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conversion_model

Overview

This R project is designed for education analytics at the Vrije Universiteit Amsterdam (VU). It focuses on predicting the conversion of applicants to enrolled students using a Random Forest model.

Features

  • Reads in and preprocesses data on student applications and enrollments
  • Calculates historical conversion rates for different student groups
  • Trains a Random Forest model to predict student enrollment based on application data
  • Generates predictions for the current academic year

Data Sources

TBD

Usage

  • Ensure you have the necessary system variables set in your .Renviron file.
  • Run the R script to generate the enrollment predictions.

Technical Details

The project uses the following key libraries and techniques:

  • vusa: A vusaverse package
  • renv: For managing package dependencies
  • Random Forest modeling with the ranger package
  • Feature engineering, including handling of missing data and creating lagged conversion rates