NYU Classifieds>NYU Online Courses>Logistic Regression and Prediction for Health Data

Logistic Regression and Prediction for Health Data

About this Course

This course introduces learners to the analysis of binary/dichotomous outcomes. Learners will become familiar with fundamental tests for two-group comparisons and statistical inference plus prediction more broadly using logistic regression. They will understand the connection between prevalence, risk ratios, and odds ratios. By the end of this course, learners will be able to understand how binary outcomes arise, how to use R to compare proportions between two groups, how to fit logistic regressions in R, how to make predictions using logistic regression, and how to assess the quality of these predictions. All concepts taught in this course will be covered with multiple modalities: slide-based lectures, guided coding practice with the instructor, and independent but structured exercises.

Created by: University of Michigan


Related Online Courses

This specialization is intended for those learners that:\\n\\n- would preferably have an undergraduate (bachelors) degree, or is a currently enrolled student\\n\\n- are interested in the area of IT... more
This is a self-paced lab that takes place in the Google Cloud console. Google Cloud IAM unifies access control for Cloud Platform services into a single system to present a consistent set of... more
Would you like to spend some time of your study experience or even your whole study course abroad? Did you hear about the top universities in Germany? Then \"Welcome to Munich\"! In the first... more
The Juniper Networks Security Fundamentals specialization provides students a brief overview of cybersecurity problems and how Juniper Networks approaches a complete security solution with Juniper... more
Course Description: This course provides an in-depth exploration of the BFSI sector, its current trends, and the technological advancements shaping the industry. Participants will gain insights... more

CONTINUE SEARCH

FOLLOW COLLEGE PARENT CENTRAL