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Mastering Numerical Computing with NumPy

You're reading from   Mastering Numerical Computing with NumPy Master scientific computing and perform complex operations with ease

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Product type Paperback
Published in Jun 2018
Publisher Packt
ISBN-13 9781788993357
Length 248 pages
Edition 1st Edition
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Authors (3):
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Tiago Antao Tiago Antao
Author Profile Icon Tiago Antao
Tiago Antao
Mert Cuhadaroglu Mert Cuhadaroglu
Author Profile Icon Mert Cuhadaroglu
Mert Cuhadaroglu
Umit Mert Cakmak Umit Mert Cakmak
Author Profile Icon Umit Mert Cakmak
Umit Mert Cakmak
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Table of Contents (11) Chapters Close

Preface 1. Working with NumPy Arrays FREE CHAPTER 2. Linear Algebra with NumPy 3. Exploratory Data Analysis of Boston Housing Data with NumPy Statistics 4. Predicting Housing Prices Using Linear Regression 5. Clustering Clients of a Wholesale Distributor Using NumPy 6. NumPy, SciPy, Pandas, and Scikit-Learn 7. Advanced Numpy 8. Overview of High-Performance Numerical Computing Libraries 9. Performance Benchmarks 10. Other Books You May Enjoy

Hyperparameters

Before we start, maybe it's better to explain why we call them hyperparameters and not parameters. In machine learning, model parameters can be learned from the data, which means that while you train your model, you fit the model's parameters. On the other hand, we usually set hyperparameters before we start training the model. In order to give an example, you can think of coefficients in regression models as model parameters. A hyperparameter example, we can say the learning rate in many different models or the number of clusters (k) in k-means clustering.

Another important thing is the relationship between model parameters and hyperparameters, and how they shape our machine learning model, in other words, the hypothesis of our model. In machine learning, parameters are used for configuring the model, and this configuration will tailor the algorithm...

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