Percentile: Difference between revisions
imported>Peter Schmitt m (→Example: formatting) |
imported>Peter Schmitt (→Example: formatting) |
||
Line 44: | Line 44: | ||
* Take a sample of 101 values, ordered according to their size: | * Take a sample of 101 values, ordered according to their size: | ||
: | :: <math> x_1 \le x_2 \le \dots \le x_{100} \le x_{101} </math>. | ||
Then the unique ''k''-th percentile is <math>x_{k+1}</math>. | : Then the unique ''k''-th percentile is <math>x_{k+1}</math>. | ||
* If there are only 100 values | * If there are only 100 values | ||
: | :: <math> x_1 \le x_2 \le \dots \le x_{99} \le x_{100} </math>. | ||
: Then any value between <math>x_k</math> and <math>x_{k+1}</math> is a ''k''-th percentile. |
Revision as of 09:42, 23 November 2009
Percentiles are statistical parameters which describe the distribution of a (real) value in a population (or a sample). Roughly speaking, the k-th percentile separates the smallest p percent of values from the largest (100-p) percent.
Special percentiles are the median (50th percentile), the quartiles (25th and 75th percentile), and the deciles (the k-th decile is the (10k)-th percentile). Percentiles are special cases of quantiles: The k-th percentile is the same as the (k/100)-quantile.
Definition
The value x is k-th percentile if
Special cases
For a continuous distribution (like the normal distribution) the k-th percentile x is uniquely determined by
In the general case (e.g., for discrete distributions, or for finite samples) it may happen that the separating value has positive probability:
or that there are two distinct values for which equality holds such that
Then every value in the (closed) intervall between the smallest and the largest such value
is a k-th percentiles.
Example
The following examples illustrates this:
- Take a sample of 101 values, ordered according to their size:
- .
- Then the unique k-th percentile is .
- If there are only 100 values
- .
- Then any value between and is a k-th percentile.