[[search-aggregations-bucket-adjacency-matrix-aggregation]] === Adjacency Matrix Aggregation A bucket aggregation returning a form of https://en.wikipedia.org/wiki/Adjacency_matrix[adjacency matrix]. The request provides a collection of named filter expressions, similar to the `filters` aggregation request. Each bucket in the response represents a non-empty cell in the matrix of intersecting filters. experimental[The `adjacency_matrix` aggregation is a new feature and we may evolve its design as we get feedback on its use. As a result, the API for this feature may change in non-backwards compatible ways] Given filters named `A`, `B` and `C` the response would return buckets with the following names: [options="header"] |======================= | h|A h|B h|C h|A |A |A&B |A&C h|B | |B |B&C h|C | | |C |======================= The intersecting buckets e.g `A&C` are labelled using a combination of the two filter names separated by the ampersand character. Note that the response does not also include a "C&A" bucket as this would be the same set of documents as "A&C". The matrix is said to be _symmetric_ so we only return half of it. To do this we sort the filter name strings and always use the lowest of a pair as the value to the left of the "&" separator. An alternative `separator` parameter can be passed in the request if clients wish to use a separator string other than the default of the ampersand. Example: [source,js] -------------------------------------------------- PUT /emails/message/_bulk?refresh { "index" : { "_id" : 1 } } { "accounts" : ["hillary", "sidney"]} { "index" : { "_id" : 2 } } { "accounts" : ["hillary", "donald"]} { "index" : { "_id" : 3 } } { "accounts" : ["vladimir", "donald"]} GET emails/message/_search { "size": 0, "aggs" : { "interactions" : { "adjacency_matrix" : { "filters" : { "grpA" : { "terms" : { "accounts" : ["hillary", "sidney"] }}, "grpB" : { "terms" : { "accounts" : ["donald", "mitt"] }}, "grpC" : { "terms" : { "accounts" : ["vladimir", "nigel"] }} } } } } } -------------------------------------------------- // CONSOLE In the above example, we analyse email messages to see which groups of individuals have exchanged messages. We will get counts for each group individually and also a count of messages for pairs of groups that have recorded interactions. Response: [source,js] -------------------------------------------------- { "took": 9, "timed_out": false, "_shards": ..., "hits": ..., "aggregations": { "interactions": { "buckets": [ { "key":"grpA", "doc_count": 2 }, { "key":"grpA&grpB", "doc_count": 1 }, { "key":"grpB", "doc_count": 2 }, { "key":"grpB&grpC", "doc_count": 1 }, { "key":"grpC", "doc_count": 1 } ] } } } -------------------------------------------------- // TESTRESPONSE[s/"took": 9/"took": $body.took/] // TESTRESPONSE[s/"_shards": \.\.\./"_shards": $body._shards/] // TESTRESPONSE[s/"hits": \.\.\./"hits": $body.hits/] ==== Usage On its own this aggregation can provide all of the data required to create an undirected weighted graph. However, when used with child aggregations such as a `date_histogram` the results can provide the additional levels of data required to perform https://en.wikipedia.org/wiki/Dynamic_network_analysis[dynamic network analysis] where examining interactions _over time_ becomes important. ==== Limitations For N filters the matrix of buckets produced can be N²/2 and so there is a default maximum imposed of 100 filters . This setting can be changed using the `index.max_adjacency_matrix_filters` index-level setting.