Tutorials :

Machine Learning Basics with Minitab

      Author: Baturi   |   11 March 2023   |   comments: 0

Machine Learning Basics with Minitab
Free Download Machine Learning Basics with Minitab
Published 3/2023
Created by László Bognár
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 48 Lectures ( 11h 20m ) | Size: 13.9 GB


Theory with elaborated examples and Minitab tutorials
Free Download What you'll learn
You will learn the fundamentals of machine learning with a focus on practical applications using Minitab.
You will also learn how to apply these techniques to real world problems in a wide variety of application areas.
This hands-on approach will give you the confidence and skills you need to succeed in a career in data analysis or machine learning.
By the end of the course, you'll be able to build and implement regression and classification models and gain a deep understanding of their underlying concepts.
Requirements
Basic knowledge in Statistics.
It is recommended to use this version because earlier versions cannot read the attached Minitab project files. However, the tutorial and example data files can also be downloaded in Excel *.xlsx format, so that students with earlier Minitab versions can follow the course and do the exercises on their own.
No programming skills.
Description
Course Title: Machine Learning Basics with MinitabCourse Description:This comprehensive course is designed to provide a detailed understanding of the basics of machine learning using Minitab, with a focus on supervised learning. The course covers the fundamental concepts of regression analysis and binary logistic classification, including how to evaluate models and interpret results. The course also covers tree-based models for binary and multinomial classification.The course begins with an introduction to machine learning, where students will gain an understanding of what machine learning is, the different types of machine learning, and the difference between supervised and unsupervised learning. This is followed by an overview of the basics of supervised learning, including how to learn, the different types of regression, and the conditions that must be met to use regression models in machine learning versus classical statistics.The course then delves into regression analysis in detail, covering the different types of regression models and how to use Minitab to evaluate them. This includes a thorough explanation of statistically significant predictors, multicollinearity, and how to handle regression models that include categorical predictors, including additive and interaction effects. Students will also learn how to make predictions for new observations using confidence intervals and prediction intervals.Next, the course moves onto model building, where students will learn how to handle regression equations with "wrong" predictors and use stepwise regression to find optimal models in Minitab. This includes an overview of how to evaluate models and interpret results.The course then shifts to binary logistic regression, which is used for binary classification. Students will learn how to evaluate binary classification models, including good fit metrics such as the ROC curve and AUC. They will also use Minitab to analyze a heart failure dataset using binary logistic regression.The course then covers classification trees, including an overview of node splitting methods such as splitting by misclassification rate, Gini impurity, and entropy. Students will learn how to predict class for a node and evaluate the goodness of the model using misclassification costs, ROC curve, Gain chart, and Lift chart for both binary and multinomial classification.Finally, the course covers the concept and use of predefined prior probabilities and input misclassification costs, and how to build a tree using Minitab. Throughout the course, students will gain hands-on experience applying the concepts learned in real-world scenarios.Overall, this course provides a thorough understanding of machine learning basics using Minitab, with a focus on supervised learning, regression analysis, and classification. Upon completion of this course, students will have the knowledge and skills to apply supervised machine learning techniques to real-world data problems.
Who this course is for
This course is designed for students with a basic statistics background who are new to machine learning and want to gain practical skills in this field. No programming experience is necessary, but the course will introduce you to the advanced use of Minitab's menu-driven interface. Machine Learning is a multi-disciplinary field, often only to be learned in more depth over several books and courses, but this course is the perfect first learning resource.
Homepage
https://www.udemy.com/course/machine-learning-basics-with-minitab/



Rapidgator
ieepa.M.L.B.w.M.part01.rar.html
ieepa.M.L.B.w.M.part02.rar.html
ieepa.M.L.B.w.M.part03.rar.html
ieepa.M.L.B.w.M.part04.rar.html
ieepa.M.L.B.w.M.part05.rar.html
ieepa.M.L.B.w.M.part06.rar.html
ieepa.M.L.B.w.M.part07.rar.html
ieepa.M.L.B.w.M.part08.rar.html
ieepa.M.L.B.w.M.part09.rar.html
ieepa.M.L.B.w.M.part10.rar.html
ieepa.M.L.B.w.M.part11.rar.html
ieepa.M.L.B.w.M.part12.rar.html
ieepa.M.L.B.w.M.part13.rar.html
ieepa.M.L.B.w.M.part14.rar.html
ieepa.M.L.B.w.M.part15.rar.html
Uploadgig
ieepa.M.L.B.w.M.part01.rar
ieepa.M.L.B.w.M.part02.rar
ieepa.M.L.B.w.M.part03.rar
ieepa.M.L.B.w.M.part04.rar
ieepa.M.L.B.w.M.part05.rar
ieepa.M.L.B.w.M.part06.rar
ieepa.M.L.B.w.M.part07.rar
ieepa.M.L.B.w.M.part08.rar
ieepa.M.L.B.w.M.part09.rar
ieepa.M.L.B.w.M.part10.rar
ieepa.M.L.B.w.M.part11.rar
ieepa.M.L.B.w.M.part12.rar
ieepa.M.L.B.w.M.part13.rar
ieepa.M.L.B.w.M.part14.rar
ieepa.M.L.B.w.M.part15.rar
NitroFlare
ieepa.M.L.B.w.M.part01.rar
ieepa.M.L.B.w.M.part02.rar
ieepa.M.L.B.w.M.part03.rar
ieepa.M.L.B.w.M.part04.rar
ieepa.M.L.B.w.M.part05.rar
ieepa.M.L.B.w.M.part06.rar
ieepa.M.L.B.w.M.part07.rar
ieepa.M.L.B.w.M.part08.rar
ieepa.M.L.B.w.M.part09.rar
ieepa.M.L.B.w.M.part10.rar
ieepa.M.L.B.w.M.part11.rar
ieepa.M.L.B.w.M.part12.rar
ieepa.M.L.B.w.M.part13.rar
ieepa.M.L.B.w.M.part14.rar
ieepa.M.L.B.w.M.part15.rar

Links are Interchangeable - Single Extraction
Machine Learning Basics with Minitab Fast Download
Machine Learning Basics with Minitab Full Download

free Machine Learning Basics with Minitab, Downloads Machine Learning Basics with Minitab, Rapidgator Machine Learning Basics with Minitab, Nitroflare Machine Learning Basics with Minitab, Mediafire Machine Learning Basics with Minitab, Uploadgig Machine Learning Basics with Minitab, Mega Machine Learning Basics with Minitab, Torrent Download Machine Learning Basics with Minitab, HitFile Machine Learning Basics with Minitab , GoogleDrive Machine Learning Basics with Minitab,  Please feel free to post your Machine Learning Basics with Minitab Download, Tutorials, Ebook, Audio Books, Magazines, Software, Mp3, Free WSO Download , Free Courses Graphics , video, subtitle, sample, torrent, NFO, Crack, Patch,Rapidgator, mediafire,Mega, Serial, keygen, Watch online, requirements or whatever-related comments here.





DISCLAIMER
None of the files shown here are hosted or transmitted by this server. The links are provided solely by this site's users. The administrator of our site cannot be held responsible for what its users post, or any other actions of its users. You may not use this site to distribute or download any material when you do not have the legal rights to do so. It is your own responsibility to adhere to these terms.

Copyright © 2018 - 2023 Dl4All. All rights reserved.