# Interquartile mean

The **interquartile mean (IQM)** is a statistical measure of central tendency, much like the mean (in more popular terms called the average), the median, and the mode.

The IQM is a *truncated mean* and so is very similar to the scoring method used in sports that are evaluated by a panel of judges: *discard the lowest and the highest scores; calculate the mean value of the remaining scores*.

In calculation of the IQM, only the interquartile range is used, and the lowest 25% and the highest 25% of the scores are discarded. These points are called the first and third quartiles, hence the name of the IQM. (Note that the *second* quartile is also called the median).

assuming the values have been ordered.

The method is best explained with an example. Consider the following dataset:

- 5, 8, 4, 38, 8, 6, 9, 7, 7, 3, 1, 6

First sort the list from lowest-to-highest:

- 1, 3, 4, 5, 6, 6, 7, 7, 8, 8, 9, 38

There are 12 observations (datapoints) in the dataset, thus we have 4 quartiles of 3 numbers. Discard the lowest and the highest 3 values:

~~1, 3, 4~~, 5, 6, 6, 7, 7, 8,~~8, 9, 38~~

We now have 6 of the 12 observations remaining; next, we calculate the arithmetic mean of these numbers:

*x*_{IQM}= (5 + 6 + 6 + 7 + 7 + 8) / 6 = 6.5

The Interquartile Mean shares some properties from both the mean as well as the median:

- Like the median, the IQM is insensitive to outliers; in the example given, the highest value (38) was an obvious outlier of the dataset, but its value is not used in the calculation of the IQM. On the other hand, the common average (the arithmetic mean) is sensitive to these outliers:
*x*_{mean}= 8.5. - Like the mean, the IQM is a discrete parameter, based on a large number of observations from the dataset. The median is always equal to
*one*of the observations in the dataset (assuming an odd number of observations). The mean can be equal to*any*value between the lowest and highest observation, depending on the value of*all*the other observations. The IQM can be equal to*any*value between the first and third quartiles, depending on*all*the observations in the interquartile range.

The above example consisted of 12 observations in the dataset, which made the determination of the quartiles very easy. Of course, not all datasets have a number of observations that is divisible by 4. We can adjust the method of calculating the IQM to accommodate this. Ideally we want to have the IQM equal to the mean for symmetric distributions, e.g.:

- 1, 2, 3, 4, 5

has a mean value *x*_{mean} = 3, and since it is a symmetric distribution, *x*_{IQM} = 3 would be desired.

We can solve this by using a weighted average of the quartiles and the interquartile dataset:

Consider the following dataset of 9 observations:

- 1, 3, 5, 7, 9, 11, 13, 15, 17

There are 9/4 = 2.25 observations in each quartile, and 4.5 observations in the interquartile range. Truncate the fractional quartile size, and remove this number from the 1st and 3rd quartiles (2.25 observations in each quartile, thus the lowest 2 and the highest 2 are removed).

~~1, 3~~, (5), 7, 9, 11, (13),~~15, 17~~

Thus, there are 3 *full* observations in the interquartile range, and 2 fractional observations. Since we have a total of 4.5 observations in the interquartile range, the two fractional observations each count for 0.75 (and thus 3×1 + 2×0.75 = 4.5 observations).

The IQM is now calculated as follows:

*x*_{IQM}= {(7 + 9 + 11) + 0.75 x (5 + 13)} / 4.5 = 9

In the above example, the mean has a value x_{mean} = 9. The same as the IQM, as was expected. The method of calculating the IQM for any number of observations is analogous; the fractional contributions to the IQM can be either 0, 0.25, 0.50, or 0.75.

## See also