Supervised Learning Methods
Regression and classification
MSDS 410-DL Supervised Learning Methods.
This course introduces traditional statistics and data modeling for supervised learning problems, as employed in observational and experimental research. With supervised learning there is a clear distinction between explanatory and response variables. The objective is to predict responses, whether they be quantitative as with multiple regression or categorical as with logistic regression and multinomial logit models. Students work on research and programming assignments, exploring data, identifying appropriate models, and validating models. They utilize techniques for observational and experimental research design, data visualization, variable transformation, model diagnostics, and model selection. Prerequisites: MSDS 400-DL Math for Modelers and MSDS 401-DL Applied Statistics with R.
Back to main page for Analytics and Modeling.