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Web Visualization: Sampling from a non-Normally distributed population (CLT)
This web visualization explores the sampling distribution of the mean when the data do not necessarily follow a Normal distribution.
This visualization is designed to be used after the students are familiar with the general principles of sampling. The Sampling from a Normal distribution visualization should be used first to introduce some of the basic concepts and the visual metaphors used here.
Prerequisite Knowledge
Students should
- be familiar with methods of summarizing data sets, such as mean and standard deviation;
- be able to recognize probability models as distributions with shape, centre, and spread;
- be able to recall the key properties of the Normal model;
- be able to distinguish between a population and a sample, and between parameters and statistics.
Learning Objectives
- Describe properties of the sampling distribution of the sample mean in general situations, using the Central Limit Theorem
- For the sample mean, explain whether and how the population distribution and the sample size influence the sampling distribution of the sample mean
Suggested use(s) and tips
These resources are intended to be used in a number of ways,
- as a visual aid during lectures;
- as an open-ended learning tool for active learning;
- as a guided learning experience, using either the built-in tutorials, guided activity sheet (click here for Instructor Guide and Activity Sheet), or other instructor-supplied material.
About this resource
Funding: University of British Columbia
Project Leader: Mike Whitlock
Programmers: Boris Dalstein, Mike Whitlock & Zahraa Almasslawi
Art: Derek Tan
Testing: Melissa Lee, Gaitri Yapa & Bruce Dunham
Thanks to: Darren Irwin, Dolph Schluter, Nancy Heckman, Kaylee Byers, Brandon Doty, Kim Gilbert, Sally Otto, Wilson Whitlock, Jeff Whitlock, Jeremy Draghi, Karon MacLean, Fred Cutler, Diana Whistler, Andrew Owen, Mike Marin, Leslie Burkholder, Eugenia Yu, Doug Bonn, Michael Scott, the UBC Physics Learning Group & the UBC Flex Stats initiative for numerous suggestions and improvements.
Web Visualization: Sampling from a Normal distribution
Topics:
• Sampling distributions - Sample mean
• Exploratory data analysis/Classifying data - Graphical representations - Histograms

Web Visualization: Chi-square contingency analysis
Topics:
• Hypothesis tests - Goodness of fit - Chi-squared test for independence
Web Visualization: Confidence intervals for the mean
Topics:
• Confidence intervals - One sample mean t