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Practical Data Analysis

You're reading from   Practical Data Analysis Pandas, MongoDB, Apache Spark, and more

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Product type Paperback
Published in Sep 2016
Publisher
ISBN-13 9781785289712
Length 338 pages
Edition 2nd Edition
Languages
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Authors (2):
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Hector Cuesta Hector Cuesta
Author Profile Icon Hector Cuesta
Hector Cuesta
Dr. Sampath Kumar Dr. Sampath Kumar
Author Profile Icon Dr. Sampath Kumar
Dr. Sampath Kumar
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Toc

Table of Contents (16) Chapters Close

Preface 1. Getting Started FREE CHAPTER 2. Preprocessing Data 3. Getting to Grips with Visualization 4. Text Classification 5. Similarity-Based Image Retrieval 6. Simulation of Stock Prices 7. Predicting Gold Prices 8. Working with Support Vector Machines 9. Modeling Infectious Diseases with Cellular Automata 10. Working with Social Graphs 11. Working with Twitter Data 12. Data Processing and Aggregation with MongoDB 13. Working with MapReduce 14. Online Data Analysis with Jupyter and Wakari 15. Understanding Data Processing using Apache Spark

Nonlinear regressions


Statistically speaking, the nonlinear regression is a kind of regression analysis used to estimate the relationships between one or more independent variables in a nonlinear combination.

In this chapter, we will use the mlpy Python library, and its Kernel Ridge Regression implementation. We can find more information about nonlinear regression methods at http://mlpy.sourceforge.net/docs/3.3/nonlin_regr.html.

Kernel Ridge Regressions

The most basic algorithm that can be kernelized is (KRRKernel Ridge Regression (KRR), which is a combination of Ridge Regression using a small kernel trick that corresponds to a nonlinear function that fits a line to some values mapped from X to Y. It is similar to a Support Vector Machines (SVM), as we will see in Chapter 8, Working with Support Vector Machines, but the solution depends on all the training samples and not on a subset of support vectors. KRR works well with a few training sets for classification and regression. It is widely...

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