Customer Churn Prediction Using Machine Learning Algorithms
DOI:
https://doi.org/10.32628/IJSRST52411140Keywords:
Customer Churn Prediction, Industry, Machine Learning Algorithms, Predictive AnalyticsAbstract
In today’s highly competitive industries, retaining customers is vital for sustaining business growth and profitability. Customer churn, the phenomenon where customers switch from one service provider to another, poses a significant challenge for different companies. Predicting churn can help these companies take proactive measures to retain valuable customers. This study explores the application of machine learning algorithms for predicting customer churn in different industries like Telecom Industry, IT and Banking Sector. Additionally, the research contributes to the existing body of knowledge in the field of customer churn prediction, showcasing the potential of machine learning algorithms in addressing complex business challenges.
The project begins with data collection and preprocessing, involving the extraction and cleaning of relevant features from diverse sources such as customer interactions, transaction history, and demographic information.The predictive modeling phase employs state-of-the-art machine learning algorithms, including but not limited to logistic regression, decision trees and random forest, feature engineering is employed to enhance the model's ability to capture nuanced customer behavior. The dataset is split into training and testing sets to evaluate model performance accurately.
The outcomes of this project have practical implications for businesses aiming to proactively manage customer retention strategies. By identifying potential churners early, companies can implement targeted interventions, personalized marketing strategies, and loyalty programs to mitigate the risk of customer loss and foster long-term relationships.
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W. M. Van der Aalst, “Process modeling and analysis,” in Process Mining: Data Science in Action, 2nd ed. Berlin, Germany: Springer, 2016, ch. 3, pp. 55–88. DOI: https://doi.org/10.1007/978-3-662-49851-4_3
S. Sakr, Z. Maamar, A. Awad, B. Benatallah, and W. M. P. van der Aalst, “Business process analytics and big data systems: A roadmap to bridge the gap,” IEEE Access, vol. 6, pp. 77308–77320, 2018 DOI: https://doi.org/10.1109/ACCESS.2018.2881759
Z. Tangyuan and S. Moro, “Research trends in customer churn prediction: A data mining approach,” in Proc. World Conf. Inf. Syst. Technol., 2021, pp. 227–237. DOI: https://doi.org/10.1007/978-3-030-72657-7_22
A. D. Caigny, K. Coussement, and K. W. D. Bock, “A new hybrid classifica-tion algorithm for customer churn prediction based on logistic regression anddecision trees,” Eur. J. Oper. Res., vol. 269, pp. 760–772, Sep. 2018. DOI: https://doi.org/10.1016/j.ejor.2018.02.009
N. Alboukaey, A. Joukhadar, and N. Ghneim, “Dynamic behavior based churn prediction in mobile telecom,” Expert Syst. Appl., vol. 162, Dec. 2020, Art. no. 113779 DOI: https://doi.org/10.1016/j.eswa.2020.113779
K. Viol, H. Scho¨ller, A. Kaiser, C. Fartacek, W. Aichhorn, and G. Schiepek, “Detecting pattern transitions in psychological time series—A validation study on the pattern transition detection algorithm (PTDA),” PLoS ONE, vol. 17, no. 3, Mar. 2022, Art. no. e0265335.
K. Viol, H. Scho¨ller, A. Kaiser, C. Fartacek, W. Aichhorn, and G. Schiepek, “Detecting pattern transitions in psychological time series—A validation study on the pattern transition detection algorithm (PTDA),” PLoS ONE, vol. 17, no. 3, Mar. 2022, Art. no. e0265335. DOI: https://doi.org/10.1371/journal.pone.0265335
P. Lalwani, M. K. Mishra, J. S. Chadha, and P. Sethi, “Customer churn predic- tion system: A machine learning approach,” Computing, vol. 104, no. 2, pp. 271–294, Feb. 2022. DOI: https://doi.org/10.1007/s00607-021-00908-y
G. Mohammadi, R. Tavakkoli-Moghaddam, and M. Mohammadi, “Hierar- chical neural regression models for customer churn prediction,” J. Eng., vol. 2013, pp. 1–9, Feb. 2013. DOI: https://doi.org/10.1155/2013/543940
Z. Chen, S. Zhang, S. McClean, B. Allan, and I. Kegel, “Sequence mining TV viewing data using embedded Markov modelling,” in Proc. IEEE SmartWorld, Ubiquitous Intell. Comput., Adv. Trusted Comput., Scalable Comput. Com mun., Internet People Smart City Innov. (SmartWorld/SCALCOM/UIC/ATC/IOP/SCI),Oct. 2021, pp. 665–670 DOI: https://doi.org/10.1109/SWC50871.2021.00099
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