Real-time Prediction of Bitcoin Bubble Crashes
Min Shu, Wei Zhu

TL;DR
This paper introduces an adaptive multilevel time series detection method using LPPLS to improve real-time prediction of Bitcoin bubbles and crashes across different timescales, addressing limitations of previous daily data approaches.
Contribution
It proposes a novel multilevel detection methodology based on LPPLS and finer timescales, enhancing bubble detection accuracy and crash prediction in cryptocurrency markets.
Findings
LPPLS indicator fails with large short-term fluctuations in daily data.
Multilevel approach improves bubble detection and crash forecasting accuracy.
Short-term LPPLS provides insights on daily to weekly bubble status.
Abstract
In the past decade, Bitcoin as an emerging asset class has gained widespread public attention because of their extraordinary returns in phases of extreme price growth and their unpredictable massive crashes. We apply the log-periodic power law singularity (LPPLS) confidence indicator as a diagnostic tool for identifying bubbles using the daily data on Bitcoin price in the past two years. We find that the LPPLS confidence indicator based on the daily Bitcoin price data fails to provide effective warnings for detecting the bubbles when the Bitcoin price suffers from a large fluctuation in a short time, especially for positive bubbles. In order to diagnose the existence of bubbles and accurately predict the bubble crashes in the cryptocurrency market, this study proposes an adaptive multilevel time series detection methodology based on the LPPLS model and finer (than daily) timescale for…
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