When analyzing data, it's not only important to understand the
central tendency—which refers to the typical value of a dataset (such as the mean, median, or mode)—but also to examine how much the data varies. This variation is called
dispersion.
While measures of central tendency summarize the center of the data, measures of dispersion tell us how spread out the values are.To illustrate this, let’s look at the test scores of two students:
- Student A's scores: 10, 50, 90
- Student B's scores: 45, 50, 55
Both students have the same mean score of 50. However, their scores are distributed differently:
- Student A’s scores: show a wide variation, ranging from 10 to 90.
- Student B’s scores: are much more concentrated, between 45 and 55.
This example shows that even when two datasets have the same average, their distributions can be very different. Measures of dispersion, such as the range and interquartile range, help us better understand this variability.