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Mastering Azure Machine Learning

You're reading from  Mastering Azure Machine Learning

Product type Book
Published in Apr 2020
Publisher Packt
ISBN-13 9781789807554
Pages 436 pages
Edition 1st Edition
Languages
Authors (2):
Christoph Körner Christoph Körner
Profile icon Christoph Körner
Kaijisse Waaijer Kaijisse Waaijer
Profile icon Kaijisse Waaijer
View More author details

Table of Contents (20) Chapters

Preface Section 1: Azure Machine Learning
1. Building an end-to-end machine learning pipeline in Azure 2. Choosing a machine learning service in Azure Section 2: Experimentation and Data Preparation
3. Data experimentation and visualization using Azure 4. ETL, data preparation, and feature extraction 5. Azure Machine Learning pipelines 6. Advanced feature extraction with NLP Section 3: Training Machine Learning Models
7. Building ML models using Azure Machine Learning 8. Training deep neural networks on Azure 9. Hyperparameter tuning and Automated Machine Learning 10. Distributed machine learning on Azure 11. Building a recommendation engine in Azure Section 4: Optimization and Deployment of Machine Learning Models
12. Deploying and operating machine learning models 13. MLOps—DevOps for machine learning 14. What's next? Index

7. Building ML models using Azure Machine Learning

In the previous chapter, we learned how to extract features from textual and categorical columns using NLP techniques. In this chapter, we will use the knowledge we have gained so far to create and train a powerful tree-based ensemble classifier.

First, we will look behind the scenes of popular ensemble classifiers such as random forest, XGBoost, and LightGBM. These classifiers perform extremely well in practical real-world scenarios, and all are based on decision trees under the hood. By understanding their main benefits, you will be able to spot problems that can be solved with ensemble decision tree classifiers easily.

We will also learn the difference between gradient boosting and random forest and what makes these tree ensembles useful for practical applications. Both techniques help to overcome the main weaknesses of decision trees and can be applied to many different classification and regression problems.

Finally...

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