Artificial Intelligence Based Customer Churn Prediction Model for Business Markets.

Journal: Computational intelligence and neuroscience
Published Date:

Abstract

The introduction of artificial intelligence (AI) and machine learning (ML) technologies in recent years has resulted in improved company performance. Customer churn forecast is a difficult problem in many corporate sectors, particularly the telecommunications industry. Because customer churns have a direct impact on a company's total revenue, telecommunications firms have begun to develop 76 models to reduce churns at an earlier stage. Previous research has revealed that AI and ML models are effective CCP solutions. According to this viewpoint, this study proposes a unique AI-based CCP model for Telecommunication Business Markets (AICCP-TBM). The AICCP-TBM model's purpose is to control the existence of churners and non-churners in the telecom sector. The proposed AICCP-TBM model employs a Chaotic Salp Swarm Optimization-based Feature Selection (CSSO-FS) method for the best feature assortment. In addition, a Fuzzy Rule-based Classifier(FRC) is used to distinguish between client churners and non-churners. A technique known as Quantum Behaved Particle Swarm Optimization (QPSO) is used to pick the membership functions for the FRC model in order to improve the classification performance of the FRC model. The performance of the AICCP-TBM model is validated using a benchmark CCP dataset and the experimental results are reviewed from several angles. In relations of presentation, the imitation consequences demonstrated that the AICCP-TBM model surpassed the most recent state-of-the-art CPP models. The suggested AICCP-TBM method's comparative accuracy was thoroughly tested on the three datasets used. Using datasets 1-3, this technique obtained better levels of accuracy, with the maximum attainable values being 97.25 %, 97.5 % and 94.33 %. The simulation results for the AICCP-TBM model demonstrated improved prediction performance.

Authors

  • J Faritha Banu
    Department of Computer Science and Engineering, SRM Institute of Science and Technology, Ramapuram, Chennai, India.
  • S Neelakandan
    Department of IT, Jeppiaar Institute of Technology, Sriperumbudur, India. snksnk17@gmail.com.
  • B T Geetha
    Department of ECE, Saveetha School of Engineering, SIMATS, Saveetha University, Thiruvallur, India.
  • V Selvalakshmi
    Department of Management Studies, SRM Valliammai Engineering College, Kattankulathur, Tamilnadu, India.
  • A Umadevi
    Department of Management Studies, SRM Valliammai Engineering College, Kattankulathur, Tamilnadu, India.
  • Eric Ofori Martinson
    Department of Electronics and Communications Engineering, School of Engineering, All Nations University, Koforidua, India.