Introduction to Statistics in R – A Practical Approach
Introduction to Statistics in R – A Practical Approach, available at $54.99, has an average rating of 4.6, with 142 lectures, 14 quizzes, based on 31 reviews, and has 197 subscribers.
You will learn about How to apply basic statistical knowledge to solve real-world scenarios using R How to create, read, and work with CSV files in RStudio Fundamental concepts such as population, sample, sampling, bias, data, statistic, and parameter How to find and interpret frequency, relative frequency, and cumulative relative frequency How to find and interpret the Mean, Median, and Mode How to find and interpret Variance and Standard Deviation How to find quartiles (Q1, Q2, Q3), the interquartile range (IQR), and outliers How to create, read and interpret bar plots, histograms, and box plots This course is ideal for individuals who are Students who are new to descriptive statistics and to R programming. or Learners who want to combine existing statistical knowledge with R programming. or Professionals who wish to expand their skills with practical statistical knowledge to solve real-world problems. It is particularly useful for Students who are new to descriptive statistics and to R programming. or Learners who want to combine existing statistical knowledge with R programming. or Professionals who wish to expand their skills with practical statistical knowledge to solve real-world problems.
Enroll now: Introduction to Statistics in R – A Practical Approach
Summary
Title: Introduction to Statistics in R – A Practical Approach
Price: $54.99
Average Rating: 4.6
Number of Lectures: 142
Number of Quizzes: 14
Number of Published Lectures: 142
Number of Published Quizzes: 14
Number of Curriculum Items: 164
Number of Published Curriculum Objects: 164
Number of Practice Tests: 1
Number of Published Practice Tests: 1
Original Price: $24.99
Quality Status: approved
Status: Live
What You Will Learn
- How to apply basic statistical knowledge to solve real-world scenarios using R
- How to create, read, and work with CSV files in RStudio
- Fundamental concepts such as population, sample, sampling, bias, data, statistic, and parameter
- How to find and interpret frequency, relative frequency, and cumulative relative frequency
- How to find and interpret the Mean, Median, and Mode
- How to find and interpret Variance and Standard Deviation
- How to find quartiles (Q1, Q2, Q3), the interquartile range (IQR), and outliers
- How to create, read and interpret bar plots, histograms, and box plots
Who Should Attend
- Students who are new to descriptive statistics and to R programming.
- Learners who want to combine existing statistical knowledge with R programming.
- Professionals who wish to expand their skills with practical statistical knowledge to solve real-world problems.
Target Audiences
- Students who are new to descriptive statistics and to R programming.
- Learners who want to combine existing statistical knowledge with R programming.
- Professionals who wish to expand their skills with practical statistical knowledge to solve real-world problems.
Learn statistics using R with mini projects, hands-on practice, and carefully designed visual explanations. Understand how fundamental statistical concepts work behind the scenes and apply your knowledge to new scenarios.
Descriptive Statistics in R is Your First Step Into the In-demand and Powerful World of Statistics and Data Science
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Analyze real-world scenarios by identifying key elements such as population, sample, statistic, and parameter.
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Measure the center of the data with the mean, median, and mode. Describe their key differences and use cases.
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Measure the spread of the data with variance and standard deviation.
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Learn how to create and interpret bar plots, histograms and box plots.
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Find quartiles and the interquartile range (IQR). Use them to identify potential outliers.
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Apply your knowledge in practical mini projects.
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Check your knowledge with a final exam that covers all the topics of the course.
Add New Statistical Skills To Your Resume
Statistics is one of the most in-demand skills of our current time. If you want a career in data science, computer science, or mathematics, learning statistics is the first step that you need to take. When you combine theoretical statistical skills with practical R programming skills, you have the perfect skill set that employers around the world are looking for.
This course provides a detailed and engaging introduction to descriptive statistics using the R programming language and RStudio, the main tool used in industry to work with programming for statistical purposes.
No programming experience is required to take this course. Lectures combine the theoretical aspects of statistics with the practical and applied aspects that R programming brings to this amazing field. You will be analyzing small datasets and working on practical mini projects that simulate simplified real-world scenarios.
Learning the fundamentals of statistics is your first step towards mastering a career in data science, computer science, and mathematics.
Content & Overview
With high-quality video lectures that include customized graphics and presentations, you will learn and work with these concepts:
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Population
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Sample
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Sampling
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Data
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Variable
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Statistic
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Parameter
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Frequency
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Relative Frequency
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Cumulative Relative Frequency
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Bar plots
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Mean
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Median
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Mode
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Variance
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Standard Deviation
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Histograms
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Quartiles
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Interquartile Range (IQR)
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Outliers
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Box Plots
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.and more.
You will apply your knowledge in practical mini projects throughout the course and you will check your understanding with a final exam that will test your knowledge of all the topics covered in the course.
Learning Material & Resources
Throughout the course, you will find these resources:
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Video lectures: carefully designed graphics and explanations.
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Mini Projects: apply your knowledge with practical mini projects that represent simplified real-world scenarios.
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Solutions: each mini project has its corresponding solution, so you can check your answers immediately.
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Coding Sessions:practical lectures cover how to apply your new statistical knowledge in R and RStudio.
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PDF Handouts: you will find unique study guides with key aspects of each section.
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Quizzes: check your knowledge interactively after each section with short quizzes (unlimited attempts!).
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Articles: read complementary articles specifically written for this course to expand your knowledge on various topics.
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Discussion Forums: ask questions on the discussion forums and discuss interesting topics with your peers.
Why is this course unique?
This course is unique because of its emphasis on providing visual and detailed explanations of how statistics works behind the scenes, so you will not only learn how to find statistical results using R, you will actually understand what they mean and what each line of code does behind the scenes.
During the course, you will apply your knowledge by completing mini projects that simulate simplified real-world scenarios such as analyzing Black Friday sales, online learning patterns, waiting times of a taxi company, delivery times of a wood transportation company, light bulb life, and house prices across three different neighborhoods.
By the end of this course, you will be able to combineyour new theoretical knowledge of statistics with practical R skillsto interpret results.
Unique study materials complement the course experience. You will find PDF handouts specifically written for the course with key aspects of each section.
You will check your knowledge with short quizzes that provide instant feedback, so you can check the correct answer immediately. These questions were designed to make you think more deeply about the topics presented.
You will receive a certificate of completion that you can add to your social media profiles to showcase your new skills.
You will also have lifetime access to the course.
You are very welcome to watch the preview lectures and check out the full course curriculum.
If you are looking for an engaging, visual, and practical course, you’ve found it.
Add Descriptive Statistics in R to your resume and showcase your new skills!
Course Curriculum
Chapter 1: Introduction to Statistics and Basic Concepts
Lecture 1: Welcome | Course Overview
Lecture 2: Important Course Information and Resources
Lecture 3: Introduction to Statistics as a Science
Lecture 4: (PDF Resource) Section Handout
Lecture 5: Population
Lecture 6: Sample and Sampling
Lecture 7: Biased Samples
Lecture 8: Bias in Research
Lecture 9: Variables and Data
Lecture 10: Dataset
Lecture 11: Levels of Measurement
Lecture 12: Parameter vs. Statistic
Lecture 13: Identify the Key Elements – Scenario #1
Lecture 14: Identify the Key Elements – Scenario #2
Lecture 15: Larger Samples, More Reliable Results
Lecture 16: (PDF Version) Mini Project | Identify the Elements
Lecture 17: Collect and Share Your Badge
Chapter 2: Introduction to R and RStudio
Lecture 1: Section Introduction
Lecture 2: Downloading and Installing RStudio (Open-Source Version)
Lecture 3: (PDF Resource) Basic R Commands and R Studio
Lecture 4: Programming: Basic Terminology
Lecture 5: Tour of RStudio: Overview of the User Interface and Toolbars
Lecture 6: Basic Functionality
Lecture 7: What Is That Number Before the Output?
Lecture 8: Factors in R
Lecture 9: Introduction to CSV Files
Lecture 10: How to Create CSV Files Using Google Sheets
Lecture 11: How to Read CSV Files
Lecture 12: Introduction to Data Frames
Lecture 13: How to Read the R Documentation and Comment R Code
Lecture 14: How to Install Packages in R
Lecture 15: (PDF Version) Mini Project | International Flights
Lecture 16: Collect and Share Your Badge
Chapter 3: Introduction to Frequency
Lecture 1: Section Introduction
Lecture 2: (PDF Resource) Section Handout
Lecture 3: Introduction to Frequency
Lecture 4: Frequency Tables
Lecture 5: Example of a Frequency Table
Lecture 6: Generate a Frequency Table in R
Lecture 7: Visualize Frequency with a Bar Plot
Lecture 8: Create a Bar Plot in R
Lecture 9: Create a Bar Plot in R using barplot()
Lecture 10: Grouped Data in a Frequency Table
Lecture 11: Generate a Frequency Table with Intervals in R
Lecture 12: Collect and Share Your Badge
Chapter 4: Relative Frequency
Lecture 1: Section Introduction
Lecture 2: Introduction to Relative Frequency
Lecture 3: Relative Frequency Table | Example
Lecture 4: Finding Relative Frequency in R
Lecture 5: Generate a Relative Frequency Table in R with Intervals
Lecture 6: Collect and Share Your Badge
Chapter 5: Cumulative Relative Frequency
Lecture 1: Section Introduction
Lecture 2: Introduction to Cumulative Relative Frequency
Lecture 3: Find Cumulative Relative Frequency in R
Lecture 4: How to Find Relative Frequency from Cumulative Relative Frequency
Lecture 5: Cumulative Relative Frequency in R with Intervals
Lecture 6: Frequency vs. Relative Frequency vs. Cumulative Relative Frequency
Lecture 7: (PDF Version) Mini Project | Online Learning
Lecture 8: Collect and Share Your Badge
Chapter 6: Measures of the Center of the Data: Mean
Lecture 1: Section Introduction
Lecture 2: (PDF Resource) Section Handout
Lecture 3: Why Do We Need to Know The Center of The Data?
Lecture 4: Math Notation: Sigma
Lecture 5: Introduction to the Mean
Lecture 6: Sample Mean vs. Population Mean
Lecture 7: Find the Mean in R (Approach #1)
Lecture 8: Find the Mean in R (Approach #2)
Lecture 9: Find the Mean of Grouped Data
Lecture 10: Other Types of Mean
Lecture 11: Collect and Share Your Badge
Chapter 7: Measures of the Center of the Data: Median and Mode
Lecture 1: Section Introduction
Lecture 2: Introduction to the Median
Lecture 3: Find the Median in R
Lecture 4: Median of Grouped Data
Lecture 5: Introduction to the Mode
Lecture 6: When the Mode Doesn't Exist
Lecture 7: Find the Mode in R
Lecture 8: Mean vs. Median vs. Mode
Lecture 9: (PDF Version) Mini Project | Black Friday Sales
Lecture 10: Collect and Share Your Badge
Chapter 8: Measures of the Spread of the Data: Variance
Instructors
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Estefania Cassingena Navone
Software Developer, Instructor and Technical Writer
Rating Distribution
- 1 stars: 0 votes
- 2 stars: 0 votes
- 3 stars: 4 votes
- 4 stars: 11 votes
- 5 stars: 16 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
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