Advertising Performance Forecasting Model
The project aims to develop a forecasting model that enables marketers to gain deeper insights into the performance of their advertising campaigns. The current challenge faced by marketers is the inability to accurately predict the outcomes of their advertising efforts, which leads to inefficient allocation of resources and suboptimal campaign results. By building a robust forecasting model, learners will apply their classroom knowledge of data analysis, statistical modeling, and machine learning to create a tool that predicts key performance indicators such as click-through rates, conversion rates, and return on investment. The project will involve analyzing historical advertising data, identifying relevant variables, and selecting appropriate forecasting techniques. The ultimate goal is to empower marketers with actionable insights that enhance decision-making and optimize advertising strategies.