Enhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX model
Abstract Customer behavior holds pivotal significance within the fintech industry, both in offline and online domains, influencing revenue generation. The application of data analytics to scrutinize customer behavior is a critical factor in optimizing financial outcomes. The anticipation of future c...
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| Format: | Article |
| Language: | English |
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SpringerOpen
2025-06-01
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| Series: | Journal of Electrical Systems and Information Technology |
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| Online Access: | https://doi.org/10.1186/s43067-025-00209-w |
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| _version_ | 1849691397369626624 |
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| author | Avijit Chowdhury |
| author_facet | Avijit Chowdhury |
| author_sort | Avijit Chowdhury |
| collection | DOAJ |
| description | Abstract Customer behavior holds pivotal significance within the fintech industry, both in offline and online domains, influencing revenue generation. The application of data analytics to scrutinize customer behavior is a critical factor in optimizing financial outcomes. The anticipation of future customer conduct is a cornerstone for resource allocation in sales and marketing, enabling strategic decision-making in manufacturing operations, inventory planning, and point-of-sale scenarios. The intricate nature of customer behavior analysis necessitates innovative methodologies. This study introduces a real-time predictive model: OptiBoost-EnsembleX (Optuna-tuned CatBoost and LightGBM classifiers in a soft-voting ensemble framework) integrating data analytics and unsupervised machine learning techniques to discern and understand customer conduct. The investigation utilized a range of machine learning algorithms, such as random forest, support vector machine (SVM), XGBoost, CatBoost, and LightGBM, to develop models. This employs a unique dataset that consists of 10,000 examples of customer behavior. This investigation culminates in identifying CatBoost as the model that demonstrates the highest accuracy in predicting customer behavior. The selected model incorporated a real-time web application, representing a practical manifestation of the proposed solution. The seamless integration of the developed model into a machine-learning pipeline hosted on Amazon EC2 servers ensures its deployment in a production environment. This investigation makes a substantial contribution to the fintech industry by introducing a comprehensive and efficient method for analyzing customer behavior in real time, which has implications for improving decision-making and optimizing operations. |
| format | Article |
| id | doaj-art-7f7c61067bf6489bbe3b037aeeaaca29 |
| institution | DOAJ |
| issn | 2314-7172 |
| language | English |
| publishDate | 2025-06-01 |
| publisher | SpringerOpen |
| record_format | Article |
| series | Journal of Electrical Systems and Information Technology |
| spelling | doaj-art-7f7c61067bf6489bbe3b037aeeaaca292025-08-20T03:21:02ZengSpringerOpenJournal of Electrical Systems and Information Technology2314-71722025-06-0112112710.1186/s43067-025-00209-wEnhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX modelAvijit Chowdhury0Department of Mechanical Engineering, Chittagong University of Engineering and TechnologyAbstract Customer behavior holds pivotal significance within the fintech industry, both in offline and online domains, influencing revenue generation. The application of data analytics to scrutinize customer behavior is a critical factor in optimizing financial outcomes. The anticipation of future customer conduct is a cornerstone for resource allocation in sales and marketing, enabling strategic decision-making in manufacturing operations, inventory planning, and point-of-sale scenarios. The intricate nature of customer behavior analysis necessitates innovative methodologies. This study introduces a real-time predictive model: OptiBoost-EnsembleX (Optuna-tuned CatBoost and LightGBM classifiers in a soft-voting ensemble framework) integrating data analytics and unsupervised machine learning techniques to discern and understand customer conduct. The investigation utilized a range of machine learning algorithms, such as random forest, support vector machine (SVM), XGBoost, CatBoost, and LightGBM, to develop models. This employs a unique dataset that consists of 10,000 examples of customer behavior. This investigation culminates in identifying CatBoost as the model that demonstrates the highest accuracy in predicting customer behavior. The selected model incorporated a real-time web application, representing a practical manifestation of the proposed solution. The seamless integration of the developed model into a machine-learning pipeline hosted on Amazon EC2 servers ensures its deployment in a production environment. This investigation makes a substantial contribution to the fintech industry by introducing a comprehensive and efficient method for analyzing customer behavior in real time, which has implications for improving decision-making and optimizing operations.https://doi.org/10.1186/s43067-025-00209-wMachine learningSVMRandom forestXGBoostLight GBMCatBoost |
| spellingShingle | Avijit Chowdhury Enhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX model Journal of Electrical Systems and Information Technology Machine learning SVM Random forest XGBoost Light GBM CatBoost |
| title | Enhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX model |
| title_full | Enhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX model |
| title_fullStr | Enhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX model |
| title_full_unstemmed | Enhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX model |
| title_short | Enhancing revenue generation in Bangladesh’s FinTech sector: a comprehensive analysis of real-time predictive customer behavior modeling in AWS using a hybrid OptiBoost-EnsembleX model |
| title_sort | enhancing revenue generation in bangladesh s fintech sector a comprehensive analysis of real time predictive customer behavior modeling in aws using a hybrid optiboost ensemblex model |
| topic | Machine learning SVM Random forest XGBoost Light GBM CatBoost |
| url | https://doi.org/10.1186/s43067-025-00209-w |
| work_keys_str_mv | AT avijitchowdhury enhancingrevenuegenerationinbangladeshsfintechsectoracomprehensiveanalysisofrealtimepredictivecustomerbehaviormodelinginawsusingahybridoptiboostensemblexmodel |