Machine Learning: Step-by-Step Guide To Implement Machine Learning Algorithms with Python by Rudolph Russell
Author:Rudolph Russell [Russell, Rudolph]
Language: eng
Format: epub, pdf
Published: 2018-05-20T18:30:00+00:00
- How to train a random forest classifier using the forest function in Scikit-Learn.
- Understanding Multi-Output Classification.
- Understanding multi-Label classifications.
REFERENCES
http://scikit-learn.org/stable/install.html
https://www.python.org
https://matplotlib.org/2.1.0/users/installing.html
http://yann.lecun.com/exdb/mnist/
CHAPTER 3
HOW TO TRAIN A MODEL
After working with many machine learning models and training algorithms, which seem like unfathomable black boxes. we were able to optimize a regression system, have also worked with image classifiers. But we developed these systems without understanding what's s inside and how they work, so now we need to go deeper so that we can grasp how they work and understand the details of implementation.
Gaining a deep understanding of these details will help you with the right model and with choosing the best training algorithm. Also, it will help you with debugging and error analysis.
In this chapter, we'll work with polynomial regression, which is a complex model that works for nonlinear data sets. In addition, we'll working with several regularization techniques that reduce training that encourages overfitting.
Download
Machine Learning: Step-by-Step Guide To Implement Machine Learning Algorithms with Python by Rudolph Russell.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(12585)
Hello! Python by Anthony Briggs(9921)
OCA Java SE 8 Programmer I Certification Guide by Mala Gupta(9799)
The Mikado Method by Ola Ellnestam Daniel Brolund(9782)
Dependency Injection in .NET by Mark Seemann(9345)
A Developer's Guide to Building Resilient Cloud Applications with Azure by Hamida Rebai Trabelsi(9304)
Hit Refresh by Satya Nadella(8826)
Algorithms of the Intelligent Web by Haralambos Marmanis;Dmitry Babenko(8305)
Sass and Compass in Action by Wynn Netherland Nathan Weizenbaum Chris Eppstein Brandon Mathis(7786)
Test-Driven iOS Development with Swift 4 by Dominik Hauser(7768)
Grails in Action by Glen Smith Peter Ledbrook(7700)
The Kubernetes Operator Framework Book by Michael Dame(7670)
The Well-Grounded Java Developer by Benjamin J. Evans Martijn Verburg(7563)
Exploring Deepfakes by Bryan Lyon and Matt Tora(7461)
Practical Computer Architecture with Python and ARM by Alan Clements(7382)
Implementing Enterprise Observability for Success by Manisha Agrawal and Karun Krishnannair(7365)
Robo-Advisor with Python by Aki Ranin(7341)
Building Low Latency Applications with C++ by Sourav Ghosh(7246)
Svelte with Test-Driven Development by Daniel Irvine(7211)
