Abstract:
Customer churn, switching from one service provider to another, costs the wireless telecommunications industry $4 billion each year in North America and Europe. To proact...Show MoreMetadata
Abstract:
Customer churn, switching from one service provider to another, costs the wireless telecommunications industry $4 billion each year in North America and Europe. To proactively build lasting relationships with customers, it is thus crucial to predict customer behavior. Machine learning has been applied to churn prediction, using historical data such as usage, billing, customer service, and demographics. However, because customer behavior is often nonstationary, training a model based on data extracted from a window of time in the past yields poor performance on the present. We propose two distinct approaches, using more historical data or new, unlabeled data, to improve the results for this real-world, large-scale, nonstationary problem. A new ensemble classification method, with combination weights learned from both labeled and unlabeled data, is also proposed, and it outperforms bagging and mixture of experts.
Published in: IJCNN'01. International Joint Conference on Neural Networks. Proceedings (Cat. No.01CH37222)
Date of Conference: 15-19 July 2001
Date Added to IEEE Xplore: 07 August 2002
Print ISBN:0-7803-7044-9
Print ISSN: 1098-7576
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Customer Behavior ,
- Non-stationary Environments ,
- Service Providers ,
- Time Window ,
- Customer Service ,
- Unlabeled Data ,
- Combined Weight ,
- Neural Network ,
- Mean Square Error ,
- Training Set ,
- Training Data ,
- Receiver Operating Characteristic Curve ,
- Test Data ,
- Mixture Model ,
- Individual Models ,
- Multilayer Perceptron ,
- Class Probabilities ,
- Ensemble Method ,
- Large-scale Problems ,
- Density Of Component ,
- Multilayer Perceptron Classifier ,
- Window Position ,
- Single Neural Network ,
- Mixture Density ,
- Customer Data ,
- Input Feature Space ,
- Fixed-point Iteration ,
- Improve Prediction Accuracy
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Customer Behavior ,
- Non-stationary Environments ,
- Service Providers ,
- Time Window ,
- Customer Service ,
- Unlabeled Data ,
- Combined Weight ,
- Neural Network ,
- Mean Square Error ,
- Training Set ,
- Training Data ,
- Receiver Operating Characteristic Curve ,
- Test Data ,
- Mixture Model ,
- Individual Models ,
- Multilayer Perceptron ,
- Class Probabilities ,
- Ensemble Method ,
- Large-scale Problems ,
- Density Of Component ,
- Multilayer Perceptron Classifier ,
- Window Position ,
- Single Neural Network ,
- Mixture Density ,
- Customer Data ,
- Input Feature Space ,
- Fixed-point Iteration ,
- Improve Prediction Accuracy