlation networks
Jing, Ruixue
Kobayashi, Ryota
Rocha, Luis Enrique Correa
Popular Physics
Physics and Society
Portfolio Management
The rapidly evolving cryptocurrency market presents unique challenges for investment due to its inherent volatility and evolving regulatory environment. Collective price movements can be exploited to construct diversified portfolios with improved risk-return profiles. This paper introduces an integrated framework that combines network analysis, price forecasting, and portfolio theory to identify stable groups of highly correlated cryptocurrencies for profitable portfolio construction. We employ the Louvain community detection algorithm together with consensus clustering to extract temporally persistent correlation clusters, and incorporate ARIMA-based price forecasts to enhance forward-looking cluster formation. Using 5 years of daily closing prices, we evaluate portfolio performance across multiple strategies and holding horizons, assessing both profitability and downside risk with return-based and tail-risk metrics. Our empirical results show that predictive consensus-clustering portfolios maintain consistently positive and stable performance up to a 14-day horizon, exhibit favourable gain-loss asymmetry, and achieve tighter tail-risk control. These findings demonstrate that stable interdependencies in cryptocurrency markets can be leveraged to construct profitable and risk-aware portfolios across short-term holding horizons.
title Optimising cryptocurrency portfolios through stable clustering of price correlation networks
topic Popular Physics
Physics and Society
Portfolio Management
url https://arxiv.org/abs/2505.24831