Machine Learning With Real-World Data
If you’ve ever done empirical work, you know that real-world data rarely, if ever, arrives clean and ready for modeling. No data analysis project consists solely of fitting a model and making predictions.
In today’s blog, we walk through a machine learning project from start to finish. We’ll give you a foundation for completing your own machine learning project in GAUSS, working through:
- Data Exploration and cleaning.
- Splitting data for training and testing.
- Model fitting and prediction.