STLGJan 24, 2022

Linear Laws of Markov Chains with an Application for Anomaly Detection in Bitcoin Prices

arXiv:2201.09790v15 citations
Originality Incremental advance
AI Analysis

This work addresses anomaly detection in cryptocurrency markets, offering a novel analytical approach, though it is incremental as it builds on existing Markov chain theory.

The paper presents a method to find linear laws governing Markov chains and applies it to detect anomalies in Bitcoin prices, showing that linear laws became more complex before major market events like the COVID-19 crash and Bitcoin surge, with a third parameter indicating hidden Markov properties and potential price manipulation.

The goals of this paper are twofold: (1) to present a new method that is able to find linear laws governing the time evolution of Markov chains and (2) to apply this method for anomaly detection in Bitcoin prices. To accomplish these goals, first, the linear laws of Markov chains are derived by using the time embedding of their (categorical) autocorrelation function. Then, a binary series is generated from the first difference of Bitcoin exchange rate (against the United States Dollar). Finally, the minimum number of parameters describing the linear laws of this series is identified through stepped time windows. Based on the results, linear laws typically became more complex (containing an additional third parameter that indicates hidden Markov property) in two periods: before the crash of cryptocurrency markets inducted by the COVID-19 pandemic (12 March 2020), and before the record-breaking surge in the price of Bitcoin (Q4 2020 - Q1 2021). In addition, the locally high values of this third parameter are often related to short-term price peaks, which suggests price manipulation.

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