Statistical modeling in predictive analytics uses mathematical equations to represent relationships between variables and make predictions. This unit covers key concepts, types of models, data preparation, and model building techniques. It also explores evaluation methods, result interpretation, and real-world business applications. The unit delves into challenges like data quality, model interpretability, and ethical considerations. It emphasizes the importance of understanding model limitations and addressing deployment issues for successful implementation in business contexts.