3: Classification
Date: 1st November 2023
π‘ Classification helps us to group data into predefined classes. Logistic Regression is a linear model used for binary classification, while K-means is an unsupervised clustering algorithm that categorizes data into clusters. Support Vector Machines (SVM) find an optimal hyperplane to separate data, and Decision Trees use a tree-like structure to make decisions based on feature attributes. Come to this session to explore and implement these four well-known classification methods! π‘
You can access our demonstration notebook here: π Tutorial 3 Notebook
The folder contains notebooks for Logistic Regression, SVMs, Decision Trees and K-Means. The solutions are available in the same folder.
You can access our slides here: π» Tutorial 3 Slides
The recording from this session is available here: π€ Tutorial 3 Recording
The DOXA Challenge notebook can be found here: π DOXA Challenge 1
This is now open for submissions! Let's see how well your models can performππΌ
This is the end of the Classical Machine Learning section of the series. We will continute next half term on Deep Learning π₯³
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