This single-value
aggregation approximates the median absolute deviation
of its search results.
Median absolute deviation is a measure of variability. It is a robust statistic, meaning that it is useful for describing data that may have outliers, or may not be normally distributed. For such data it can be more descriptive than standard deviation.
It is calculated as the median of each data point’s deviation from the median of the entire sample. That is, for a random variable X, the median absolute deviation is median(|median(X) - Xi|).
Assume our data represents product reviews on a one to five star scale. Such reviews are usually summarized as a mean, which is easily understandable but doesn’t describe the reviews' variability. Estimating the median absolute deviation can provide insight into how much reviews vary from one another.
In this example we have a product which has an average rating of 3 stars. Let’s look at its ratings' median absolute deviation to determine how much they vary
GET reviews/_search { "size": 0, "aggs": { "review_average": { "avg": { "field": "rating" } }, "review_variability": { "median_absolute_deviation": { "field": "rating" } } } }
The resulting median absolute deviation of 2
tells us that there is a fair
amount of variability in the ratings. Reviewers must have diverse opinions about
this product.
{ ... "aggregations": { "review_average": { "value": 3.0 }, "review_variability": { "value": 2.0 } } }
The naive implementation of calculating median absolute deviation stores the entire sample in memory, so this aggregation instead calculates an approximation. It uses the TDigest data structure to approximate the sample median and the median of deviations from the sample median. For more about the approximation characteristics of TDigests, see Percentiles are (usually) approximate.
The tradeoff between resource usage and accuracy of a TDigest’s quantile
approximation, and therefore the accuracy of this aggregation’s approximation
of median absolute deviation, is controlled by the compression
parameter. A
higher compression
setting provides a more accurate approximation at the
cost of higher memory usage. For more about the characteristics of the TDigest
compression
parameter see
Compression.
GET reviews/_search { "size": 0, "aggs": { "review_variability": { "median_absolute_deviation": { "field": "rating", "compression": 100 } } } }
The default compression
value for this aggregation is 1000
. At this
compression level this aggregation is usually within 5% of the exact result,
but observed performance will depend on the sample data.
This metric aggregation supports scripting. In our example above, product reviews are on a scale of one to five. If we wanted to modify them to a scale of one to ten, we can using scripting.
To provide an inline script:
GET reviews/_search { "size": 0, "aggs": { "review_variability": { "median_absolute_deviation": { "script": { "lang": "painless", "source": "doc['rating'].value * params.scaleFactor", "params": { "scaleFactor": 2 } } } } } }
To provide a stored script:
GET reviews/_search { "size": 0, "aggs": { "review_variability": { "median_absolute_deviation": { "script": { "id": "my_script", "params": { "field": "rating" } } } } } }
The missing
parameter defines how documents that are missing a value should be
treated. By default they will be ignored but it is also possible to treat them
as if they had a value.
Let’s be optimistic and assume some reviewers loved the product so much that they forgot to give it a rating. We’ll assign them five stars
GET reviews/_search { "size": 0, "aggs": { "review_variability": { "median_absolute_deviation": { "field": "rating", "missing": 5 } } } }