Non-parametric statistics tests : Beginner to Advanced level

Non-parametric statistics tests for all and also for IASSC Lean Six Sigma Green belt and Lean Six Sigma Black belt exam.
4.53 (50 reviews)
Udemy
platform
English
language
Data & Analytics
category
instructor
Non-parametric statistics tests : Beginner to Advanced level
203
students
4 hours
content
Feb 2025
last update
$13.99
regular price

Why take this course?

🎓 Course Title: Non-parametric Statistics Tests: Beginner to Advanced Level


Course Headline:

Master Non-parametric Statistics Tests for IASSC Lean Six Sigma Green & Black Belt Success!


Course Description:

🚀 Dive into the World of Non-parametric Hypothesis Testing! 🚀

Are you struggling to grasp the concepts of Non-parametric hypothesis testing? Do you find yourself scratching your head over how to perform these tests and interpret their results? If so, fear not! Our comprehensive course, tailored for beginners and advanced learners alike, is here to guide you through every intricate detail.

Whether you're on the path to becoming a IASSC Lean Six Sigma Green Belt or Lean Six Sigma Black Belt, this course is an absolute must. It meticulously covers the crucial topic of Non-parametric hypothesis tests within the Analyze phase, preparing you for your certification exam with confidence.

What You'll Learn:

  • The Fundamentals of Non-parametric Hypothesis Testing: Discover the advantages and disadvantages, as well as the practical applications of these essential statistical tools.
  • Parametric vs. Non-parametric Tests: Understand the key differences between these two test types based on 6 critical comparison criteria.
  • Real-World Examples: Learn through 13 practical examples that bring the concepts to life and help solidify your understanding.
  • Detailed Walkthroughs of 7 Key Tests: Gain hands-on experience with Non-parametric hypothesis testing methods, including the 1-sample sign test, 1-sample Wilcoxon test, Wilcoxon test for paired data, Mann-Whitney test, Mood's median test, Kruskal Wallis test, and Friedman test – all demonstrated using Minitab.

Practical Application for Lean Six Sigma:

  • Certification Focus: With around 8-9 questions on Non-parametric hypothesis testing in the IASSC Lean Six Sigma Green Belt exam and up to 13-14 questions in the Black Belt exam, this course is an indispensable tool for those aiming to excel in their LSS certifications.
  • Broader Knowledge: For those looking to expand their statistical knowledge or specialize in Non-parametric testing, this course is a treasure trove of information applicable to research work, business decision making, AI & ML, and more.

Why Enroll Today? 🌟

  • Lean Six Sigma Certification Preparation: This course is tailored to help you master the Non-parametric hypothesis testing topics that are critical for passing the ICGB and ICBB exams.
  • Enhanced Knowledge: Understand the importance of knowing both Parametric and Non-parametric tests to accurately analyze your data in various applications.

Join us now to embark on a journey through the fascinating world of Non-parametric statistics, and emerge as a confident and capable data analyst ready to take on any challenge! 📊


Don't let complex statistical concepts hold you back from achieving your professional goals. Enroll in our course today and conquer Non-parametric hypothesis testing with ease and understanding. Your journey towards mastery starts here!

Course Gallery

Non-parametric statistics tests : Beginner to Advanced level – Screenshot 1
Screenshot 1Non-parametric statistics tests : Beginner to Advanced level
Non-parametric statistics tests : Beginner to Advanced level – Screenshot 2
Screenshot 2Non-parametric statistics tests : Beginner to Advanced level
Non-parametric statistics tests : Beginner to Advanced level – Screenshot 3
Screenshot 3Non-parametric statistics tests : Beginner to Advanced level
Non-parametric statistics tests : Beginner to Advanced level – Screenshot 4
Screenshot 4Non-parametric statistics tests : Beginner to Advanced level

Loading charts...

2639406
udemy ID
04/11/2019
course created date
28/10/2020
course indexed date
Bot
course submited by