Abstract:
FinTech is a separate terminology that analyzes the financial technology industries inside a wider
series of commands for firms using IT tools. As the Internet of Things (IoT) grows exponentially, AI
enabled flexible IoT is the future of financing. IoT's depth has likely changed the financial industry today,
and it could quickly become a dominant instrument in the future. The use of AI and IoT can greatly
enhance financial data extraction and customer support. Financial disaster prediction (FDP) seems to be a
process of assessing a corporation's economic position. The Fintech index's forecast could also allow
shareholders to prevent costs and help financial managements. So, we propose a novel hybridized
gradient long short-term memory and recurrent neural network (HG-LSTM-RNN) in a FinTech setting.
The financial information of global businesses is acquired in the beginning phase using IoT applications
like mobile phones and computers. To select the optimum features, we utilize the flexible chaotic henry
gas solubility optimization (FCHGSO) approach. Furthermore, the proposed approach is used to classify
the gathered financial data with the greatest prediction rate. The performances of the proposed approach
like sensitivity, F-score, accuracy are examined and compared with existing approaches to prove our
research with the greatest effectiveness. The findings of those performances are depicted in graphical
representation using the MATLAB tool.
Description:
FinTech is a separate terminology that analyzes the financial technology industries inside a wider
series of commands for firms using IT tools. As the Internet of Things (IoT) grows exponentially, AI
enabled flexible IoT is the future of financing. IoT's depth has likely changed the financial industry today,
and it could quickly become a dominant instrument in the future. The use of AI and IoT can greatly
enhance financial data extraction and customer support. Financial disaster prediction (FDP) seems to be a
process of assessing a corporation's economic position. The Fintech index's forecast could also allow
shareholders to prevent costs and help financial managements. So, we propose a novel hybridized
gradient long short-term memory and recurrent neural network (HG-LSTM-RNN) in a FinTech setting.
The financial information of global businesses is acquired in the beginning phase using IoT applications
like mobile phones and computers. To select the optimum features, we utilize the flexible chaotic henry
gas solubility optimization (FCHGSO) approach. Furthermore, the proposed approach is used to classify
the gathered financial data with the greatest prediction rate. The performances of the proposed approach
like sensitivity, F-score, accuracy are examined and compared with existing approaches to prove our
research with the greatest effectiveness. The findings of those performances are depicted in graphical
representation using the MATLAB tool.