167 lines
4.5 KiB
Plaintext
167 lines
4.5 KiB
Plaintext
[[query-dsl-term-query]]
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=== Term Query
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The `term` query finds documents that contain the *exact* term specified
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in the inverted index. For instance:
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[source,js]
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--------------------------------------------------
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{
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"term" : { "user" : "Kimchy" } <1>
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}
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--------------------------------------------------
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<1> Finds documents which contain the exact term `Kimchy` in the inverted index
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of the `user` field.
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A `boost` parameter can be specified to give this `term` query a higher
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relevance score than another query, for instance:
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[source,js]
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--------------------------------------------------
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GET /_search
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{
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"query": {
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"bool": {
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"should": [
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{
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"term": {
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"status": {
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"value": "urgent",
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"boost": 2.0 <1>
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}
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}
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},
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{
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"term": {
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"status": "normal" <2>
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}
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}
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]
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}
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}
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}
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--------------------------------------------------
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<1> The `urgent` query clause has a boost of `2.0`, meaning it is twice as important
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as the query clause for `normal`.
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<2> The `normal` clause has the default neutral boost of `1.0`.
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.Why doesn't the `term` query match my document?
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**************************************************
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String fields can be `analyzed` (treated as full text, like the body of an
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email), or `not_analyzed` (treated as exact values, like an email address or a
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zip code). Exact values (like numbers, dates, and `not_analyzed` strings) have
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the exact value specified in the field added to the inverted index in order
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to make them searchable.
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By default, however, `string` fields are `analyzed`. This means that their
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values are first passed through an <<analysis,analyzer>> to produce a list of
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terms, which are then added to the inverted index.
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There are many ways to analyze text: the default
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<<analysis-standard-analyzer,`standard` analyzer>> drops most punctuation,
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breaks up text into individual words, and lower cases them. For instance,
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the `standard` analyzer would turn the string ``Quick Brown Fox!'' into the
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terms [`quick`, `brown`, `fox`].
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This analysis process makes it possible to search for individual words
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within a big block of full text.
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The `term` query looks for the *exact* term in the field's inverted index --
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it doesn't know anything about the field's analyzer. This makes it useful for
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looking up values in `not_analyzed` string fields, or in numeric or date
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fields. When querying full text fields, use the
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<<query-dsl-match-query,`match` query>> instead, which understands how the field
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has been analyzed.
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To demonstrate, try out the example below. First, create an index, specifying the field mappings, and index a document:
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[source,js]
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--------------------------------------------------
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PUT my_index
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{
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"mappings": {
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"my_type": {
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"properties": {
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"full_text": {
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"type": "string" <1>
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},
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"exact_value": {
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"type": "string",
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"index": "not_analyzed" <2>
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}
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}
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}
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}
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}
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PUT my_index/my_type/1
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{
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"full_text": "Quick Foxes!", <3>
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"exact_value": "Quick Foxes!" <4>
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}
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--------------------------------------------------
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// AUTOSENSE
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<1> The `full_text` field is `analyzed` by default.
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<2> The `exact_value` field is set to be `not_analyzed`.
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<3> The `full_text` inverted index will contain the terms: [`quick`, `foxes`].
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<4> The `exact_value` inverted index will contain the exact term: [`Quick Foxes!`].
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Now, compare the results for the `term` query and the `match` query:
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[source,js]
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--------------------------------------------------
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GET my_index/my_type/_search
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{
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"query": {
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"term": {
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"exact_value": "Quick Foxes!" <1>
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}
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}
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}
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GET my_index/my_type/_search
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{
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"query": {
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"term": {
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"full_text": "Quick Foxes!" <2>
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}
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}
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}
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GET my_index/my_type/_search
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{
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"query": {
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"term": {
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"full_text": "foxes" <3>
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}
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}
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}
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GET my_index/my_type/_search
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{
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"query": {
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"match": {
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"full_text": "Quick Foxes!" <4>
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}
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}
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}
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--------------------------------------------------
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// AUTOSENSE
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<1> This query matches because the `exact_value` field contains the exact
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term `Quick Foxes!`.
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<2> This query does not match, because the `full_text` field only contains
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the terms `quick` and `foxes`. It does not contain the exact term
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`Quick Foxes!`.
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<3> A `term` query for the term `foxes` matches the `full_text` field.
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<4> This `match` query on the `full_text` field first analyzes the query string,
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then looks for documents containing `quick` or `foxes` or both.
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**************************************************
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