OpenSearch/docs/reference/how-to/recipes/scoring.asciidoc

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[[consistent-scoring]]
=== Getting consistent scoring
The fact that Elasticsearch operates with shards and replicas adds challenges
when it comes to having good scoring.
[float]
==== Scores are not reproducible
Say the same user runs the same request twice in a row and documents do not come
back in the same order both times, this is a pretty bad experience isn't it?
Unfortunately this is something that can happen if you have replicas
(`index.number_of_replicas` is greater than 0). The reason is that Elasticsearch
selects the shards that the query should go to in a round-robin fashion, so it
is quite likely if you run the same query twice in a row that it will go to
different copies of the same shard.
Now why is it a problem? Index statistics are an important part of the score.
And these index statistics may be different across copies of the same shard
due to deleted documents. As you may know when documents are deleted or updated,
the old document is not immediately removed from the index, it is just marked
as deleted and it will only be removed from disk on the next time that the
segment this old document belongs to is merged. However for practical reasons,
those deleted documents are taken into account for index statistics. So imagine
that the primary shard just finished a large merge that removed lots of deleted
documents, then it might have index statistics that are sufficiently different
from the replica (which still have plenty of deleted documents) so that scores
are different too.
The recommended way to work around this issue is to use a string that identifies
the user that is logged is (a user id or session id for instance) as a
<<search-request-preference,preference>>. This ensures that all queries of a
given user are always going to hit the same shards, so scores remain more
consistent across queries.
This work around has another benefit: when two documents have the same score,
they will be sorted by their internal Lucene doc id (which is unrelated to the
`_id`) by default. However these doc ids could be different across copies of
the same shard. So by always hitting the same shard, we would get more
consistent ordering of documents that have the same scores.
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[float]
==== Relevancy looks wrong
If you notice that two documents with the same content get different scores or
that an exact match is not ranked first, then the issue might be related to
sharding. By default, Elasticsearch makes each shard responsible for producing
its own scores. However since index statistics are an important contributor to
the scores, this only works well if shards have similar index statistics. The
assumption is that since documents are routed evenly to shards by default, then
index statistics should be very similar and scoring would work as expected.
However in the event that you either:
- use routing at index time,
- query multiple _indices_,
- or have too little data in your index
then there are good chances that all shards that are involved in the search
request do not have similar index statistics and relevancy could be bad.
If you have a small dataset, the easiest way to work around this issue is to
index everything into an index that has a single shard
(`index.number_of_shards: 1`), which is the default. Then index statistics
will be the same for all documents and scores will be consistent.
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Otherwise the recommended way to work around this issue is to use the
<<dfs-query-then-fetch,`dfs_query_then_fetch`>> search type. This will make
Elasticsearch perform an initial round trip to all involved shards, asking
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them for their index statistics relatively to the query, then the coordinating
node will merge those statistics and send the merged statistics alongside the
request when asking shards to perform the `query` phase, so that shards can
use these global statistics rather than their own statistics in order to do the
scoring.
In most cases, this additional round trip should be very cheap. However in the
event that your query contains a very large number of fields/terms or fuzzy
queries, beware that gathering statistics alone might not be cheap since all
terms have to be looked up in the terms dictionaries in order to look up
statistics.
[[static-scoring-signals]]
=== Incorporating static relevance signals into the score
Many domains have static signals that are known to be correlated with relevance.
For instance https://en.wikipedia.org/wiki/PageRank[PageRank] and url length are
two commonly used features for web search in order to tune the score of web
pages independently of the query.
There are two main queries that allow combining static score contributions with
textual relevance, eg. as computed with BM25:
- <<query-dsl-script-score-query,`script_score` query>>
- <<query-dsl-rank-feature-query,`rank_feature` query>>
For instance imagine that you have a `pagerank` field that you wish to
combine with the BM25 score so that the final score is equal to
`score = bm25_score + pagerank / (10 + pagerank)`.
With the <<query-dsl-script-score-query,`script_score` query>> the query would
look like this:
//////////////////////////
[source,js]
--------------------------------------------------
PUT index
{
"mappings": {
"properties": {
"body": {
"type": "text"
},
"pagerank": {
"type": "long"
}
}
}
}
--------------------------------------------------
// CONSOLE
// TEST
//////////////////////////
[source,js]
--------------------------------------------------
GET index/_search
{
"query" : {
"script_score" : {
"query" : {
"match": { "body": "elasticsearch" }
},
"script" : {
"source" : "_score * saturation(doc['pagerank'].value, 10)" <1>
}
}
}
}
--------------------------------------------------
// CONSOLE
//TEST[continued]
<1> `pagerank` must be mapped as a <<number>>
while with the <<query-dsl-rank-feature-query,`rank_feature` query>> it would
look like below:
//////////////////////////
[source,js]
--------------------------------------------------
PUT index
{
"mappings": {
"properties": {
"body": {
"type": "text"
},
"pagerank": {
"type": "rank_feature"
}
}
}
}
--------------------------------------------------
// CONSOLE
// TEST
//////////////////////////
[source,js]
--------------------------------------------------
GET _search
{
"query" : {
"bool" : {
"must": {
"match": { "body": "elasticsearch" }
},
"should": {
"rank_feature": {
"field": "pagerank", <1>
"saturation": {
"pivot": 10
}
}
}
}
}
}
--------------------------------------------------
// CONSOLE
<1> `pagerank` must be mapped as a <<rank-feature,`rank_feature`>> field
While both options would return similar scores, there are trade-offs:
<<query-dsl-script-score-query,script_score>> provides a lot of flexibility,
enabling you to combine the text relevance score with static signals as you
prefer. On the other hand, the <<rank-feature,`rank_feature` query>> only
exposes a couple ways to incorporate static signails into the score. However,
it relies on the <<rank-feature,`rank_feature`>> and
<<rank-features,`rank_features`>> fields, which index values in a special way
that allows the <<query-dsl-rank-feature-query,`rank_feature` query>> to skip
over non-competitive documents and get the top matches of a query faster.