Cryptocurrency Market: Overreaction to News and Herd Instincts
https://doi.org/10.18288/1994-5124-2020-3-74-105
Abstract
We studied the specific properties of the cryptocurrency market. Guided by the concept of implied volatility, we investigated the asymmetric reaction of the market to news. Based on the concept of realized volatility, we verified the hypothesis of herding behavior in the market. To test the properties of the market, we used a combination of methods, starting from the analysis of statistics of search queries, interpreted as proxies of information demand from professional market participants and the “wide crowd”, and ending with advanced Markov-Switching GARCH models and heterogeneous autoregressive models of realized volatility (HAR-RV-J-models). As a result, we found various types of asymmetric reactions of the cryptocurrency market to news related to both the general direction of its dynamics (growth or decrease) and the amplitude of return fluctuations (high or low volatility). During the upward price rally and overheating of the market, investors deliberately avoided the bad news; thereby the asymmetry in the cryptocurrency market was inverse (to the adopted leverage effect). On the contrary, during the downward price rally, market participants exhibited an overreaction to bad news. In addition, the asymmetric reaction to the news observed during the period of low market volatility actually disappeared when the amplitude of cryptocurrency return volatility increased. The behavior of short-term investors was also varied in the study period. While during the growth of the market, small speculators were more likely to follow their own trading strategies, during the hype they borrowed the trading practices of the largest players. We also revealed the effect of training among small investors: over time, they became less prone to provocations from large players, which did not allow the 2019 rally to surpass its counterpart in 2017 in terms of both return oscillations and duration.
Keywords
JEL: G02, G14
About the Authors
M. Yu. Malkina,Russian Federation
Marina Yu. Malkina, Dr. Sci. (Econ.)
7, Universitetskiy per., Nizhny Novgorod, 603000
V. N. Ovchinnikov
Russian Federation
Vyacheslav N. Ovchinnikov
3, Nastas’inskiy per., Moscow, 127006
7, Universitetskiy per., Nizhny Novgorod, 603000
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Review
For citations:
Malkina, M.Yu., Ovchinnikov V.N. Cryptocurrency Market: Overreaction to News and Herd Instincts. Economic Policy. 2020;15(3):74-105. (In Russ.) https://doi.org/10.18288/1994-5124-2020-3-74-105
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