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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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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

Understanding the normal distribution


The normal distribution is the core of inferential statistics. It is like a bell curve (also called a Gaussian curve). Most of the complex processes can be defined by the normal distribution.

Let's see what a normal distribution looks like. First, we will import the necessary packages. We are including RDatasets now, but will be using it later:

We first set the seed and then explore the normal function:

As per the warning given, we can also use fieldnames instead of names. It is recommended to use fieldnames only from the newer versions of Julia.

Here, we can see that the Normal function is in the Distributions package and has the features Univariate and Continuous. The constructor of the normal() function accepts two parameters:

  • Mean (μ)

  • Standard deviation (σ)

Let's instantiate a normal distribution. We will keep the mean (μ) as 1.0 and the standard deviation (σ) as 3.0:

We can check the mean and standard deviation that we have kept:

Using this normal...

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