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Mastering Predictive Analytics with Python

You're reading from   Mastering Predictive Analytics with Python Exploit the power of data in your business by building advanced predictive modeling applications with Python

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Product type Paperback
Published in Aug 2016
Publisher
ISBN-13 9781785882715
Length 334 pages
Edition 1st Edition
Languages
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Author (1):
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Joseph Babcock Joseph Babcock
Author Profile Icon Joseph Babcock
Joseph Babcock
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Table of Contents (11) Chapters Close

Preface 1. From Data to Decisions – Getting Started with Analytic Applications FREE CHAPTER 2. Exploratory Data Analysis and Visualization in Python 3. Finding Patterns in the Noise – Clustering and Unsupervised Learning 4. Connecting the Dots with Models – Regression Methods 5. Putting Data in its Place – Classification Methods and Analysis 6. Words and Pixels – Working with Unstructured Data 7. Learning from the Bottom Up – Deep Networks and Unsupervised Features 8. Sharing Models with Prediction Services 9. Reporting and Testing – Iterating on Analytic Systems Index

Evaluating classification models


Now that we have fit a classification model, we can examine the accuracy on the test set. One common tool for performing this kind of analysis is the Receiver Operator Characteristic (ROC) curve. To draw an ROC curve, we select a particular cutoff for the classifier (here, a value between 0 and 1 above which we consider a data point to be classified as a positive, or 1) and ask what fraction of 1s are correctly classified by this cutoff (true positive rate) and, concurrently, what fraction of negatives are incorrectly predicted to be positive (false positive rate) based on this threshold. Mathematically, this is represented by choosing a threshold and computing four values:

TP = true positives = # of class 1 points above the threshold
FP = false positives = # of class 0 points above the threshold
TN = true negatives = # of class 0 points below the threshold
FN = false negatives = # of class 1 points below the threshold

The true positive rate (TPR) plotted...

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