dc.description.abstract |
"
Customer churn prediction is one of the most crucial missions for Mobitel to remain in the
industry with long term sustainability. With the rising growth of churn, the customer churn
problem has grown in significance in the organization in specific areas of products and
services. One of the most critical challenges in the data and voice customers and mainly on
the Postpaid service, thus reducing customer churn, by increasing customer satisfaction
may be the outline of the company the concern is to which extent the satisfaction can be
increased if no prediction is made. The aggressive market of the telecommunications
industry has forced the service providers to employ the best data mining algorithms which
produce most accurate prediction to stay competitive in the market. Many data mining
algorithms have been reviewed and most popular algorithm in customer churn prediction
has been used such as Logistic regression, Decision tree, Random Forest, Support vector
Machine & Naïve Bayes to establish an innovative algorithm to produce better accuracy
rate. Additionally, the enhanced methodology such as Data preprocessing, feature selection
has been used to establish better results on the prediction. However, the accuracy
performance of each method and theory used mainly due to the various Databases used
using different attributes and different input variables chosen for the experiment in this
document.
The proposed customer churn models used the historical customer data which become
valuable over time for making predictions. Our proposed Mobitel Postpaid Churn
Prediction Model via Random forest classification methodology proved its efficiency
firstly based on various standard metrics; average precision for our model was 0.89, the
average recall was 0.88, the average F1-score was 0.89 and the model accuracy was
88.77%.In this framework, we will try to obtain more historical data variables from Mobitel
subscriber information & in addition, we will apply more data mining techniques such as
text mining, classification algorithms etc. The use of social media mining & unstructured
data mining has been practiced in this. Therefore, new methods to extract real-time
customer satisfaction feedback must be proposed and used to predict customer churn" |
en_US |