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⇱ Introduction to Probability and Data with R | Coursera


Introduction to Probability and Data with R

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Introduction to Probability and Data with R

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Gain insight into a topic and learn the fundamentals.
4.7

5,884 reviews

Beginner level
No prior experience required
Flexible schedule
2 weeks at 10 hours a week
Learn at your own pace
94%
Most learners liked this course

Gain insight into a topic and learn the fundamentals.
4.7

5,884 reviews

Beginner level
No prior experience required
Flexible schedule
2 weeks at 10 hours a week
Learn at your own pace
94%
Most learners liked this course

Build your subject-matter expertise

This course is part of the Data Analysis with R Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
  • Learn new concepts from industry experts
  • Gain a foundational understanding of a subject or tool
  • Develop job-relevant skills with hands-on projects
  • Earn a shareable career certificate

There are 8 modules in this course

This course introduces you to sampling and exploring data, as well as basic probability theory and Bayes' rule. You will examine various types of sampling methods, and discuss how such methods can impact the scope of inference. A variety of exploratory data analysis techniques will be covered, including numeric summary statistics and basic data visualization. You will be guided through installing and using R and RStudio (free statistical software), and will use this software for lab exercises and a final project. The concepts and techniques in this course will serve as building blocks for the inference and modeling courses in the Specialization.

This course introduces you to sampling and exploring data, as well as basic probability theory. You will examine various types of sampling methods and discuss how such methods can impact the utility of a data analysis. The concepts in this module will serve as building blocks for our later courses.Each lesson comes with a set of learning objectives that will be covered in a series of short videos. Supplementary readings and practice problems will also be suggested from OpenIntro Statistics, 3rd Edition, https://leanpub.com/openintro-statistics/, (a free online introductory statistics textbook, that I co-authored). There will be weekly quizzes designed to assess your learning and mastery of the material covered that week in the videos. In addition, each week will also feature a lab assignment, in which you will use R to apply what you are learning to real data. There will also be a data analysis project designed to enable you to answer research questions of your own choosing. Since this is a Coursera course, you are welcome to participate as much or as little as you’d like, though I hope that you will begin by participating fully. One of the most rewarding aspects of a Coursera course is participation in forum discussions about the course materials. Please take advantage of other students' feedback and insight and contribute your own perspective where you see fit to do so. You can also check out the resource page (https://www.coursera.org/learn/probability-intro/resources/crMc4) listing useful resources for this course. Thank you for joining the Introduction to Probability and Data community! Say hello in the Discussion Forums. We are looking forward to your participation in the course.

What's included

1 video2 readings

1 videoTotal 2 minutes
  • Introduction to Statistics with R2 minutes
2 readingsTotal 20 minutes
  • More about Introduction to Probability and Data10 minutes
  • Report a problem with the course10 minutes

Welcome to Introduction to Probability and Data! I hope you are just as excited about this course as I am! In the next five weeks, we will learn about designing studies, explore data via numerical summaries and visualizations, and learn about rules of probability and commonly used probability distributions. If you have any questions, feel free to post them on this module's forum (https://www.coursera.org/learn/probability-intro/module/rQ9Al/discussions?sort=lastActivityAtDesc&page=1) and discuss with your peers! To get started, view the learning objectives (https://www.coursera.org/learn/probability-intro/supplement/rooeY/lesson-learning-objectives) of Lesson 1 in this module.

What's included

6 videos2 readings2 assignments

6 videosTotal 28 minutes
  • Introduction3 minutes
  • Data Basics5 minutes
  • Observational Studies & Experiments5 minutes
  • Sampling and sources of bias8 minutes
  • Experimental Design3 minutes
  • (Spotlight) Random Sample Assignment4 minutes
2 readingsTotal 20 minutes
  • Lesson Learning Objectives10 minutes
  • Suggested Readings and Practice10 minutes
2 assignmentsTotal 60 minutes
  • Week 1 Practice Quiz30 minutes
  • Week 1 Quiz30 minutes

To complete this assignment you will use R and RStudio installed on your local computer or through RStudio Cloud.

What's included

2 readings1 assignment

2 readingsTotal 20 minutes
  • About Lab Choices (Read Before Selection)10 minutes
  • Week 1 Lab Instructions (RStudio)10 minutes
1 assignmentTotal 30 minutes
  • Week 1 Lab: Introduction to R and RStudio30 minutes

Welcome to Week 2 of Introduction to Probability and Data! Hope you enjoyed materials from Week 1. This week we will delve into numerical and categorical data in more depth, and introduce inference.

What's included

7 videos3 readings2 assignments

7 videosTotal 46 minutes
  • Visualizing Numerical Data10 minutes
  • Measures of Center4 minutes
  • Measures of Spread7 minutes
  • Robust Statistics1 minute
  • Transforming Data3 minutes
  • Exploring Categorical Variables8 minutes
  • Introduction to Inference12 minutes
3 readingsTotal 30 minutes
  • Lesson Learning Objectives10 minutes
  • Lesson Learning Objectives10 minutes
  • Suggested Readings and Practice10 minutes
2 assignmentsTotal 60 minutes
  • Week 2 Practice Quiz30 minutes
  • Week 2 Quiz30 minutes

To complete this assignment you will use R and RStudio installed on your local computer or through RStudio Cloud.

What's included

2 readings1 assignment

2 readingsTotal 20 minutes
  • Week 2 Lab Instructions (RStudio)10 minutes
  • Week 2 Lab Instructions (RStudio Cloud)10 minutes
1 assignmentTotal 30 minutes
  • Week 2 Lab: Introduction to Data30 minutes

Welcome to Week 3 of Introduction to Probability and Data! Last week we explored numerical and categorical data. This week we will discuss probability, conditional probability, the Bayes’ theorem, and provide a light introduction to Bayesian inference. Thank you for your enthusiasm and participation, and have a great week! I’m looking forward to working with you on the rest of this course.

What's included

9 videos3 readings2 assignments

9 videosTotal 82 minutes
  • Introduction6 minutes
  • Disjoint Events + General Addition Rule9 minutes
  • Independence10 minutes
  • Probability Examples9 minutes
  • (Spotlight) Disjoint vs. Independent3 minutes
  • Conditional Probability13 minutes
  • Probability Trees11 minutes
  • Bayesian Inference14 minutes
  • Examples of Bayesian Inference8 minutes
3 readingsTotal 30 minutes
  • Lesson Learning Objectives10 minutes
  • Lesson Learning Objectives10 minutes
  • Suggested Readings and Practice10 minutes
2 assignmentsTotal 60 minutes
  • Week 3 Practice Quiz30 minutes
  • Week 3 Quiz30 minutes

To complete this assignment you will use R and RStudio installed on your local computer or through RStudio Cloud.

What's included

2 readings1 assignment

2 readingsTotal 20 minutes
  • Week 3 Lab Instructions (RStudio)10 minutes
  • Week 3 Lab Instructions (RStudio Cloud)10 minutes
1 assignmentTotal 30 minutes
  • Week 3 Lab: Probability30 minutes

Great work so far! Welcome to Week 4 -- the last content week of Introduction to Probability and Data! This week we will introduce two probability distributions: the normal and the binomial distributions in particular. As usual, you can evaluate your knowledge in this week's quiz. There will be no labs for this week. Please don't hesitate to post any questions, discussions and related topics on this week's forum (https://www.coursera.org/learn/probability-intro/module/VdVNg/discussions?sort=lastActivityAtDesc&page=1). Also this week, you will be asked to complete an initial data analysis project with a real-world data set. The project is designed to help you discover and explore research questions of your own, using real data and statistical methods we learn in this class. Please read the project instructions to complete this self-assessment.

What's included

6 videos5 readings2 assignments

6 videosTotal 67 minutes
  • Normal Distribution17 minutes
  • Evaluating the Normal Distribution3 minutes
  • Working with the Normal Distribution5 minutes
  • Binomial Distribution17 minutes
  • Normal Approximation to Binomial14 minutes
  • Working with the Binomial Distribution10 minutes
5 readingsTotal 160 minutes
  • Lesson Learning Objectives10 minutes
  • Lesson Learning Objectives10 minutes
  • Suggested Readings and Practice10 minutes
  • Project Instructions, Data Files, and Checklist120 minutes
  • Share your learning experience10 minutes
2 assignmentsTotal 60 minutes
  • Week 4 Practice Quiz30 minutes
  • Week 4 Quiz30 minutes

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Duke University
11 Courses431,899 learners

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Showing 3 of 5884

AA
·

Reviewed on Feb 24, 2021

I always wanted to learn statistics from scratch, but I never had a good university teacher. Here I found a good teacher and also the opportunity to learn whenever I want ( and skipping parts I knew!)

JH
·

Reviewed on Mar 26, 2020

The instructions for the final project need to be much clearer. I had a hard time figuring it out, and all of the projects I peer-edited were done poorly. Otherwise, I enjoyed the course very much!

SG
·

Reviewed on Jun 18, 2019

The contents of the course about statistics are friendly to the beginners and easy to understand, however, the R learning is a little bit hard to those who have no computer or coding background.

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When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.

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