Dataset about user churn in the telecom industry, including a dimensional table with information on users of a telecommunications network company. The table contains fields for demographic information as well as information related to user churn.
Create an overview dashboard for managers to see the churn situation of users and identify the user churn group, thereby offering solutions to improve this situation
Before developing solutions and visualizing data related to the problem, I will undertake a deep understanding of the problem through the application of the five primary stages of the design thinking process.
- The figure of churn rate is ~ 26.8% (1769/6687) showing that churn rate is a significant issue in the company. It is higher than the average churn rate (22%) in the Telecom industry (according to Statista, 2022) --> A signal for the company to take action on the churn issue
- Gender is mostly equal -> No notable issues .
- Age: Old adulthood (35-64) is the highest rate of total chuners (49.16%) --> More actions are needed for people aged 35-64.
- Contract type: the monthly package dominates others in the number of churn users. It is noticeable that the structure of churn by paying package between all users and churners is significantly different, which means that there may be some problems with the Month-to-Month package.
- Payment method : The same fact is detected when exploring churn by payment method, with direct debit as the most popular paying method of churners.
- Location: WV and OH states have higher churn rates than others. Even avg of customer service calls is higher than the average overall call compare to others.
- In every region, competitors regarding either offers or devices (45.51%) is the most common churn reason, followed by the attitude of supporters (16.22%) and Dissatisfaction (16.17%)
- Top 3 churn reason is competitors made better offer or devices, and the attitude of the support person
- As churn is a concerning problem for the company, further research should be conducted to investigate churn signals in order to early detect churners and take immediate actions before they actually churn.
- Perform competitor analysis to define our pricing model and packages, as well as product features. This will involve R&D improvements, such as enhancing old features and creating new ones, and defining a unique selling point that cannot be easily replicated by other suppliers.
- Re-evaluate our customer support framework and team. This includes building a set of criteria for supporting customers and identifying why old customers were dissatisfied with our customer service.
- Build a dedicated support team that focuses on reconverting churned users.
- Conduct deeper analysis of the age group (35-64) and location of WV and OH states.