Session:11 The Chi-Square Distribution
11.1 Facts About the Chi-Square Distribution
Introductory Business Statistics | Leadership Development – Micro-Learning Session
Rice University 2020 | Michael Laverty, Colorado State University Global Chris Littel, North Carolina State University| https://openstax.org/details/books/introductory-business-statistics
The notation for the chi-square distribution is:
χ∼χ2df
where df = degrees of freedom which depends on how chi-square is being used. (If you want to practice calculating chi-square probabilities then use df = n – 1. The degrees of freedom for the three major uses are each calculated differently.)
For the χ2 distribution, the population mean is μ = df and the population standard deviation is σ=2(df)−−−−−√
.
The random variable is shown as χ2.
The random variable for a chi-square distribution with k degrees of freedom is the sum of k independent, squared standard normal variables.
χ2 = (Z1)2 + (Z2)2 + … + (Zk)2
- The curve is nonsymmetrical and skewed to the right.
- There is a different chi-square curve for each df.
Figure 11.2
- The test statistic for any test is always greater than or equal to zero.
- When df > 90, the chi-square curve approximates the normal distribution. For X ~ χ21,000
the mean, μ = df = 1,000 and the standard deviation, σ = 2(1,000)−−−−−−−√
= 44.7. Therefore, X ~ N(1,000, 44.7), approximately.
- The mean, μ, is located just to the right of the peak.