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Julia for Data Science

You're reading from   Julia for Data Science high-performance computing simplified

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Product type Paperback
Published in Sep 2016
Publisher Packt
ISBN-13 9781785289699
Length 346 pages
Edition 1st Edition
Languages
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Author (1):
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Anshul Joshi Anshul Joshi
Author Profile Icon Anshul Joshi
Anshul Joshi
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Toc

Table of Contents (12) Chapters Close

Preface 1. The Groundwork – Julia's Environment FREE CHAPTER 2. Data Munging 3. Data Exploration 4. Deep Dive into Inferential Statistics 5. Making Sense of Data Using Visualization 6. Supervised Machine Learning 7. Unsupervised Machine Learning 8. Creating Ensemble Models 9. Time Series 10. Collaborative Filtering and Recommendation System 11. Introduction to Deep Learning

Summary


Ensemble learning is a method for generating highly accurate classifiers by combining weak or less accurate ones. In this chapter, we discussed some of the methods for constructing ensembles and went through the three fundamental reasons why ensemble methods are able to outperform any single classifier within the ensemble.

We discussed bagging and boosting in detail. Bagging, also known as Bootstrap Aggregation, generates the additional data that is used for training by using sub-sampling on the same dataset with replacement. We also learned why AdaBoost performs so well and understood in detail about random forests. Random forests are highly accurate and efficient algorithms that don't overfit. We also studied how and why they are considered as one of the best ensemble models. We implemented a random forest model in Julia using the "DecisionTree" package.

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