JCTAM OPEN ACCESS

Journal of Computer Technology and Applied Mathematics

ISSN:3007-4126 (print) | ISSN:3007-4134 (online) | Publication Frequency: Bimonthly

OPEN ACCESS|Research Article||4 November 2025

Funding-Rate Driven Routing in Financial Prediction Systems

* Corresponding Author1: Xueyi Cheng, E-Mail: Frances.cheng17@gmail.com

Publication

Accepted 2025 October 27 ; Published 2025 November 4

Journal of Computer Technology and Applied Mathematics, 2025, 2(6), 3007-4126.

Abstract

Financial forecasting models tend to be based on past market action trends. While such methods are very good under steady-state conditions, financial markets tend to change abruptly due to a change in liquidity, macroeconomic news, or leverage imbalances. Such models trained on past price action are too sluggish in responding to regime changes and therefore make the wrong and not to be relied upon predictions at the worst possible moment when accurate advice is most required. To address this challenge, this paper proposes a funding-rate driven routing model that dynamically switches between forecasting models depending on inferred market states. Funding rates and spot–perpetual basis signs are used to detect volatility and sentiment changes that cause shock regimes. In ordinary times, a light univariate LSTM is used to ensure forecasting efficacy. As volatility rises, the system pushes forecasting to a multi-source deep learning model that incorporates price, volume, and sentiment background. The architecture uses an edge–cloud hybrid execution strategy that compromises on latency, privacy, and scalability. This work demonstrates that, through the integration of regime detection and model switching, one can obtain more accurate forecasting without sacrificing computational responsibility. The model introduces an additional more adaptive, context-aware methodology for real-world financial forecasting environments that must operate under continuously varying risk levels.

Keywords

Funding Rate , LSTM , Deep Learning , Edge–Cloud Execution .

Metadata

Pages: 26-30

References: 10

Disciplines: Big Data Technology

Subjects: Data Analytics

Cite This Article

APA Style

Cheng, X. (2025). Funding-rate driven routing in financial prediction systems. Journal of Computer Technology and Applied Mathematics, 2(6), 26-30. https://doi.org/10.70393/6a6374616d.333332

Acknowledgments

The authors thank the editor and anonymous reviewers for their helpful comments and valuable suggestions.

FUNDING

Not applicable.

INSTITUTIONAL REVIEW BOARD STATEMENT

Not applicable.

DATA AVAILABILITY STATEMENT

The original contributions presented in the study are included in the article/supplementary material, further inquiries can be directed to the corresponding author.

INFORMED CONSENT STATEMENT

Not applicable.

CONFLICT OF INTEREST

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

AUTHOR CONTRIBUTIONS

Not applicable.

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PUBLISHER'S NOTE

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cc Copyright © 2025 The Author(s). Published by Southern United Academy of Sciences.
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