Cryptocurrency and Market Volatility: Insights from Machine Learning Analysis

In a detailed analysis titled "Cryptocurrency in global dynamics: Analyzing the Crypto Volatility Index and financial markets with machine learning," researchers Susanna Levantesi, Gabriella Piscopo, and Alba Roviello examine the complex behaviors of crypto market volatility relative to traditional financial instruments. Published in September 2025, the study focuses on Bitcoin and Ethereum's market risks as measured by the Crypto Volatility Index (CVI).
Using advanced machine learning techniques like Random Forest and Gradient Boosting Machines, the authors uncover non-linear relationships between the CVI and other financial volatility indices such as Gold Volatility Index, Crude Oil Volatility Index, and the S&P 500 Volatility Index. Moreover, they investigate the influence of macroeconomic factors including the USD/EUR exchange rates, Federal Reserve interest rates, and the NASDAQ index on cryptocurrency volatility.
One of the critical conclusions of this research is that crypto assets do not serve as a safe haven for financial investors. This finding is significant for portfolio strategies considering crypto as a hedge or an alternative investment.
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This study highlights the importance of integrating machine learning insights into crypto market analysis, helping investors better understand risk and correlations amid an ever-changing financial environment.