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Patient Churn Prediction Dataset
The Patient Churn Prediction dataset is a categorical dataset for the healthcare field containing 2,000 patient records designed to help identify patients at risk of churn so that retention measures can be taken in advance.
Dataset composition:
- Includes patient demographic information such as age, sex, geographic location, and duration of relationship with healthcare provider.
- Service utilization metrics include annual visit frequency, missed appointments, days since last interaction, and nursing specialty.
- Patient satisfaction indicators, such as overall satisfaction score, waiting time satisfaction, staff interaction satisfaction, and service provider rating.
- Financial and participation factors, such as type of insurance, average out-of-pocket expenses, billing issue identification, patient portal usage, referral behavior, and distance to the facility.
Data Fields:
- The target variable is the churn status, which indicates whether a patient has churned (0 = retained, 1 = churned).
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