When we describe the shape of data sets, we focus on how the scores are distributed and whether the shape is symmetrical or not.
When describing skewed distributions, it's better to use median and interquartile range as measures of center and spread because they are resistant more to extreme data points. When describing symmetrical or uniform distributions, it's better to use mean and range as measures of center and spread because they take the values of all data points into account.
If we want to compare two distributions visually, it is important to check that the axis and scales are the same on both displays.
Data displays can be compared by showing them in parallel or back-to-back:
Use measures of shape, center, and spread to analyze and interpret the given dot plot.
The parallel box plots show the weight of the 2021 Chicago Bulls NBA team and the 2021 Chicago Sky WNBA team.
Interpret the differences in the shape, center, and spread of the weights for each team.