Leveraging additive regression models to predict future trends with seasonality handling.
Traditional forecasting models often struggle with missing data and trend shifts. This project utilizes Meta's Prophet library to handle time-series data with strong seasonal effects (daily, weekly, yearly).
- Seasonality: Modeled complex holiday effects and weekly cycles.
- Robustness: Handled outliers and missing timestamps effectively.
- Prediction: Generated a 365-day future forecast with confidence intervals.
- Library:
fbprophet - Data Processing:
PandasTime-Series - Visualization:
Plotly(Interactive forecasting plots)