Dynamic Network Perspective of Cryptocurrencies
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SeriesSeminars Econometric Institute
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Speaker(s)Wolfgang Härdle (Humbolt Universtät zu Berlin, Germany)
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FieldEconometrics
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LocationErasmus University, Polak Building, Room 1-08
Rotterdam -
Date and time
October 24, 2019
16:00 - 17:30
Abstract:
Cryptocurrencies
are becoming an attractive asset class and are the focus of recent quantitative
research. The joint dynamics of the cryptocurrency market yields infor-mation
on network risk. Utilizing the adaptive LASSO approach, we build a dynamic network
of cryptocurrencies and model the latent communities with a dynamic stochas-tic
blockmodel. We develop a dynamic covariate-assisted spectral clustering method
to uniformly estimate the latent group membership of cryptocurrencies
consistently. We show that return inter-predictability and crypto
characteristics, including hashing algorithms and proof types, jointly
determine the crypto market segmentation. Based on this classification result,
it is natural to employ eigenvector centrality to identify a cryptocurrency’s
idiosyncratic risk. An asset pricing analysis finds that a cross-sectional
portfolio with a higher centrality earns a higher risk premium. Further tests
confirm that centrality serves as a risk factor well and delivers valuable
information content on cryptocurrency markets.
Co-authors: Li Guo and Yubo Tao