[[search-aggregations-pipeline-serialdiff-aggregation]] === Serial Differencing Aggregation experimental[] Serial differencing is a technique where values in a time series are subtracted from itself at different time lags or periods. For example, the datapoint f(x) = f(x~t~) - f(x~t-n~), where n is the period being used. A period of 1 is equivalent to a derivative with no time normalization: it is simply the change from one point to the next. Single periods are useful for removing constant, linear trends. Single periods are also useful for transforming data into a stationary series. In this example, the Dow Jones is plotted over ~250 days. The raw data is not stationary, which would make it difficult to use with some techniques. By calculating the first-difference, we de-trend the data (e.g. remove a constant, linear trend). We can see that the data becomes a stationary series (e.g. the first difference is randomly distributed around zero, and doesn't seem to exhibit any pattern/behavior). The transformation reveals that the dataset is following a random-walk; the value is the previous value +/- a random amount. This insight allows selection of further tools for analysis. [[serialdiff_dow]] .Dow Jones plotted and made stationary with first-differencing image::images/pipeline_serialdiff/dow.png[] Larger periods can be used to remove seasonal / cyclic behavior. In this example, a population of lemmings was synthetically generated with a sine wave + constant linear trend + random noise. The sine wave has a period of 30 days. The first-difference removes the constant trend, leaving just a sine wave. The 30th-difference is then applied to the first-difference to remove the cyclic behavior, leaving a stationary series which is amenable to other analysis. [[serialdiff_lemmings]] .Lemmings data plotted made stationary with 1st and 30th difference image::images/pipeline_serialdiff/lemmings.png[] ==== Syntax A `serial_diff` aggregation looks like this in isolation: [source,js] -------------------------------------------------- { "serial_diff": { "buckets_path": "the_sum", "lag": "7" } } -------------------------------------------------- .`moving_avg` Parameters |=== |Parameter Name |Description |Required |Default Value |`buckets_path` |Path to the metric of interest (see <> for more details |Required | |`lag` |The historical bucket to subtract from the current value. E.g. a lag of 7 will subtract the current value from the value 7 buckets ago. Must be a positive, non-zero integer |Optional |`1` |`gap_policy` |Determines what should happen when a gap in the data is encountered. |Optional |`insert_zero` |`format` |Format to apply to the output value of this aggregation |Optional | `null` |=== `serial_diff` aggregations must be embedded inside of a `histogram` or `date_histogram` aggregation: [source,js] -------------------------------------------------- { "aggs": { "my_date_histo": { <1> "date_histogram": { "field": "timestamp", "interval": "day" }, "aggs": { "the_sum": { "sum": { "field": "lemmings" <2> } }, "thirtieth_difference": { "serial_diff": { <3> "buckets_path": "the_sum", "lag" : 30 } } } } } } -------------------------------------------------- <1> A `date_histogram` named "my_date_histo" is constructed on the "timestamp" field, with one-day intervals <2> A `sum` metric is used to calculate the sum of a field. This could be any metric (sum, min, max, etc) <3> Finally, we specify a `serial_diff` aggregation which uses "the_sum" metric as its input. Serial differences are built by first specifying a `histogram` or `date_histogram` over a field. You can then optionally add normal metrics, such as a `sum`, inside of that histogram. Finally, the `serial_diff` is embedded inside the histogram. The `buckets_path` parameter is then used to "point" at one of the sibling metrics inside of the histogram (see <> for a description of the syntax for `buckets_path`.