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University of Pennsylvania

Machine Learning Essentials

Chris Callison-Burch
Victor Preciado

Instructors: Chris Callison-Burch

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Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

17 hours to complete
3 weeks at 5 hours a week
Flexible schedule
Learn at your own pace
Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

17 hours to complete
3 weeks at 5 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Review probability basics and understand essential theoretical framework to analyze statistical learning problems.

  • Use linear regression and Python programming to solve machine learning problems.

Details to know

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Assessments

12 assignments

Taught in English

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This course is part of the AI and Machine Learning Essentials with Python Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
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There are 4 modules in this course

This module introduces the standard theoretical framework used to analyze statistical learning problems. We start by covering the concept of regression function and the need for parametric models to estimate it due to the curse of dimensionality. We continue by presenting tools to assess the quality of a parametric model and discuss the bias-variance tradeoff as a theoretical framework to understand overfitting and optimal model flexibility.

What's included

8 videos1 reading3 assignments1 programming assignment

In this module, we cover the problem of linear regression. We start with a formal statement of the problem, we derive a solution as an optimization problem, and provide a closed-form expression using the matrix pseudoinverse. We then move on to analyze the statistical properties of the linear regression coefficients, such as their covariance and variances. We use this statistical analysis to determine coefficient accuracy and analyze confidence intervals. We then move on to the topic of hypothesis testing, which we use to determine dependencies between input variables and outputs. We finalize with a collection of metrics to measure model accuracy, and continue with the introduction to the Python programming language. Please note, there is no formal assignment this week, and we hope that everyone participates in the discussion instead.

What's included

7 videos3 assignments1 discussion prompt

In this module, you will learn how to include categorical (discrete) inputs in your linear regression problem, as well as nonlinear effects, such as polynomial and interaction terms. As a companion to this theoretical content, there are two recitation videos that demonstrate how to solve linear regression problems in Python. You will need to use this knowledge to complete a programming project.

What's included

7 videos3 assignments1 programming assignment

In this module, we introduce classification problems from the lens of statistical learning. We start by introducing a generative model based on the concept of conditional class probability. Using these probabilities, we show how to build the Bayes optimal classifier which minimizes the expected misclassification error. We then move on to present logistic regression, in conjunction with maximum likelihood estimation, for parametric estimation of the conditional class probabilities from data. We also extend the idea of hypothesis testing to the context of logistic regression.

What's included

7 videos1 reading3 assignments1 programming assignment

Instructors

Chris Callison-Burch
7 Courses2,222 learners

Offered by

Recommended if you're interested in Machine Learning

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