Regression Analysis with Python by Massaron Luca & Boschetti Alberto
Author:Massaron, Luca & Boschetti, Alberto [Massaron, Luca]
Language: eng
Format: azw3, pdf
Publisher: Packt Publishing
Published: 2016-02-29T05:00:00+00:00
Numeric feature scaling
In Chapter 3, Multiple Regression in Action, inside the feature scaling section, we discussed how changing your original variables to a similar scale could help better interpret the resulting regression coefficients. Moreover, scaling is essential when using gradient descent-based algorithms because it facilitates quicker converging to a solution. For gradient descent, we will introduce other techniques that can only work using scaled features. However, apart for the technical requirements of certain algorithms, now our intention is to draw your attention to how feature scaling can be helpful when working with data that can sometimes be missing or faulty.
Missing or wrong data can happen not just during training but also during the production phase. Now, if a missing value is encountered, you have two design options to create a model sufficiently robust to cope with such a problem:
Actively deal with the missing values (there is a paragraph in this chapter devoted to this)
Passively deal with it and:Your system throws an error and everything goes down (and remains down till the problem is solved)
Your system ignores the missing data and computes the values that are not missing
Download
Regression Analysis with Python by Massaron Luca & Boschetti Alberto.pdf
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.
Deep Learning with Python by François Chollet(12571)
Hello! Python by Anthony Briggs(9916)
OCA Java SE 8 Programmer I Certification Guide by Mala Gupta(9796)
The Mikado Method by Ola Ellnestam Daniel Brolund(9779)
Dependency Injection in .NET by Mark Seemann(9340)
Algorithms of the Intelligent Web by Haralambos Marmanis;Dmitry Babenko(8298)
Test-Driven iOS Development with Swift 4 by Dominik Hauser(7763)
Grails in Action by Glen Smith Peter Ledbrook(7696)
The Well-Grounded Java Developer by Benjamin J. Evans Martijn Verburg(7557)
Becoming a Dynamics 365 Finance and Supply Chain Solution Architect by Brent Dawson(7076)
Microservices with Go by Alexander Shuiskov(6843)
Practical Design Patterns for Java Developers by Miroslav Wengner(6764)
Test Automation Engineering Handbook by Manikandan Sambamurthy(6703)
Secrets of the JavaScript Ninja by John Resig Bear Bibeault(6414)
Angular Projects - Third Edition by Aristeidis Bampakos(6108)
The Art of Crafting User Stories by The Art of Crafting User Stories(5638)
NetSuite for Consultants - Second Edition by Peter Ries(5570)
Demystifying Cryptography with OpenSSL 3.0 by Alexei Khlebnikov(5375)
Kotlin in Action by Dmitry Jemerov(5063)
