数字加密货币
可预测性
文件夹
计量经济学
多元化(营销策略)
聚类分析
市场细分
协变量
计算机科学
预期收益
经济
金融经济学
统计
人工智能
业务
数学
微观经济学
计算机安全
营销
作者
Li Guo,Wolfgang Karl Härdle,Yubo Tao
标识
DOI:10.1080/07350015.2022.2146695
摘要
Cryptocurrencies return cross-predictability and technological similarity yield information on risk propagation and market segmentation. To investigate these effects, we build a time-varying network for cryptocurrencies, based on the evolution of return cross-predictability and technological similarities. We develop a dynamic covariate-assisted spectral clustering method to consistently estimate the latent community structure of cryptocurrencies network that accounts for both sets of information. We demonstrate that investors can achieve better risk diversification by investing in cryptocurrencies from different communities. A cross-sectional portfolio that implements an inter-crypto momentum trading strategy earns a 1.08% daily return. By dissecting the portfolio returns on behavioral factors, we confirm that our results are not driven by behavioral mechanisms.
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