Welcome to Probability, Statistical Inference and Regression Analysis. This course is an introduction to statistical methods and thinking, focusing on modern applications. Some of the concepts will be familiar to those who have taken an elementary statistics course. However, some of the topics presented here extend those ideas into new and emerging applications. These contemporary applications include graphics and data visualization, big data, and newer analytical methods, such as bootstrapping. Acquiring a strong foundation in Regression Analysis is an objective of this course. There is a companion book available that was written by our instructors and would be an excellent companion guide for learners who'd like to further deepen their knowledge of these topics. Proceed to the first module for further details, and to begin learning about Descriptive Statistics.

Probability, Statistical Inference and Regression Analysis


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中级
To be successful, learners will need an understanding of algebra and basic statistics such as a 1st college course. Coding experience beneficial.
推荐体验
推荐体验
中级
To be successful, learners will need an understanding of algebra and basic statistics such as a 1st college course. Coding experience beneficial.
您将学到什么
Learners will apply basic statistical methods for data description and visualization, inference, and decision-making.
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9 项作业
January 2026
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该课程共有6个模块
*This 4-course Specialization covers the use of statistical methods in today's business, industrial, and social environments, including several new methods and applications. Prof. Douglas Montgomery reflects: "H.G. Wells foresaw an era when the understanding of basic statistics would be as important for citizenship as the ability to read and write. Modern Statistics for Data-Driven Decision-Making teaches the basics of working with and interpreting data, skills necessary to succeed in Wells’s 'new great complex world' that we now inhabit." *In this course, learners will gain an ability to apply basic statistical methods for data description and visualization, inference, and decision-making. *In the first module, you will enter into Descriptive Statistics, and apply apply basic statistical methods for data description and visualization. We also invite you to orient yourself to the course design, read the instructor bios, and review the learning outcomes. Please begin when ready.
涵盖的内容
6个视频5篇阅读材料1个作业
6个视频•总计31分钟
- Specialization Introduction•2分钟
- Course Introduction•9分钟
- Segment 1: Introduction and Understanding Variability•4分钟
- Segment 2: Methods of Data Collection and Inferential Statistics•4分钟
- Segment 3: Hypothesis Testing and Numerical Summaries•3分钟
- Segment 4: Measures of Central Tendency and Variability•10分钟
5篇阅读材料•总计40分钟
- Course Resources and Peer Reviews•5分钟
- Meet Your Instructors•5分钟
- Chapter 1: The Role of Statistics in Engineering•10分钟
- Introduction to Statistics and Sampling Lecture - Video Segment Overview•10分钟
- Chapter 6: Descriptive Statistics•10分钟
1个作业•总计30分钟
- Practice Assignment for Descriptive Statistics and Probability Distributions•30分钟
In Module 2, you will learn the probability foundations that support statistical modeling and data-driven decision-making. You will work with discrete and continuous probability distributions, compute probabilities and distribution summaries, and understand how probability models describe uncertainty in real-world contexts. Before starting, be sure to view the course introduction video and review the learning objectives.
涵盖的内容
11个视频3篇阅读材料
11个视频•总计39分钟
- Segment 1: Definition of Random Variables •2分钟
- Segment 2: Describing Data Transmission Error Over a Digital Channel •2分钟
- Segment 3: Cumulative Distribution Function - Discrete •4分钟
- Segment 4: Mean and Variance of a Discrete Random Variable •6分钟
- Segment 5: Common Discrete Probability Distributions •3分钟
- Segment 6: Binomial Distribution Example •3分钟
- Segment 1: Continuous Probability Distributions and Probability Density Functions •5分钟
- Segment 2: Cumulative Distribution Functions •3分钟
- Segment 3: Mean and Variance of a Continuous Random Variable •2分钟
- Segment 4: Normal (Gaussian) Distribution •3分钟
- Segment 5: Common Continuous Distributions•6分钟
3篇阅读材料•总计30分钟
- Basic Probability, Part 1 Lecture - Video Segment Overview•10分钟
- Basic Probability, Part 2 Lecture - Video Segment Overview•10分钟
- Chapter 2: Probability•10分钟
In Module 3, we explore the basic concepts of random sampling and the relationship between random sampling and inference. We also construct confidence intervals to estimate means and variances of one or two populations and hypotheses tests and confidence interval estimation on the mean of a population whose variance is known. Be sure to review the learning objectives before beginning work in this module.
涵盖的内容
17个视频5篇阅读材料1个作业
17个视频•总计95分钟
- Segment 1: Introduction to Estimation of Parameters and Point Estimation •5分钟
- Segment 2: Central Limit Theorem and Unbiased Estimators •5分钟
- Segment 3: Variance of a Point Estimator and Standard Error •5分钟
- Segment 4: Bootstrap Standard Error and Methods of Point Estimation•6分钟
- Segment 1: Introduction and Development of Confidence Intervals •7分钟
- Segment 2: Choice of Sample Size and One-Sided Confidence Bounds •6分钟
- Segment 3: Large-Sample Approximate Confidence Interval and Confidence Interval on the Mean, Variance Unknown •5分钟
- Segment 1: Introduction to Hypothesis Testing and Decisions in Hypothesis Testing •5分钟
- Segment 2: Computing the Probability of Type I and Type II Error •3分钟
- Segment 3: Examples and Practical Applications •6分钟
- Segment 4: General Procedure for Hypothesis Tests •7分钟
- Segment 5: Type II Error and Choice of Sample Size and Large Sample Size •6分钟
- Segment 6: Summary for One-Sample t-test with Example •5分钟
- Segment 1: Introduction, Inference, and Hypothesis Tests on the Difference in Means, Variances Known•8分钟
- Segment 2: Confidence Interval on the Difference in Means, Variances Known •3分钟
- Segment 3: Hypothesis Tests on the Difference in Means, Variances Unknown, and Examples•12分钟
- Segment 4: Confidence Interval on the Difference in Means, Variances Unknown, and Example: Cement Hydration •3分钟
5篇阅读材料•总计130分钟
- Estimation of Parameters Lecture - Video Segment Overview•10分钟
- Confidence Intervals Lecture - Video Segment Overview•10分钟
- Hypothesis Testing Lecture - Video Segment Overview•10分钟
- Statistical Inference for Two Samples Lecture - Video Segment Overview•10分钟
- Chapters 7 - 9 of Applied Statistics and Probability for Engineers•90分钟
1个作业•总计30分钟
- Practice Quiz for Basic Statistics•30分钟
In Module 4, we will review bootstrapping methods that can be used to solve a statistical problem. Be sure you review the learning objectives before beginning work in this module.
涵盖的内容
2个视频1篇阅读材料1个作业
2个视频•总计17分钟
- Basic Concept of Bootstrapping•10分钟
- Application of Bootstrapping•7分钟
1篇阅读材料•总计10分钟
- Section 8.6 of Chapter 8: Statistical Intervals for a Single Sample•10分钟
1个作业•总计30分钟
- Practice Quiz for Bootstrapping•30分钟
In Module 5, we will review applications of big data in statistical methods and models. Be sure to view videos for this module, complete the readings, and any assignments. Begin by reviewing the learning objectives before beginning work in this module.
涵盖的内容
2个视频1个作业
2个视频•总计17分钟
- What Is Big Data?•6分钟
- How Big Data Impacts Statistics•11分钟
1个作业•总计30分钟
- Practice Quiz for Big Data•30分钟
Module 6 introduces core regression methods, including multiple linear regression, diagnostics, regularization, GLMs, and nonlinear regression. Assessments reinforce conceptual understanding and practical interpretation.
涵盖的内容
24个视频5篇阅读材料5个作业1次同伴评审
24个视频•总计92分钟
- Segment 1: Intro. to Multiple Linear Regression Model•2分钟
- Segment 2: Method for Least Squares Estimation of Parameters•2分钟
- Segment 3: Wire Bond Strength Example 1•2分钟
- Segment 4: Matrix Approach to Multiple Linear Regression•3分钟
- Segment 5: Wire Bond Strength Example 2•6分钟
- Segment 6: Closing: The Importance and Wide Application of Regression Analysis•1分钟
- Segment 1: Review of Standard Regression Assumptions and Common Problems•2分钟
- Segment 2: Solving for Unequal Variance: Tactics and Examples•5分钟
- Segment 3: Understanding Multicollinearity: Sources and Effects•11分钟
- Segment 4: Methods for Dealing with Multicollinearity•5分钟
- Segment 1: Rationale for Generalized Ridge Regression, Lasso and Elastic Net Techniques•4分钟
- Segment 2: Generalized Regression Examples: Analyzing Acetylene Dataset with JMP Software•4分钟
- Segment 3: Using Principal Component Regression to Manage Multicollinearity•7分钟
- Segment 1: Introduction to Generalized Linear Models•3分钟
- Segment 2: Applications of Binary Response Variables•4分钟
- Segment 3: Using Logistic Regression to Model Binary Response Variables•3分钟
- Segment 4: How the Generalized Linear Model Works: The Role of Link Functions •3分钟
- Segment 5: Generalized Linear Model Example: Cycles to Failure - Yarn•4分钟
- Segment 6: Summary of Generalized Linear Model Benefits•1分钟
- Segment 1: Linear Versus Nonlinear Regression•3分钟
- Segment 2: Nonlinear Least Squares and Maximum Likelihood Estimation Methods•4分钟
- Segment 3: Transformation to Linear Model Example (Puromycin Data)•4分钟
- Segment 4: Linearization Method•4分钟
- Segment 5: Linearization Example (Puromycin Data)•4分钟
5篇阅读材料•总计50分钟
- Regression Analysis Lecture - Video Segment Overview•10分钟
- Complications to Standard Regression Lecture - Video Segment Overview•10分钟
- Generalized Regression Techniques Lecture - Video Segment Overview•10分钟
- Generalized Linear Models, Lecture - Video Segment Overview•10分钟
- Nonlinear Regression Lecture - Video Segment Overview•10分钟
5个作业•总计150分钟
- Practice Quiz for Regression Analysis•30分钟
- Practice Quiz for Complications to Standard Regression•30分钟
- Practice Quiz for Generalized Regression Techniques•30分钟
- Practice Quiz for Generalized Linear Models•30分钟
- Practice Quiz for Nonlinear Regression •30分钟
1次同伴评审•总计60分钟
- Mini-project for Modern Statistics for Data-Driven Decision-Making•60分钟
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