Cryptocurrency Market Volatility Forecasting

Yiming Wang
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Abstract

Although cryptocurrencies are catching the fancy of investors for various benefits such as decentralization, low transaction costs, and inflation hedging, their extreme volatility is sometimes keeping many away. Consequently, modeling and forecasting cryptocurrency market volatility are essential to investors’ investment decisions and risk management. However, most previous studies have been limited to Bitcoin volatility, disregarding cryptocurrency market performance as a whole. This study estimates realized volatility of cryptocurrency market with a variety of algorithms employing a portfolio-style technique. After comparison, LSTM networks surpass the conventional GARCH-type models; meanwhile, the hybrid GARCH neural network models perform the worst. This study provides an impetus for a significant number of academics interested in the extreme volatility of cryptocurrencies. Additionally, it illustrates that more sophisticated models may not always lead to better predictive performance.
加密货币市场波动预测
尽管加密货币因其去中心化、低交易成本和通胀对冲等各种好处而受到投资者的青睐,但它们的极端波动性有时会让许多人望而却步。因此,建模和预测加密货币市场波动对投资者的投资决策和风险管理至关重要。然而,之前的大多数研究都局限于比特币的波动性,而忽视了整个加密货币市场的表现。本研究通过采用投资组合风格技术的各种算法估计加密货币市场的已实现波动性。经过比较,LSTM网络优于传统的garch型模型;同时,混合GARCH神经网络模型表现最差。这项研究为大量对加密货币的极端波动性感兴趣的学者提供了动力。此外,它说明了更复杂的模型可能并不总是导致更好的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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