Abstract
The research
outlines a workflow that incorporates data collection, preprocessing, model training, and
optimization. Real-world datasets from retail and e-commerce sectors are utilized to validate
the proposed methodology, showcasing substantial improvements in model performance. The
results indicate that optimized models not only provide better predictions of consumer
behaviour but also enhance customer segmentation and targeting strategies. The study
concludes with recommendations for future research, including the exploration of hybrid
optimization techniques and the application of these methods in real-time analytics.