Statistics For Data Analysts And Scientists
Published 2/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.11 GB | Duration: 2h 30m
Published 2/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.11 GB | Duration: 2h 30m
Ultimate course to master practical and business applications of essential statistical tests and concepts
What you'll learn
Develop a deep understanding of key statistical concepts, such as homoscedasticity of variance, multicollinearity, and homogeneity of variance
Gain the skills to apply statistical tests and concepts to real-world situations and communicate insights to key stakeholders
Understand how statistical tools can be used to gain insights into complex data sets and how these insights can be used to drive critical business decisions
Learn through practical examples, and case studies that will help them understand how statistical tests can be applied in real-world situations
Gain the confidence and expertise to excel as a data analyst or scientist, and apply statistical methods to a wide range of data-driven challenges
Understand the practical and business applications of essential statistical tests, including the Chi Square test, t-tests, correlation, Regression, etc
Learn how to conduct and interpret key statistical tests, including one-sample t-test, independent sample test, correlation and linear regression, OneWay ANOVA
Requirements
No programming or prior experience of statistics required
Description
Welcome to "Statistics for Data Analysts and Scientists" - the ultimate course to help you master the practical and business applications of essential statistical tests and concepts!Are you struggling to make sense of statistical tests like the Chi-Square test of independence, t-tests, correlation, and Analysis of Variance (ANOVA)? Are you looking to understand how these tests can be applied in real-world situations, and how they can be used to drive critical business decisions?This comprehensive course is designed to equip you with the knowledge and skills to excel as a data analyst or scientist. You will learn how to conduct and interpret key statistical tests such as the one-sample t-test, independent sample t-test, dependent sample t-test, correlation, simple and multiple linear regression, and one-way ANOVA. You will also gain a deep understanding of key statistical concepts like homoscedasticity of variance, multicollinearity, and homogeneity of variance.With an exciting and engaging teaching style, this course will take you on a journey of discovery that will transform your understanding of statistics. You will learn through a combination of theory, practical examples, and case studies that will help you understand how statistical tests can be applied in real-world situations.By the end of this course, you will have the confidence and expertise to apply statistical tests and concepts to drive critical business decisions. You will be able to use statistical tools to gain insights into complex data sets, and you will be equipped with the skills to communicate these insights to key stakeholders.So, what are you waiting for? Sign up for "Statistics for Data Analysts and Scientists" today, and take the first step towards becoming a master of statistical analysis!
Overview
Section 1: Introduction
Lecture 1 Welcome to the Course
Lecture 2 Introduction to Statistics
Lecture 3 Statistical Scale of Measurement
Lecture 4 Common Terms in Statistics
Section 2: Course Resources
Lecture 5 Downloading IBM Statistics
Lecture 6 Course Resources
Lecture 7 Acknowledgement
Section 3: Understanding Inferential Statistics
Lecture 8 Intro to Inferential Statistics
Section 4: Chi Square Test of Independence
Lecture 9 Chi Square Test of Independence Overview
Lecture 10 Running the Test
Lecture 11 Interpret the Results of Chi Square Test of Independence
Section 5: One Sample t-test
Lecture 12 One Sample t-test Overview
Lecture 13 Running the Test
Lecture 14 Interpret the Results of One Sample t-test
Section 6: Independent Sample t-test
Lecture 15 Independent Sample t-test Overview
Lecture 16 Running the Test
Lecture 17 Interpret the Results of Independent Sample t-test
Section 7: Dependent (Paired) Sample t-test
Lecture 18 Dependent or Paired Sample t-test Overview
Lecture 19 Running the Test
Lecture 20 Interpret the Results of Dependent Sample t-test
Section 8: Correlation Analysis
Lecture 21 Pearson Correlation Analysis Overview
Lecture 22 Running the Test
Lecture 23 Interpret the Results of Correlation Analysis
Section 9: Simple Linear Regression Analysis
Lecture 24 Simple Linear Regression Analysis Overview
Lecture 25 Running the Test
Lecture 26 Interpret the Results of Simple Linear Regression Analysis
Section 10: Multiple Linear Regression Analysis
Lecture 27 Multiple Linear Regression Overview
Lecture 28 Running the Test
Lecture 29 Interpret the Results of Multiple Linear Regression Analysis
Section 11: One Way Analysis of Variance
Lecture 30 One Way Analysis of Variance Test Overview
Lecture 31 Running the Test
Lecture 32 Interpret the Results of One Way Analysis of Variance Test
Data analysts who want to improve their statistical skills and knowledge,Scientists who need to understand and analyze statistical data in their research,Business professionals who use data to drive decision-making and want to gain a deeper understanding of statistical concepts and tests,Students studying statistics, data science, or a related field who want to develop a strong foundation in statistical methods,Anyone who is interested in learning more about statistics and how it can be applied in practical settings