# Linear Classifiers in Python

4 hours
3,200 XP

## Course Description

In this course you'll learn all about using linear classifiers, specifically logistic regression and support vector machines, with scikit-learn. Once you've learned how to apply these methods, you'll dive into the ideas behind them and find out what really makes them tick. At the end of this course you'll know how to train, test, and tune these linear classifiers in Python. You'll also have a conceptual foundation for understanding many other machine learning algorithms.

### .css-1goj2uy{margin-right:8px;}Group.css-gnv7tt{font-size:20px;font-weight:700;white-space:nowrap;}.css-12nwtlk{box-sizing:border-box;margin:0;min-width:0;color:#05192D;font-size:16px;line-height:1.5;font-size:20px;font-weight:700;white-space:nowrap;}Training 2 or more people?

Try DataCamp for BusinessFor a bespoke solution book a demo.
1. 1

### Applying logistic regression and SVM

Free

In this chapter you will learn the basics of applying logistic regression and support vector machines (SVMs) to classification problems. You'll use the `scikit-learn` library to fit classification models to real data.

Play Chapter Now
scikit-learn refresher
50 xp
KNN classification
100 xp
Comparing models
50 xp
Overfitting
50 xp
Applying logistic regression and SVM
50 xp
Running LogisticRegression and SVC
100 xp
Sentiment analysis for movie reviews
100 xp
Linear classifiers
50 xp
Which decision boundary is linear?
50 xp
Visualizing decision boundaries
100 xp
2. 2

### Loss functions

In this chapter you will discover the conceptual framework behind logistic regression and SVMs. This will let you delve deeper into the inner workings of these models.

3. 3

### Logistic regression

In this chapter you will delve into the details of logistic regression. You'll learn all about regularization and how to interpret model output.

4. 4

### Support Vector Machines

In this chapter you will learn all about the details of support vector machines. You'll learn about tuning hyperparameters for these models and using kernels to fit non-linear decision boundaries.

### GroupTraining 2 or more people?

Collaborators

Prerequisites

Supervised Learning with scikit-learn
Mike Gelbart

Instructor, the University of British Columbia

See More