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Machine Learning with scikit-learn Quick Start Guide
Machine Learning with scikit-learn Quick Start Guide

Machine Learning with scikit-learn Quick Start Guide: Classification, regression, and clustering techniques in Python

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Machine Learning with scikit-learn Quick Start Guide

Predicting Categories with K-Nearest Neighbors

The k-Nearest Neighbors (k-NN) algorithm is a form of supervised machine learning that is used to predict categories. In this chapter, you will learn about the following:

  • Preparing a dataset for machine learning with scikit-learn
  • How the k-NN algorithm works under the hood
  • Implementing your first k-NN algorithm to predict a fraudulent transaction
  • Fine-tuning the parameters of the k-NN algorithm
  • Scaling your data for optimized performance

The k-NN algorithm has a wide range of applications in the field of classification and supervised machine learning. Some of the real-world applications for this algorithm include predicting loan defaults and credit-based fraud in the financial industry and predicting whether a patient has cancer in the healthcare industry.

This book's design facilitates the implementation of a robust machine...

Technical requirements

Preparing a dataset for machine learning with scikit-learn

The first step to implementing any machine learning algorithm with scikit-learn is data preparation. Scikit-learn comes with a set of constraints to implementation that will be discussed later in this section. The dataset that we will be using is based on mobile payments and is found on the world's most popular competitive machine learning website – Kaggle.

You can download the dataset from: https://www.kaggle.com/ntnu-testimon/paysim1.

Once downloaded, open a new Jupyter Notebook by using the following code in Terminal (macOS/Linux) or Anaconda Prompt/PowerShell (Windows):

Jupyter Notebook

The fundamental goal of this dataset is to predict whether a mobile transaction is fraudulent. In order to do this, we need to first have a brief understanding of the contents of our data. In order to explore the dataset...

The k-NN algorithm

Mathematically speaking, the k-NN algorithm is one of the most simple machine learning algorithms out there. See the following diagram for a visual overview of how it works:

How k-NN works under the hood

The stars in the preceding diagram represent new data points. If we built a k-NN algorithm with three neighbors, then the stars would search for the three data points that are closest to it.

In the lower-left case, the star sees two triangles and one circle. Therefore, the algorithm would classify the star as a triangle since the number of triangles was greater than the number of circles.

In the upper-right case, the star sees two circles and one circle. Therefore, the algorithm will classify the star as a circle since the number of circles was greater than the number of triangles.

The real algorithm does this in a very probabilistic manner and picks the...

Implementing the k-NN algorithm using scikit-learn

In the following section, we will implement the first version of the k-NN algorithm and assess its initial accuracy. When implementing machine learning algorithms using scikit-learn, it is always a good practice to implement algorithms without fine-tuning or optimizing any of the associated parameters first in order to evaluate how well it performs.

In the following section, you will learn how to do the following:

  • Split your data into training and test sets
  • Implement the first version of the algorithm on the data
  • Evaluate the accuracy of your model using a k-NN score

Splitting the data into training and test sets

The idea of training and test sets is fundamental to every...

Fine-tuning the parameters of the k-NN algorithm

In the previous section, we arbitrarily set the number of neighbors to three while initializing the k-NN classifier. However, is this the optimal value? Well, it could be, since we obtained a relatively high accuracy score in the test set.

Our goal is to create a machine learning model that does not overfit or underfit the data. Overfitting the data means that the model has been trained very specifically to the training examples provided and will not generalize well to cases/examples of data that it has not encountered before. For instance, we might have fit the model very specifically to the training data, with the test cases being also very similar to the training data. Thus, the model would have been able to perform very well and produce a very high value of accuracy.

Underfitting is another extreme case, in which the model...

Scaling for optimized performance

The k-NN algorithm is an algorithm that works based on distance. When a new data point is thrown into the dataset and the algorithm is given the task of classifying this new data point, it uses distance to check the points that are closest to it.

If we have features that have different ranges of values – for example, feature one has a range between 0 to 800 while feature two has a range between one to five – this distance metric does not make sense anymore. We want all the features to have the same range of values so that the distance metric is on level terms across all features.

One way to do this is to subtract each value of each feature by the mean of that feature and divide by the variance of that feature. This is called standardization:

We can do this for our dataset by using the following code:

from sklearn.preprocessing...

Summary

This chapter was fundamental in helping you prepare a dataset for machine learning with scikit-learn. You have learned about the constraints that are imposed when you do machine learning with scikit-learn and how to create a dataset that is perfect for scikit-learn.

You have also learned how the k-NN algorithm works behind the scenes and have implemented a version of it using scikit-learn to predict whether a transaction was fraudulent. You then learned how to optimize the parameters of the algorithm using the popular GridSearchCV algorithm. Finally, you have learnt how to standardize and scale your data in order to optimize the performance of your model.

In the next chapter, you will learn how to classify fraudulent transactions yet again with a new algorithm – the logistic regression algorithm!

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Key benefits

  • Build your first machine learning model using scikit-learn
  • Train supervised and unsupervised models using popular techniques such as classification, regression and clustering
  • Understand how scikit-learn can be applied to different types of machine learning problems

Description

Scikit-learn is a robust machine learning library for the Python programming language. It provides a set of supervised and unsupervised learning algorithms. This book is the easiest way to learn how to deploy, optimize, and evaluate all of the important machine learning algorithms that scikit-learn provides. This book teaches you how to use scikit-learn for machine learning. You will start by setting up and configuring your machine learning environment with scikit-learn. To put scikit-learn to use, you will learn how to implement various supervised and unsupervised machine learning models. You will learn classification, regression, and clustering techniques to work with different types of datasets and train your models. Finally, you will learn about an effective pipeline to help you build a machine learning project from scratch. By the end of this book, you will be confident in building your own machine learning models for accurate predictions.

Who is this book for?

This book is for aspiring machine learning developers who want to get started with scikit-learn. Intermediate knowledge of Python programming and some fundamental knowledge of linear algebra and probability will help.

What you will learn

  • Learn how to work with all scikit-learn s machine learning algorithms
  • Install and set up scikit-learn to build your first machine learning model
  • Employ Unsupervised Machine Learning Algorithms to cluster unlabelled data into groups
  • Perform classification and regression machine learning
  • Use an effective pipeline to build a machine learning project from scratch

Product Details

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Publication date, Length, Edition, Language, ISBN-13
Publication date : Oct 30, 2018
Length: 172 pages
Edition : 1st
Language : English
ISBN-13 : 9781789343700
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Product Details

Publication date : Oct 30, 2018
Length: 172 pages
Edition : 1st
Language : English
ISBN-13 : 9781789343700
Category :
Languages :

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Table of Contents

9 Chapters
Introducing Machine Learning with scikit-learn Chevron down icon Chevron up icon
Predicting Categories with K-Nearest Neighbors Chevron down icon Chevron up icon
Predicting Categories with Logistic Regression Chevron down icon Chevron up icon
Predicting Categories with Naive Bayes and SVMs Chevron down icon Chevron up icon
Predicting Numeric Outcomes with Linear Regression Chevron down icon Chevron up icon
Classification and Regression with Trees Chevron down icon Chevron up icon
Clustering Data with Unsupervised Machine Learning Chevron down icon Chevron up icon
Performance Evaluation Methods Chevron down icon Chevron up icon
Other Books You May Enjoy Chevron down icon Chevron up icon

Customer reviews

Rating distribution
Full star icon Full star icon Full star icon Full star icon Half star icon 4.2
(5 Ratings)
5 star 60%
4 star 20%
3 star 0%
2 star 20%
1 star 0%
Donald Kalley Apr 09, 2020
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Now I am understanding Scikit learn. The approach to only focus on all the different algorithms was a smart move. Now I will proceed to purchase another book(Bokeh) from the author. Great job!
Amazon Verified review Amazon
MyAmazonReviewNameHere May 30, 2021
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Well written and very useful.
Amazon Verified review Amazon
Sven T Sep 13, 2023
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Das Buch ist sehr verständlich und didaktisch super aufbereitet. Ein kleiner Fehler im Code wurde über den Errata Prozess schnell adressiert, geklärt und für die Zukunft korrigiert (auch online entsprechend abrufbar). Sehr netter Kontakt mit Verlag und Autor. Es ist nicht mein erstes Buch zu diesem Thema, aber wirklich top geschrieben. Die entsprechenden Bibliotheken werden super anhand von Beispielen erklärt. Theorie kommt auch nicht zu kurz, allerdings konzentriert sich der Autor ums "Machen", also sehr praxisorientiert. Absolute Kaufempfehlung!
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Keolohilani L. Mar 06, 2019
Full star icon Full star icon Full star icon Full star icon Empty star icon 4
I am liking this book so far. It is making some of the mathematically difficult concepts easier to follow with some code to work along. I hope to get through this book in the next couple of days.
Amazon Verified review Amazon
Scott Zasadil Dec 29, 2020
Full star icon Full star icon Empty star icon Empty star icon Empty star icon 2
Whoever reviewed this book for Packt publishing did not do a good job of it as a number of obvious mistakes stand out: 1) At the conclusion of Chapter 3, we are told that the topic of Chapter 4 will be decision trees and random forests, which don't appear until Chapter 6; 2) In chapter 5, the author uses a dataset with a *binary* target of isFraud to explain not only Linear Regression but also Ridge Regression and Lasso Regression, as well. Logistic regression - not linear regression - is best suited for binary classification problems and scikit-learn actually has RidgeClassifier - which the author does not use - for performing a classification problem using Ridge regression. Also, the Lasso code on page 67 will not run as intended as the author uses a variable called ridge_regression in it. That is, it uses the results from the previous Ridge Regression code to evaluate the Lasso Regression work; 3) The explanation of how the Random Forest algorithm operates on page 80 is incorrect.There are some good sections - in particular the chapter on Performance Evaluation Methods, but because the reader has to be on the lookout for what should have been easily caught errors, this is not a book for someone who is just getting started with scikit-learn.
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