• Home
  • Members
  • Team
  • Help
  • Search
  • Register
  • Login
  • Home
  • Members
  • Help
  • Search

Krafty Internet Marketing Forum Internet Marketing Tips, Tricks, Courses & Bots! Internet Marketing Special Downloads! Applied Machine Learning in R

 
  • 0 Vote(s) - 0 Average
Applied Machine Learning in R
aretr
Offline

Posting Freak

Member
Posts: 12,300
Threads: 12,300
Joined: Mar 2019
Reputation: 5
#1
07-27-2019, 05:21 AM
[Image: 21f03e0246e15313bfcc8e1a4f460c7a.jpg]
Applied Machine Learning in R
.MP4 | Video: 1280x720, 30 fps® | Audio: AAC, 48000 Hz, 2ch | 1.05 GB
Duration: 8 hours | Genre: eLearning | Language: English

Get the essential machine learning skills and use them in real life situations

What you'll learn

Perform model cross-validation to assess model stability on independent data sets

Perform logistic regression and discriminant analysis

Use neural networks to make predictions

What you'll learn
Understand the essential concepts related to machine learning
Perform model cross-validation to assess model stability on independent data sets
Execute advanced regression analysis techniques: best subset selection regression, penalized regression, PLS regression
Perform logistic regression and discriminant analysis
Apply complex classification techniques: naive Bayes, K nearest neighbor, support vector machine, decision trees
Use neural networks to make predictions
Use principal components analysis to detect patterns in variables
Conduct cluster analysis to group observations into homogeneous classes
Requirements
Knowledge of the R program
Basic knowledge of statistics and statistical analysis
Description
This course offers you practical training in machine learning, using the R program. At the end of the course you will know how to use the most widespread machine learning techniques to make accurate predictions and get valuable insights from your data.
All the machine learning procedures are explained live, in detail, on real life data sets. So you will advance fast and be able to apply your knowledge immediately - no need for painful trial-and-error to figure out how to implement this or that technique in R. Within a short time you can have a solid expertise in machine learning.
Machine learning skills are very valuable if you intent to secure a job like data analyst, data scientist, researcher or even software engineer. So it may be the right time for you to enroll in this course and start building your machine learning competences today!
Let's see what you are going to learn here.
First of all, we are going to discuss some essential concepts that you must absolutely know before performing machine learning. So we'll talk about supervised and unsupervised machine learning techniques, about the distinctions between prediction and inference, about the regression and classification models and, above all, about the bias-variance trade-off, a crucial issue in machine learning.
Next we'll learn about cross-validation. This is an all-important topic, because in machine learning we must be able to test and validate our model on independent data sets (also called first seen data). So we are going to present the advantages and disadvantages of three cross-validations approaches.
After the first two introductory sections, we will get to study the supervised machine learning techniques. We'll start with the regression techniques, where the response variable is quantitative. And no, we are not going to stick to the classical OLS regression that you probably know already. We will study sophisticated regression techniques like stepwise regression (forward and backward), penalized regression (ridge and lasso) and partial least squares regression. And of course, we'll demonstrate all of them in R, using actual data sets.
Afterwards we'll go to the classification techniques, very useful when we have to predict a categorical variable. Here we'll study the logistic regression (classical and lasso), discriminant analysis (linear and quadratic), naГЇve Bayes technique, K nearest neighbor, support vector machine, decision trees and neural networks.
For each technique above, the presentation is structured as follows:
* a short, easy to understand theoretical introduction (without complex mathematics)
* how to train the predictive model in R
* how to test the model to make sure that it does a good prediction job on independent data sets.
In the last sections we'll study two unsupervised machine learning techniques: principal component analysis and cluster analysis. They are powerful data mining techniques that allow you to detect patterns in your data or variables.
For each technique, a number of practical exercises are proposed. By doing these exercises you'll actually apply in practice what you have learned.
This course is your opportunity to become a machine learning expert in a few weeks only! With my video lectures, you will find it very easy to master the major machine learning techniques. Everything is shown live, step by step, so you can replicate any procedure at any time you need it.
So click the "Enroll" button to get instant access to your machine learning course. It will surely provide you with new priceless skills. And, who knows, it could give you a tremendous career boost in the near future.
See you inside!
Who this course is for:
Data analysts
Data scientists
Researchers
Students
DOWNLOAD

Code:
http://nitroflare.com/view/4022269ADDC4A0F/pth76.Applied.Machine.Learning.in.R.part1.rar
http://nitroflare.com/view/9DEAC76F05AF8D4/pth76.Applied.Machine.Learning.in.R.part2.rar
http://nitroflare.com/view/0E481B5824925B3/pth76.Applied.Machine.Learning.in.R.part3.rar

Code:
https://rapidgator.net/file/6476466dab2d99fbd0a2966d99444d4b/pth76.Applied.Machine.Learning.in.R.part1.rar
https://rapidgator.net/file/ab62f241521a9aa7c80dfac2b6ee3783/pth76.Applied.Machine.Learning.in.R.part2.rar
https://rapidgator.net/file/fbd970176b9878597543cb8fd5bafd3b/pth76.Applied.Machine.Learning.in.R.part3.rar
« Next Oldest | Next Newest »

Users browsing this thread: 1 Guest(s)



Possibly Related Threads…
Thread Author Replies Views Last Post
  Matt Clark - Amazing Selling Machine 14 + Bonuses + Update 2 smack 0 125 07-13-2025, 02:43 PM
Last Post: smack
  A.I.M. For Clients - A Client Acquisition Machine That Does The Work FOR You smack 0 184 07-05-2025, 05:25 PM
Last Post: smack
  Ben Settle - The Email Client Machine smack 0 290 04-13-2025, 03:54 PM
Last Post: smack
  Michael Simmons - The Learning Ritual 2025 smack 0 464 03-02-2025, 11:49 PM
Last Post: smack
  Howard Berg - Learning Genius Student Bundle smack 0 329 02-18-2025, 12:54 PM
Last Post: smack
  The Outsource Profit Machine 2.0 smack 0 334 02-17-2025, 05:42 PM
Last Post: smack
  Erica Scheider & Rob Lennon - Content Editing 101 - AI Learning Guides & Editor smack 0 440 12-22-2024, 06:37 PM
Last Post: smack
  Frankie Fihn - Loom Conversion Machine smack 0 494 11-13-2024, 02:41 PM
Last Post: smack
  Geometric Angles Applied To Modern Markets (UP) smack 0 447 10-01-2024, 02:53 PM
Last Post: smack
  Mario Castelli - The AI Avatar Machine smack 0 478 08-04-2024, 06:23 PM
Last Post: smack

  • View a Printable Version
  • Subscribe to this thread
Forum Jump:

© Designed by D&D - Powered by MyBB

Linear Mode
Threaded Mode