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HSN Code 8482 – Import & Export Forecasting (2014–2026)

📌 Project Overview

This project develops a time-series forecasting model for trade flows of HSN Code 8482 (Ball & Roller Bearings) in India.

The objective is to:

  • Analyze historical trade data (2014–2024)
  • Forecast import and export values for 2025–2026
  • Evaluate predictive performance using statistical error metrics

📊 Dataset Information

  • Period Covered: 2014–2024
  • Trade Flows:
    • Imports (M)
    • Exports (X)
  • Metric Used: Trade Value (US$)

🧠 Methodology

Data Preparation

  • Converted trade values into numeric format
  • Mapped trade flows (M → Imports, X → Exports)
  • Created yearly pivot table for modeling

Modeling Approach

Imports Model

  • ARIMA (1,1,1)

Exports Model

  • ARIMAX (1,1,1)
  • Imports used as an exogenous variable

Evaluation Metrics

  • MAE (Mean Absolute Error)
  • RMSE (Root Mean Squared Error)

📊 Model Performance

Imports – ARIMA (1,1,1)

  • MAE: 70,663,385.29
  • RMSE: 79,375,737.08
Year Actual (US$) Predicted (US$) Error
2023 1,329,567,039 1,295,058,786 2.60%
2024 1,400,087,595 1,293,269,077 7.63%

Exports – ARIMAX (1,1,1)

  • MAE: 73,209,916.56
  • RMSE: 88,569,896.68
Year Actual (US$) Predicted (US$) Error
2023 783,726,023 807,086,820 2.98%
2024 753,998,896 877,057,932 16.32%

🔮 Forecast Results (2025–2026)

Imports Forecast

Year Forecast (US$)
2025 1,293,053,838
2026 1,293,027,952

Exports Forecast

Year Forecast (US$)
2025 787,331,237
2026 819,132,972

📈 Forecast Visualization

HSN 8482 Forecast


🛠️ Technologies Used

  • Python
  • Pandas
  • NumPy
  • Matplotlib
  • Statsmodels
  • Scikit-learn
  • Jupyter Notebook

🚀 How to Run This Project

  1. Install dependencies: pip install -r requirements.txt

  2. Launch Jupyter Notebook: jupyter notebook

  3. Open: notebooks/HSNCode.ipynb


📌 Key Insights

  • Imports are projected to remain stable around 1.29B US$
  • Exports show moderate growth from 2025 to 2026
  • ARIMAX improves export forecasting by incorporating import trends
  • Model accuracy ranges between 2–16% error

📄 License

This project is developed for academic and analytical purposes.

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Time-series forecasting of HSN Code 8482 trade flows (2014–2026) using ARIMA and ARIMAX models with performance evaluation and visualization.

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