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Introduction to Sampling & Hypothesis Testing

This course provides an introduction to the statistical theory of sampling, parameter estimation and hypothesis testing, covering the following topics:

  • Random variables
  • Discrete and continuous probability distributions
  • Sampling distributions
  • Sampling methods
  • Confidence intervals
  • Hypothesis testing

Setup

We will be working with jupyter notebooks. The easiest way to access jupyter is via the Anaconda platform. Please install Anaconda from https://www.anaconda.com in advance of the workshop.

NB no knowledge of programming is required for this workshop.

Getting Started

Download this repository to your computer as a ZIP file and unpack it.

Open JupyterLab (within Anaconda) and navigate to the unpacked directory to work with the .ipynb examples.

Alternatively, you can run the notebooks online using Binder: Binder

Evaluation

Your feedback is very important to the Graduate School as we are continually trying to improve the training we offer.

At the end of the course, please help us by completing the evaluation form at http://bit.ly/rcds2021


Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.

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