DecoKAN: Interpretable Decomposition for Forecasting Cryptocurrency Market Dynamics
Yuan Gao, Zhenguo Dong, Xuelong Wang, Zhiqiang Wang, Yong Zhang, Shaofan Wang

TL;DR
DecoKAN is an interpretable forecasting framework for cryptocurrency markets that combines wavelet decomposition and transparent neural network models to improve accuracy and trustworthiness.
Contribution
It introduces a novel combination of multi-level DWT and KAN mixers with symbolic analysis for interpretable multivariate time series forecasting in cryptocurrencies.
Findings
DecoKAN achieves the lowest MSE on real-world datasets.
It outperforms state-of-the-art baselines in accuracy.
Provides symbolic, interpretable representations of learned patterns.
Abstract
Accurate and interpretable forecasting of multivariate time series is crucial for understanding the complex dynamics of cryptocurrency markets in digital asset systems. Advanced deep learning methodologies, particularly Transformer-based and MLP-based architectures, have achieved competitive predictive performance in cryptocurrency forecasting tasks. However, cryptocurrency data is inherently composed of long-term socio-economic trends and local high-frequency speculative oscillations. Existing deep learning-based 'black-box' models fail to effectively decouple these composite dynamics or provide the interpretability needed for trustworthy financial decision-making. To overcome these limitations, we propose DecoKAN, an interpretable forecasting framework that integrates multi-level Discrete Wavelet Transform (DWT) for decoupling and hierarchical signal decomposition with…
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Taxonomy
TopicsBlockchain Technology Applications and Security · Stock Market Forecasting Methods · Financial Distress and Bankruptcy Prediction
