Logistic Regression with R: Build & Predict
Learners completing this course will be able to differentiate regression and classification tasks, apply logistic regression models in R, preprocess raw...
About This Course
Learners completing this course will be able to differentiate regression and classification tasks, apply logistic regression models in R, preprocess raw datasets, evaluate models using confusion matrices, and optimize performance through ROC curves, AUC, and threshold adjustments. They will also gain hands-on experience with real-world applications in healthcare and finance, including diabetes prediction and credit risk assessment. This course provides a step-by-step approach to mastering logistic regression, starting with foundational concepts and progressing to advanced applications. Learners will benefit from practical datasets, including advertisement, medical, and financial data, ensuring they acquire not just theoretical knowledge but also applied skills. Unique to this course is the integration of both technical depth (feature scaling, dimension reduction, model coefficients) and practical impact (loan approval, risk modeling). By the end, participants will be confident in building, interpreting, and validating supervised machine learning models with logistic regression in R, equipping them with valuable expertise for data science, analytics, and financial decision-making roles.
Topics Covered
Frequently Asked Questions
How much does Logistic Regression with R: Build & Predict cost?
Visit the Logistic Regression with R: Build & Predict course page for current pricing and available discounts.
Who teaches Logistic Regression with R: Build & Predict?
Logistic Regression with R: Build & Predict is taught by EDUCBA, EDUCBA.
What skill level is Logistic Regression with R: Build & Predict for?
This course is designed for advanced learners.
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