是什么推动了加密货币的回报?一种稀疏统计跳跃模型方法

Federico P. Cortese, Petter N. Kolm, Erik Lindström
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引用次数: 0

摘要

我们应用统计稀疏跳跃模型(一种最近开发的,可解释的和鲁棒的制度切换模型)来推断驱动最大加密货币回报动态的关键特征。该算法联合进行特征选择、参数估计和状态分类。我们的大量候选特征是基于新兴文献中发现的影响加密货币回报的加密货币、情绪和金融市场时间序列,而其他特征则是新的。在我们的实证工作中,我们证明了三状态模型最能描述加密货币回报的动态。各州有自然的基于市场的解释,因为它们分别对应于牛市、中性和熊市制度。使用数据驱动的特征选择方法,我们能够确定哪些特征是重要的,哪些不重要。特别是,在一组候选特征中,我们表明了回报的第一时刻,代表趋势和逆转信号的特征,市场活动和公众关注是加密市场动态的关键驱动因素。
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What drives cryptocurrency returns? A sparse statistical jump model approach
Abstract We apply the statistical sparse jump model, a recently developed, interpretable and robust regime-switching model, to infer key features that drive the return dynamics of the largest cryptocurrencies. The algorithm jointly performs feature selection, parameter estimation, and state classification. Our large set of candidate features are based on cryptocurrency, sentiment and financial market-based time series that have been identified in the emerging literature to affect cryptocurrency returns, while others are new. In our empirical work, we demonstrate that a three-state model best describes the dynamics of cryptocurrency returns. The states have natural market-based interpretations as they correspond to bull, neutral, and bear market regimes, respectively. Using the data-driven feature selection methodology, we are able to determine which features are important and which ones are not. In particular, out of the set of candidate features, we show that first moments of returns, features representing trends and reversal signals, market activity and public attention are key drivers of crypto market dynamics.
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