Description: Please refer to the section BELOW (and NOT ABOVE) this line for the product details - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - Title:Tree-Based Machine Learning Algorithms: Decision Trees, Random Forests, And BoostingISBN13:9781975860974ISBN10:1975860977Author:Sheppard, Clinton (Author)Description:(This is a RePrint) - Get A Hands-On Introduction To Building And Using Decision Trees And Random Forests Tree-Based Machine Learning Algorithms Are Used To Categorize Data Based On Known Outcomes In Order To Facilitate Predicting Outcomes In New Situations You Will Learn Not Only How To Use Decision Trees And Random Forests For Classification And Regression, And Some Of Their Respective Limitations, But Also How The Algorithms That Build Them Work Each Chapter Introduces A New Data Concern And Then Walks You Through Modifying The Code, Thus Building The Engine Just-In-Time Along The Way You Will Gain Experience Making Decision Trees And Random Forests Work For You This Book Uses Python, An Easy To Read Programming Language, As A Medium For Teaching You How These Algorithms Work, But It Isn't About Teaching You Python, Or About Using Pre-Built Machine Learning Libraries Specific To Python It Is About Teaching You How Some Of The Algorithms Inside Those Kinds Of Libraries Work And Why We Might Use Them, And Gives You Hands-On Experience That You Can Take Back To Your Favorite Programming Environment Table Of Contents: A Brief Introduction To Decision Treeschapter 1: Branching - Uses A Greedy Algorithm To Build A Decision Tree From Data That Can Be Partitioned On A Single Attribute Chapter 2: Multiple Branches - Examines Several Ways To Partition Data In Order To Generate Multi-Level Decision Trees Chapter 3: Continuous Attributes - Adds The Ability To Partition Numeric Attributes Using Greater-Than Chapter 4: Pruning - Explore Ways Of Reducing The Amount Of Error Encoded In The Tree Chapter 5: Random Forests - Introduces Ensemble Learning And Feature Engineering Chapter 6: Regression Trees - Investigates Numeric Predictions, Like Age, Price, And Miles Per Gallon Chapter 7: Boosting - Adjusts The Voting Power Of The Randomly Selected Decision Trees In The Random Forest In Order To Improve Its Ability To Predict Outcomes Binding:Paperback, PaperbackPublisher:Createspace Independent Publishing PlatformPublication Date:2017-09-09Weight:0.35 lbsDimensions:0.23'' H x 9.02'' L x 5.98'' WNumber of Pages:110Language:English
Price: 9.54 USD
Location: USA
End Time: 2024-10-04T08:12:37.000Z
Shipping Cost: 0 USD
Product Images
Item Specifics
Return shipping will be paid by: Buyer
All returns accepted: Returns Accepted
Item must be returned within: 30 Days
Refund will be given as: Money Back
Return policy details:
Book Title: Tree-Based Machine Learning Algorithms: Decision Trees, Rand...
Number of Pages: 152 Pages
Publication Name: Tree-Based Machine Learning Algorithms : Decision Trees, Random Forests, and Boosting
Language: English
Publisher: CreateSpace
Item Height: 0.3 in
Publication Year: 2017
Subject: Programming / Algorithms
Type: Textbook
Item Weight: 10.1 Oz
Item Length: 9 in
Subject Area: Computers
Author: Clinton Sheppard
Item Width: 6 in
Format: Trade Paperback