From data to decisions: enhancing financial forecasts with LSTM for AI token prices
ISSN: 0144-3585
Article publication date: 3 April 2024
Issue publication date: 27 November 2024
Abstract
Purpose
This study aims to endeavour to decode artificial intelligence (AI)-based tokens' complex dynamics and predictability using a comprehensive multivariate framework that integrates technical and macroeconomic indicators.
Design/methodology/approach
In this study we used advance machine learning techniques, such as gradient boosting regression (GBR), random forest (RF) and notably long short-term memory (LSTM) networks, this research provides a nuanced understanding of the factors driving the performance of AI tokens. The study’s comparative analysis highlights the superior predictive capabilities of LSTM models, as evidenced by their performance across various AI digital tokens such as AGIX-singularity-NET, Cortex and numeraire NMR.
Findings
This study finding shows that through an intricate exploration of feature importance and the impact of speculative behaviour, the research elucidates the long-term patterns and resilience of AI-based tokens against economic shifts. The SHapley Additive exPlanations (SHAP) analysis results show that technical and some macroeconomic factors play a dominant role in price production. It also examines the potential of these models for strategic investment and hedging, underscoring their relevance in an increasingly digital economy.
Originality/value
According to our knowledge, the absence of AI research frameworks for forecasting and modelling current aria-leading AI tokens is apparent. Due to a lack of study on understanding the relationship between the AI token market and other factors, forecasting is outstandingly demanding. This study provides a robust predictive framework to accurately identify the changing trends of AI tokens within a multivariate context and fill the gaps in existing research. We can investigate detailed predictive analytics with the help of modern AI algorithms and correct model interpretation to elaborate on the behaviour patterns of developing decentralised digital AI-based token prices.
Keywords
Acknowledgements
This work was funded in part by the National Natural Science Foundation of China (Nos: 72171197 and 72342028) and in part by the Natural Science Foundation of Sichuan Province of China (No: 2023NSFSC0364).
Citation
Ali, R., Xu, J., Baig, M.H., Rehman, H.S.U., Waqas Aslam, M. and Qasim, K.U. (2024), "From data to decisions: enhancing financial forecasts with LSTM for AI token prices", Journal of Economic Studies, Vol. 51 No. 8, pp. 1677-1693. https://doi.org/10.1108/JES-01-2024-0022
Publisher
:Emerald Publishing Limited
Copyright © 2024, Emerald Publishing Limited