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scikit-learn Cookbook , Second Edition

You're reading from   scikit-learn Cookbook , Second Edition Over 80 recipes for machine learning in Python with scikit-learn

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Product type Paperback
Published in Nov 2017
Publisher Packt
ISBN-13 9781787286382
Length 374 pages
Edition 2nd Edition
Languages
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Authors (2):
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Trent Hauck Trent Hauck
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Trent Hauck
Julian Avila Julian Avila
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Julian Avila
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Table of Contents (13) Chapters Close

Preface 1. High-Performance Machine Learning – NumPy FREE CHAPTER 2. Pre-Model Workflow and Pre-Processing 3. Dimensionality Reduction 4. Linear Models with scikit-learn 5. Linear Models – Logistic Regression 6. Building Models with Distance Metrics 7. Cross-Validation and Post-Model Workflow 8. Support Vector Machines 9. Tree Algorithms and Ensembles 10. Text and Multiclass Classification with scikit-learn 11. Neural Networks 12. Create a Simple Estimator

Loading the iris dataset

To perform machine learning with scikit-learn, we need some data to start with. We will load the iris dataset, one of the several datasets available in scikit-learn.

Getting ready

A scikit-learn program begins with several imports. Within Python, preferably in Jupyter Notebook, load the numpy, pandas, and pyplot libraries:

import numpy as np    #Load the numpy library for fast array computations
import pandas as pd #Load the pandas data-analysis library
import matplotlib.pyplot as plt #Load the pyplot visualization library

If you are within a Jupyter Notebook, type the following to see a graphical output instantly:

%matplotlib inline 

How to do it...

  1. From the scikit-learn datasets module, access the iris dataset:
from sklearn import datasets
iris = datasets.load_iris()

How it works...

Similarly, you could have imported the diabetes dataset as follows:

from sklearn import datasets  #Import datasets module from scikit-learn
diabetes = datasets.load_diabetes()

There! You've loaded diabetes using the load_diabetes() function of the datasets module. To check which datasets are available, type:

datasets.load_*?

Once you try that, you might observe that there is a dataset named datasets.load_digits. To access it, type the load_digits() function, analogous to the other loading functions:

digits = datasets.load_digits()

To view information about the dataset, type digits.DESCR.

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scikit-learn Cookbook , Second Edition - Second Edition
Published in: Nov 2017
Publisher: Packt
ISBN-13: 9781787286382
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