Users Sentiment Analysis Using Artificial Intelligence-Based FinTech Data Fusion in Financial Organizations
Innovative applications surprised the research communities in the 21st by presenting in diverse domains. Financial technology (FinTech) is an example of these innovative applications. Financial technology applications have renovated traditional banking systems into improved smart business models. Fi...
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Veröffentlicht in: | Mobile networks and applications 2024-04, Vol.29 (2), p.477-488 |
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creator | Khan, Sulaiman Khan, Habib Ullah Nazir, Shah Albahooth, Bayan Arif, Mohammad |
description | Innovative applications surprised the research communities in the 21st by presenting in diverse domains. Financial technology (FinTech) is an example of these innovative applications. Financial technology applications have renovated traditional banking systems into improved smart business models. Financial technology applications enable the customers with minimum risk or other possible attacks and can make transactions through credit cards and mobile applications from anywhere and anytime. However still the customer doesn’t fully trusted and preferred the uncertain behavior about FinTech-driven applications. To precisely solve this uncertain behavior of customer sentiments, this paper identifies and encourage them towards the use of FinTech-assisted applications. This paper proposed a pipelined model to evaluate user sentiments for their uncertain behaviors towards these FinTech-assisted applications. The proposed model consists of a convolutional neural network (CNN) and support vector machine (SVM), where the CNN is used for classifying the sentiments of different behaviors while SVM is used for statistical information to measure to what extent the users reflect negative behavior. The simulation results are based on the sentiments of users against the OVO application and Mint application on Google Play Store. An overall accuracy rate of 91.7% is recorded for the OVO application. This high accuracy rate reflects the satisfaction of the users with the OVO application and Mint application. Furthermore, this automatic analysis of negative reviews can be used as evidence for future contributions in the revised versions of these applications to secure a safer and more competitive position in the market. |
doi_str_mv | 10.1007/s11036-023-02246-z |
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The proposed model consists of a convolutional neural network (CNN) and support vector machine (SVM), where the CNN is used for classifying the sentiments of different behaviors while SVM is used for statistical information to measure to what extent the users reflect negative behavior. The simulation results are based on the sentiments of users against the OVO application and Mint application on Google Play Store. An overall accuracy rate of 91.7% is recorded for the OVO application. This high accuracy rate reflects the satisfaction of the users with the OVO application and Mint application. 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Financial technology (FinTech) is an example of these innovative applications. Financial technology applications have renovated traditional banking systems into improved smart business models. Financial technology applications enable the customers with minimum risk or other possible attacks and can make transactions through credit cards and mobile applications from anywhere and anytime. However still the customer doesn’t fully trusted and preferred the uncertain behavior about FinTech-driven applications. To precisely solve this uncertain behavior of customer sentiments, this paper identifies and encourage them towards the use of FinTech-assisted applications. This paper proposed a pipelined model to evaluate user sentiments for their uncertain behaviors towards these FinTech-assisted applications. The proposed model consists of a convolutional neural network (CNN) and support vector machine (SVM), where the CNN is used for classifying the sentiments of different behaviors while SVM is used for statistical information to measure to what extent the users reflect negative behavior. The simulation results are based on the sentiments of users against the OVO application and Mint application on Google Play Store. An overall accuracy rate of 91.7% is recorded for the OVO application. This high accuracy rate reflects the satisfaction of the users with the OVO application and Mint application. 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subjects | Accuracy Applications programs Artificial intelligence Artificial neural networks Bank technology Behavior Communications Engineering Computer Communication Networks Customers Data integration Electrical Engineering Engineering IT in Business Market positioning Mobile computing Networks Position measurement Scandals Sentiment analysis Support vector machines User satisfaction |
title | Users Sentiment Analysis Using Artificial Intelligence-Based FinTech Data Fusion in Financial Organizations |
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