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Mastering Predictive Analytics with Python

You're reading from  Mastering Predictive Analytics with Python

Product type Book
Published in Aug 2016
Publisher
ISBN-13 9781785882715
Pages 334 pages
Edition 1st Edition
Languages
Author (1):
Joseph Babcock Joseph Babcock
Profile icon Joseph Babcock

Table of Contents (16) Chapters

Mastering Predictive Analytics with Python
Credits
About the Author
About the Reviewer
www.PacktPub.com
Preface
1. From Data to Decisions – Getting Started with Analytic Applications 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

Comparing classification methods


In this chapter we have examined classification using logistic regression, support vector machines, and gradient boosted decision trees. In what scenarios should we prefer one algorithm over another?

For logistic regression, the data ideally will be linearly separable (the exponent in the formula for the logistic regression, after all, is essentially the same as the SVM equation for a separating hyperplane). If our goal is inference (producing a unit increase in response per 1-unit increase of input measurement, as we described in Chapter 1, From Data to Decisions – Getting Started with Analytic Applications) then the coefficients and log-odds values will be helpful. The stochastic gradient method can also be helpful in cases where we are unable to process all the data concurrently, while the second order methods we discussed may be easier to employ on un-normalized data. Finally, in the context of serializing model parameters and using these results to score...

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