Visual Machine Learning with Yellowbrick

4.7
Sterne
63 Bewertungen
von
Coursera Project Network
2,820 bereits angemeldet
In diesem angeleitetes Projekt werden Sie:

Evaluate the performance of a classifier using visual diagnostic tools from Yellowbrick

Diagnose and handle class imbalance problems

Clock2 hours
IntermediateMittel
CloudKein Download erforderlich
VideoVideo auf geteiltem Bildschirm
Comment DotsEnglisch
LaptopNur Desktop

Welcome to this project-based course on Visual Machine Learning with Yellowbrick. In this course, we will explore how to evaluate the performance of a random forest classifier on the Poker Hand data set using visual diagnostic tools from Yellowbrick. With an emphasis on visual steering of our analysis, we will cover the following topics in our machine learning workflow: feature analysis, feature importance, algorithm selection, model evaluation using regression, cross-validation, and hyperparameter tuning. This course runs on Coursera's hands-on project platform called Rhyme. On Rhyme, you do projects in a hands-on manner in your browser. You will get instant access to pre-configured cloud desktops containing all of the software and data you need for the project. Everything is already set up directly in your internet browser so you can just focus on learning. For this project, you’ll get instant access to a cloud desktop with Python, Jupyter, Yellowbrick, and scikit-learn pre-installed. Notes: - You will be able to access the cloud desktop 5 times. However, you will be able to access instructions videos as many times as you want. - This course works best for learners who are based in the North America region. We’re currently working on providing the same experience in other regions.

Kompetenzen, die Sie erwerben werden

Data ScienceMachine LearningPython ProgrammingData Visualization (DataViz)Scikit-Learn

Schritt für Schritt lernen

In einem Video, das auf einer Hälfte Ihres Arbeitsbereichs abgespielt wird, führt Sie Ihr Dozent durch diese Schritte:

  1. Introduction to the Project and Dataset

  2. Separate the Data into Features and Targets

  3. Evaluating Class Balance

  4. Up-sampling from Minority Classes

  5. Training a Random Forests Classifier

  6. Classification Accuracy

  7. ROC Curve and AUC

  8. Classification Report Heatmap

  9. Class Prediction Error

Ablauf angeleiteter Projekte

Ihr Arbeitsbereich ist ein Cloud-Desktop direkt in Ihrem Browser, kein Download erforderlich

Ihr Dozent leitet Sie in einem Video mit geteiltem Bildschirm Schritt für Schritt an.

Bewertungen

Top-Bewertungen von VISUAL MACHINE LEARNING WITH YELLOWBRICK

Alle Bewertungen anzeigen

Häufig gestellte Fragen

Häufig gestellte Fragen

Haben Sie weitere Fragen? Besuchen Sie das Hilfe-Center für Teiln..