Bayesian framework for characterizing cryptocurrency market dynamics, structural dependency, and volatility using potential field
Anoop C V, Neeraj Negi, Anup Aprem

TL;DR
This paper introduces a Bayesian framework using potential field theory and Gaussian Processes to analyze cryptocurrency market dynamics, identify structural dependencies, and improve trend prediction and visualization.
Contribution
It presents a novel dynamical system model for cryptocurrency prices and infers market indicators that outperform traditional attributes and enhance deep learning predictions.
Findings
Attractors effectively capture market trends and volatility.
Structural dependence aligns with wavelet coherence results.
Improved Litecoin price prediction up to 12 days ahead.
Abstract
Identifying the structural dependence between the cryptocurrencies and predicting market trend are fundamental for effective portfolio management in cryptocurrency trading. In this paper, we present a unified Bayesian framework based on potential field theory and Gaussian Process to characterize the structural dependency of various cryptocurrencies, using historic price information. The following are our significant contributions: (i) Proposed a novel model for cryptocurrency price movements as a trajectory of a dynamical system governed by a time-varying non-linear potential field. (ii) Validated the existence of the non-linear potential function in cryptocurrency market through Lyapunov stability analysis. (iii) Developed a Bayesian framework for inferring the non-linear potential function from observed cryptocurrency prices. (iv) Proposed that attractors and repellers inferred from…
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Taxonomy
TopicsStock Market Forecasting Methods · Complex Systems and Time Series Analysis · Blockchain Technology Applications and Security
MethodsGaussian Process
