American Journal of Business and Operations Research
AJBOR
2692-2967
2770-0216
10.54216/AJBOR
https://www.americaspg.com/journals/show/2250
2018
2018
Enhancing Market Price Decision-Making in Fintech through A BusinesĀ¬s Intelligence Technique
Faculty of computers and Informatics, Zagazig University, Zagazig, 44519, Egypt
Mahmoud
Ismail
The surge of Fintech data and its implications on informed decision-making within the transportation sector have spurred the need for advanced analytical frameworks. This study addresses the challenge of leveraging Fintech data's temporal dynamics to enhance predictive capabilities and decision-making. The methodologies encompass an AutoEncoder (AE) for spatial feature extraction and an Improved Gated Recurrent Unit (IGRU) to capture temporal dependencies. Additionally, the Huber loss function optimizes model parameters, particularly in handling outliers. Integrating these techniques, our study explores Fintech data's spatial and temporal patterns, contributing insights for transportation planners and Fintech industries. Results demonstrate the efficacy of AE in learning spatial features, while IGRU effectively captures temporal dependencies, enabling the prediction of Fintech data with enhanced accuracy. The application of Huber loss ensures robustness by mitigating outlier influence. By the study's end, the model's predictive capabilities foster informed decision-making, offering opportunities to enhance Fintech data quality, reduce congestion, and bolster road safety. Overall, this research underscores the significance of advanced machine learning methodologies in decoding Fintech data's intricacies, laying a foundation for data-driven decision-making in the transportation and Fintech sectors.
2021
2021
98
105
10.54216/AJBOR.020204
https://www.americaspg.com/articleinfo/1/show/2250