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R for Statistical Significance Tests University of Oxford

Highlights
Tuition fee
140 GBP / full
140 GBP / full
Unknown
Tuition fee
140 GBP / full
140 GBP / full
Unknown
Duration
1 days
Duration
1 days
Apply date
Unknown
Unknown
Apply date
Unknown
Unknown
Start date
Unknown
Start date
Unknown
Taught in
English
Taught in
English

About

In the R for Statistical Significance Tests course offered by University of Oxford you will learn how to perform several widely-used hypotheses and statistical significance tests and correctly interpret the results.

Overview

What you will study

The R for Statistical Significance Tests course offered by University of Oxford assumes prior knowledge of how to use R and RStudio. It contains explanation and implementation of several tests such as:

  • t-test to determine if there is a significant difference between the means of two groups, which may be related in certain features, or to answer the question: is the mean of a vector different from a given value? This includes variations of the t-test.
  • Kolmogorov-Smirnov test to statistically test the distribution of a variable.
  • A/B test to establish which of two treatments, products, procedures, or the like is superior.
  • Permutation test to compare an observed statistic to a resampled distribution and determine whether an observed difference between samples might occur by chance.
  • ANOVA to test whether groupings in the data can be meaningful ways to understand the structure of the data.
  • Chi-Squared test to test differences across a contingency table.
  • This training covers various theoretical and practical aspects of several hypothesis and statistical significance tests. You will learn what a test does, when to use it, how to use it and how to interpret its results.

By the end of the day you will have access to all course material (e.g. slides, code examples and so on).

Programme Structure

The program focuses on:

  • What are hypothesis and statistical significance tests? Why do we need them?
  • What is a p-value? How do we interpret it?
  • The two types of error (type I and type II errors)
  • Paired sample vs independent sample
  • Data types and distributions
  • Kolmogorov-Smirnov test
  • Shapiro-Wilk test
  • T-test, A/B and permutation tests
  • Why have a control group?
  • Resampling and resampling techniques
  • Permutation test
  • More on the p-value and how to interpret it
  • ANOVA, Chi-squared and Fisher’s Exact Tests
  • Kruskal-Wallis and Mann-Whitney tests and how to select a test

Key information

Duration

  • Part-time
    • 1 days

Start dates & application deadlines

Language

English

Delivered

Online

Campus Location

  • Oxford, United Kingdom

What students do after studying

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Academic requirements

We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.

English requirements

We are not aware of any English requirements for this programme.

Other requirements

General requirements

  • The day assumes prior knowledge of how to use R and RStudio.

Tuition Fees

Tuition fees are shown in and the most likely applicable fee is shown based on your nationality.
  • International

    Non-residents
    140 GBP / full
    140 GBP / full
  • Domestic

    Citizens or residents
    140 GBP / full
    140 GBP / full

Funding

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R for Statistical Significance Tests
University of Oxford
R for Statistical Significance Tests
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University of Oxford

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