Introduction to Machine Learning: Supervised Learning offers a clear, practical introduction to how machines learn from labeled data to make predictions and decisions. You’ll build a strong foundation in regression and classification, starting with linear and logistic regression and progressing to resampling, regularization, and tree-based ensemble methods. Along the way, you’ll learn how to evaluate models, manage bias–variance trade-offs, and balance interpretability with predictive power, all while working hands-on in Python. By the end of the course, you’ll have the skills and intuition needed to confidently apply supervised learning techniques to real-world problems.

Introduction to Machine Learning: Supervised Learning

位教师:Daniel E. Acuna
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您将学到什么
Explain and apply the core concepts of supervised learning.
Build, interpret, and evaluate predictive models for regression and classification.
Assess model reliability and improve generalization using validation and regularization techniques.
Apply tree-based and ensemble methods to capture complex relationships in data.
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6 项作业
January 2026
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The concepts are challenging, but the reference materials, availability of transcripts, and more importantly the TAs are a huge help in making the content understandable and clear.
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