Measures of Dispersion/Variability | Range, Variance, Standard Deviation | Statistics for Beginners

Measures of Dispersion/Variability | Range, Variance, Standard Deviation | Statistics for Beginners

Introduction

In this video, the speaker talks about measures of dispersion or variability and why they are important in describing a set of data.

Measures of Dispersion or Variability

  • Dispersion refers to how similar or different data points are in a set.
  • Three common measures of dispersion are range, variance, and standard deviation.
  • Measures of central tendency (such as mean) do not provide information on the spread of data points.
  • Two sets of data can have the same mean but different levels of variability.

Range

  • The range is the difference between the highest and lowest values in a dataset.
  • The range is not commonly used because it only provides a rough estimate of variability.

Variance

  • Variance is a more commonly used measure of dispersion that provides a more accurate estimate than range.
  • Population variance is used when computing from an entire population.

Measures of Dispersion

In this section, the speaker discusses the three measures of dispersion or variability: range, variance, and standard deviation. The speaker explains how to compute each measure and provides examples.

Population Variance vs Sample Variance

  • The formula for computing population variance is almost the same as that for computing sample variance.
  • The major difference between the two is the denominator. For population variance, it's "n" (number of observations), while for sample variance, it's "n-1".
  • When computing summation notations, "summation of x" means summing all data points in a population. "Summation of x squared" means squaring each data point before taking the sum.

Example Computation

  • To illustrate how to compute sample variance, an example is given using scores from 12 students.
  • First, compute the sum of all data points in the sample.
  • Answer: 470
  • Next, compute the sum of squared observations.
  • Answer: 19668
  • Substitute these values into the formula for sample variance.
  • Denominator: 12 - 1 = 11
  • Answer: 114.52 (approx.)

Standard Deviation

  • Standard deviation is another measure of dispersion/variability.
  • It's related to variance by taking its square root.
  • To compute standard deviation from a given set of data points:
  • Compute its variance first using either population or sample formula.
  • Take its square root to get standard deviation.

Example Computation Continued

  • Using the previous example computation where we got a sample variance value of 114.52:
  • Answer: 10.70
Video description

This presentation talks about the different measures of variability or dispersion such as the range, the variance, and the standard deviation. Computational formulas are as well provided.