[[phrase-matching]]
=== Phrase Matching
In the same way that the `match` query is the go-to query for standard
full-text search, the `match_phrase` query((("proximity matching", "phrase matching")))((("phrase matching")))((("match_phrase query"))) is the one you should reach for
when you want to find words that are near each other:
[source,js]
--------------------------------------------------
GET /my_index/my_type/_search
{
"query": {
"match_phrase": {
"title": "quick brown fox"
}
}
}
--------------------------------------------------
// SENSE: 120_Proximity_Matching/05_Match_phrase_query.json
Like the `match` query, the `match_phrase` query first analyzes the query
string to produce a list of terms. It then searches for all the terms, but
keeps only documents that contain _all_ of the search terms, in the same
_positions_ relative to each other. A query for the phrase `quick fox`
would not match any of our documents, because no document contains the word
`quick` immediately followed by `fox`.
[TIP]
==================================================
The `match_phrase` query can also be written as a `match` query with type
`phrase`:
[source,js]
--------------------------------------------------
"match": {
"title": {
"query": "quick brown fox",
"type": "phrase"
}
}
--------------------------------------------------
// SENSE: 120_Proximity_Matching/05_Match_phrase_query.json
==================================================
==== Term Positions
When a string is analyzed, the analyzer returns not((("phrase matching", "term positions")))((("match_phrase query", "position of terms")))((("position-aware matching"))) only a list of terms, but
also the _position_, or order, of each term in the original string:
[source,js]
--------------------------------------------------
GET /_analyze?analyzer=standard
Quick brown fox
--------------------------------------------------
// SENSE: 120_Proximity_Matching/05_Term_positions.json
This returns the following:
[role="pagebreak-before"]
[source,js]
--------------------------------------------------
{
"tokens": [
{
"token": "quick",
"start_offset": 0,
"end_offset": 5,
"type": "<ALPHANUM>",
"position": 1 <1>
},
{
"token": "brown",
"start_offset": 6,
"end_offset": 11,
"type": "<ALPHANUM>",
"position": 2 <1>
},
{
"token": "fox",
"start_offset": 12,
"end_offset": 15,
"type": "<ALPHANUM>",
"position": 3 <1>
}
]
}
--------------------------------------------------
<1> The `position` of each term in the original string.
Positions can be stored in the inverted index, and position-aware queries like
the `match_phrase` query can use them to match only documents that contain
all the words in exactly the order specified, with no words in-between.
==== What Is a Phrase
For a document to be considered a((("match_phrase query", "documents matching a phrase")))((("phrase matching", "criteria for matching documents"))) match for the phrase ``quick brown fox,'' the following must be true:
* `quick`, `brown`, and `fox` must all appear in the field.
* The position of `brown` must be `1` greater than the position of `quick`.
* The position of `fox` must be `2` greater than the position of `quick`.
If any of these conditions is not met, the document is not considered a match.
[TIP]
==================================================
Internally, the `match_phrase` query uses the low-level `span` query family to
do position-aware matching. ((("match_phrase query", "use of span queries for position-aware matching")))((("span queries")))Span queries are term-level queries, so they have
no analysis phase; they search for the exact term specified.
Thankfully, most people never need to use the `span` queries directly, as the
`match_phrase` query is usually good enough. However, certain specialized
fields, like patent searches, use these low-level queries to perform very
specific, carefully constructed positional searches.
==================================================
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