The extreme volatility and non-linear dynamics of cryptocurrency markets pose substantial challenges to conventional financial forecasting models, particularly during regime shifts and market shocks. This study introduces an innovative multi-layer artificial intelligence-based decision support framework – CryptoLife HYDRA-SAI – designed to simultaneously enhance predictive accuracy, adaptivity, and explainability in crypto-asset markets. The proposed dual architecture integrates a multi-agent learning network combining deep learning time-series forecasting, NLP-based sentiment analysis, synthetic data generation, and a real-time AI-driven Early Warning System. The research employs qualitative (questionnaire-based) thematic analysis, Exploratory and Confirmatory Factor Analysis, and Partial Least Squares Structural Equation Modelling on an expert sample (N≈2000) to empirically validate the framework. The results reveal a stable five-factor structure in which resilience, explainable AI, and AI-based early warning capabilities exert significant mediating effects on predictive performance. The structural model explains 61% of the variance in prediction accuracy, indicating substantial explanatory power in highly volatile financial environments. The CryptoLife HYDRA-SAI framework contributes to the advancement of cryptocurrency risk management, investor decision support, and supervisory monitoring through adaptive, auditable, and trustworthy AI-driven solutions.
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J Fejes
University of Pannonia
Etelka Éva Katits
University of Pannonia
University of Pannonia
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Fejes et al. (Wed,) studied this question.
synapsesocial.com/papers/69a135b0ed1d949a99abfd69 — DOI: https://doi.org/10.5281/zenodo.18774594