Machine Learning Algorithm for Predicting Sales of Cardigans In Ludhiana District

Authors

  • Arti Lakhanpal Malhotra Assistant Professor, Department of Computer Science and Engineering, PCTE Institute of Engineering and Technology, Ludhiana, India
  • Ansh Kumar Student, Department of Computer Applications, PCTE Group of Institutes, Ludhiana, India
  • Chhayadeep Kaur Student, Department of Computer Applications, PCTE Group of Institutes, Ludhiana, India

Keywords:

Sales Forecasting, Random Forest Regression, Seasonal Trends, Pricing, Strategy, Consumer Behaviour, Predictive Analytics, Performance Metrics, Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), R-Squared (R²).

Abstract

Machine learning [ML] has become a transformative tool in business analytics, enabling firms to extract valuable insights, optimise operations, and enhance decision-making. Businesses widely use ML for supply chain management, fraud detection, customer segmentation, and sales forecasting. However, challenges such as poor data quality, high processing costs, integration constraints, and the need for skilled professionals often hinder its implementation. Addressing these challenges is crucial to unlocking the full potential of ML and driving efficiency, profitability, and innovation. This study applies ML techniques to forecast sales of jackets and blazers at DGN Clothing, Ludhiana, a major apparel manufacturer. By analysing historical sales data, seasonal trends, and pricing variations, this research explores how ML can help businesses optimise inventory, reduce losses, and improve profitability. The study evaluates Random Forest Regression to determine the most effective model for predicting sales trends. Performance metrics such as Mean Absolute Error (MAE), R-Squared (R²), and Root Mean Squared Error (RMSE) are used to assess accuracy. The results offer actionable insights into demand fluctuations, pricing strategies, and consumer purchasing behavior, allowing businesses to make data-driven decisions. By leveraging MLbased sales forecasting, retailers can enhance stock management, minimise overproduction, and boost revenue generation. This research underscores the importance of ML in modern business analytics, demonstrating its ability to streamline processes and provide a competitive edge in the evolving apparel industry.

References

Bappy MA, Ahmed M, Rauf MA. Exploring the integration of informed machine learning in engineering applications: A comprehensive review. Manam and Rauf, Md Abdur, Exploring the Integration of Informed Machine Learning in Engineering Applications: A Comprehensive Review [February 19, 2024]. 2024 Feb 19.

Chawla NV. The Data Mining and Knowledge Discovery Handbook – Data Mining for Imbalanced Datasets: An Overview. 2009.

Davenport TH, Harris J, Shapiro J. Competing on talent analytics. Harvard Business Review. 2010 Oct 1;88[10]:52–8.

Published

2026-01-22