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Johns Hopkins University

Hypothesis Testing in Public Health

Biostatistics is an essential skill for every public health researcher because it provides a set of precise methods for extracting meaningful conclusions from data. In this second course of the Biostatistics in Public Health Specialization, you'll learn to evaluate sample variability and apply statistical hypothesis testing methods. Along the way, you'll perform calculations and interpret real-world data from the published scientific literature. Topics include sample statistics, the central limit theorem, confidence intervals, hypothesis testing, and p values.

Status: Statistical Inference
Status: Statistical Hypothesis Testing
BeginnerCourse19 hours

Featured reviews

AA

5.0Reviewed Jul 9, 2021

Excellent course, excellent teaching. Prof McGready knows his stuff and also knows how to teach it. The projects exercices are fun to work on and see how statistics is used in research.

JM

5.0Reviewed Dec 9, 2020

Very good refreshment and well explained. I need to more practical exercises to produce the results. Survival analysis curves are new to me I need to read more

DK

5.0Reviewed Jul 19, 2020

excellant descriptions, good examples and challenging practice sessions. Better if some more were added about ANOVA also. If it is considered as advanced , then it is ok. Good experience

BV

5.0Reviewed Mar 31, 2020

Very well-organized course. Easy to understand. I also enjoyed solving Formative and Summative Quizzes and enjoyed answering to Project Questions.

NZ

5.0Reviewed Apr 10, 2019

Excellent course, very well explained and the scientific articles used were a superb way to boost my confidence that I can do this, meaning stats. Thank you!

OK

5.0Reviewed Aug 1, 2024

Excellent course. The material is organized well, the instructor is very clear and gives multiple examples, the quizzes requires thought and really help test your understanding.

AB

4.0Reviewed Jun 13, 2020

perfect except if there is a reference material, as PDFs, for self-revision after the course; no need to go back to the full video to remember everything

GP

4.0Reviewed Nov 24, 2025

The contents are good. But the feedback tutorial on the training quizzes can be provided. Also, maybe R or Python programming can be briefly taught?

AT

5.0Reviewed Mar 11, 2023

Beautiful and highly educative course with very applicable steps. However, the correction to all tests done will go a long way to help better understanding. Thanks

RC

4.0Reviewed Jun 24, 2020

Huge coverage of hypothesis testing. Some lectures were quite repetitive or similar in nature and those could be reshaped as it seemed puzzling and boring. However, It was an informative one.

SN

5.0Reviewed Jul 10, 2022

Very detailed lectures and mostly all the concepts were cleared by examples which was great for me to conceptualize all the topics in a simple manner. Thank you so much.

SF

5.0Reviewed May 22, 2020

You have to use outside sources and practice questions to really understand the material. This course makes you think and demands that you know the information. It was a great class. Thank you.

All reviews

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