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There are 6 modules in this course
This course introduces statistical inference, sampling distributions, and confidence intervals. Students will learn how to define and construct good estimators, method of moments estimation, maximum likelihood estimation, and methods of constructing confidence intervals that will extend to more general settings.
This course can be taken for academic credit as part of CU Boulder’s Master of Science in Data Science (MS-DS) and the Master of Science in Artificial Intelligence (MS-AI) degrees offered on the Coursera platform. These interdisciplinary degrees bring together faculty from CU Boulder’s departments of Applied Mathematics, Computer Science, Information Science, and others. With performance-based admissions and no application process, the CU degrees on Coursera are ideal for individuals with a broad range of undergraduate education and/or professional experience in computer science, information science, mathematics, and statistics.
Learn more about the MS-DS program at https://www.coursera.org/degrees/master-of-science-data-science-boulder.
Learn more about the MS-AI program at https://www.coursera.org/degrees/ms-artificial-intelligence-boulder
Logo adapted from photo by Christopher Burns on Unsplash.
Welcome to the course! This module contains logistical information to get you started!
What's included
1 video7 readings1 ungraded lab
Show info about module content
1 video•Total 7 minutes
Welcome to Statistical Inference•7 minutes
7 readings•Total 45 minutes
Course Updates and Accessibility Support•1 minute
Welcome to Statistical Inference•5 minutes
Earn Academic Credit for your Work!•10 minutes
Course Support•10 minutes
Assessment Expectations•5 minutes
AI Citation and Acknowledgement•10 minutes
Course Resources and Reading•4 minutes
1 ungraded lab•Total 30 minutes
An Introduction to Jupyter Notebooks and R•30 minutes
Point Estimation
Module 2•7 hours to complete
Module details
In this module you will learn how to estimate parameters from a large population based only on information from a small sample. You will learn about desirable properties that can be used to help you to differentiate between good and bad estimators. We will review the concepts of expectation, variance, and covariance, and you will be introduced to a formal, yet intuitive, method of estimation known as the "method of moments".
Discrete Random Variables and Probability Mass Functions•12 minutes
Continuous Random Variables and Probability Density Functions•7 minutes
Joint Distributions and Independence•11 minutes
The Gamma Distribution•18 minutes
Transformations of Distributions•20 minutes
Expectation and Properties of Expectation•17 minutes
Variance and Covariance•17 minutes
Estimators and Sampling Distributions•15 minutes
Distributions of Sums•23 minutes
Method of Moments Estimators•13 minutes
11 readings•Total 65 minutes
Important Discrete Distributions•10 minutes
Important Continuous Distributions•20 minutes
Table Summarizing Important Distributions •10 minutes
Joint Distributions•10 minutes
Video Slides: The Gamma Distribution•15 minutes
Video Slides for Transformations of Distributions•0 minutes
Video Slides for Expectation and Properties of Expectation•0 minutes
Video Slides for Variance and Covariance•0 minutes
Video Slides for Estimators and Sampling Distributions•0 minutes
Video Slides for Distributions of Sums•0 minutes
Video Slides for Method of Moments Estimators•0 minutes
5 assignments•Total 105 minutes
AI Policy Quiz•5 minutes
Recognizing Discrete Distributions•15 minutes
Calculations with Continuous Distributions•25 minutes
Probability, Expectation, and Variance•30 minutes
Method of Moments Estimation•30 minutes
1 programming assignment•Total 60 minutes
Point Estimation•60 minutes
1 ungraded lab•Total 60 minutes
The Shape of Data•60 minutes
Maximum Likelihood Estimation
Module 3•4 hours to complete
Module details
In this module we will learn what a likelihood function is and the concept of maximum likelihood estimation. We will construct maximum likelihood estimators (MLEs) for one and two parameter examples and functions of parameters using the invariance property of MLEs.
Notation, Terminology, and First Complete Examples•14 minutes
MLEs for Multiple and Support Parameters•17 minutes
The Invariance Property•20 minutes
Mean Squared Error, Bias, and Relative Efficiency•8 minutes
5 readings
Video Slides for A Motivating Example•0 minutes
Video Slides for Notation, Terminology, and First Complete Examples•0 minutes
Video Slides for MLEs for Multiple and Support Parameters•0 minutes
Video Slides for The Invariance Property•0 minutes
Video Slides for Mean Squared Error, Bias and Relative Efficiency•0 minutes
2 assignments•Total 60 minutes
Finding MLEs•30 minutes
Invariance, Mean-Squared Error, and Efficiency•30 minutes
1 programming assignment•Total 60 minutes
Maximum Likelihood Estimation•60 minutes
1 ungraded lab•Total 60 minutes
Sampling Distributions of MLEs•60 minutes
Large Sample Properties of Maximum Likelihood Estimators
Module 4•6 hours to complete
Module details
In this module we will explore large sample properties of maximum likelihood estimators including asymptotic unbiasedness and asymptotic normality. We will learn how to compute the “Cramér–Rao lower bound” which gives us a benchmark for the smallest possible variance for an unbiased estimator.
Fisher Information and the Cramer-Rao Lower Bound•20 minutes
Computational Simplifications for the CRLB•15 minutes
The Weak Law of Large Numbers•22 minutes
The Central Limit Theorem•22 minutes
Large Sample Properties of MLEs•21 minutes
5 readings•Total 50 minutes
Video Slides for Fisher Information and the Cramér-Rao Lower Bound•10 minutes
Video Slides for Computational Simplifications for the CRLB•10 minutes
Video Slides for The Weak Law of Large Numbers•10 minutes
Video Slides for The Central Limit Theorem•10 minutes
Video Slides for Large Sample Properties of MLEs•10 minutes
2 assignments•Total 60 minutes
The Cramer-Rao Lower Bound•30 minutes
Further Computations with MLEs•30 minutes
1 programming assignment•Total 60 minutes
Large Sample Properties of MLEs•60 minutes
1 ungraded lab•Total 60 minutes
Central Limit Theorem Lab Walkthrough•60 minutes
Confidence Intervals Involving the Normal Distribution
Module 5•6 hours to complete
Module details
In this module we learn about the theory of “interval estimation”. We will learn the definition and correct interpretation of a confidence interval and how to construct one for the mean of an unseen population based on both large and small samples. We will look at the cases where the variance is known and unknown.
Confidence Intervals for the Difference Between Population Means•11 minutes
Small Sample Confidence Intervals for the Difference Between Population Means•20 minutes
5 readings•Total 50 minutes
Video Slides for Let's Build a Confidence Interval!•10 minutes
Video Slides for the Chi-Squared and t-Distributions•10 minutes
Video Slides for t-Distribution Confidence Intervals•10 minutes
Video Slides for Confidence Intervals for the Difference Between Population Means•10 minutes
Video Slides for Small Sample Confidence Intervals for the Difference Between Population Means•10 minutes
2 assignments•Total 60 minutes
Confidence Intervals Involving the Normal Distribution•30 minutes
Confidence Intervals for Differences Between Means•30 minutes
1 programming assignment•Total 60 minutes
Normal Distribution Confidence Intervals•60 minutes
2 ungraded labs•Total 90 minutes
Exploring the Normal, t, and Chi-Squared Relationships•60 minutes
Confidence Intervals in R•30 minutes
Beyond Normality: Confidence Intervals Unleashed!
Module 6•5 hours to complete
Module details
In this module, we will generalize the lessons of Module 4 so that we can develop confidence intervals for other quantities of interest beyond the distribution mean and for other distributions entirely. This module covers two sample confidence intervals in more depth, and confidence intervals for population variances and proportions. We will also learn how to develop confidence intervals for parameters of interest in non-normal distributions.
A Confidence Interval for a Ratio of Variances•18 minutes
Who Needs Normality?•9 minutes
General Confidence Intervals 2•11 minutes
5 readings•Total 50 minutes
Video Slides for A Confidence Interval for Proportions•10 minutes
Video Slides for Confidence Intervals for Variances•10 minutes
Video Slides for A Confidence Interval for a Ratio of Variances•10 minutes
Video Slides for Who Needs Normality?•10 minutes
Video Slides for General Confidence Intervals 2•10 minutes
2 assignments•Total 60 minutes
Confidence Intervals for Proportions and Variances•30 minutes
Build Your Own Confidence Intervals•30 minutes
1 programming assignment•Total 60 minutes
Confidence Intervals Unleashed!•60 minutes
1 ungraded lab•Total 60 minutes
Non-Normal Confidence Intervals in R•60 minutes
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Build toward a degree
This course is part of the following degree program(s) offered by University of Colorado Boulder. If you are admitted and enroll, your completed coursework may count toward your degree learning and your progress can transfer with you.¹
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Build toward a degree
This course is part of the following degree program(s) offered by University of Colorado Boulder. If you are admitted and enroll, your completed coursework may count toward your degree learning and your progress can transfer with you.¹
¹Successful application and enrollment are required. Eligibility requirements apply. Each institution determines the number of credits recognized by completing this content that may count towards degree requirements, considering any existing credits you may have. Click on a specific course for more information.
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Learner reviews
4.1
94 reviews
5 stars
58.51%
4 stars
17.02%
3 stars
6.38%
2 stars
7.44%
1 star
10.63%
Showing 3 of 94
A
AT
5·
Reviewed on Jul 18, 2024
This course provided me with truly deep insights into the inner workings of statistics. Thank you very much.
I
IL
5·
Reviewed on Sep 3, 2022
The instrustor, Dr. Jem, is really interesting. She made the hard part of the Statistics easy to understand!
D
DP
5·
Reviewed on Jan 27, 2024
Excellent. Challenging quizzes that really make you apply the points from the lectures. Very detailed course that has taken me to the next level of my understanding of statistical inference.
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