253 lines
8.8 KiB
Plaintext
253 lines
8.8 KiB
Plaintext
[[query-dsl-mlt-query]]
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=== More like this query
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++++
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<titleabbrev>More like this</titleabbrev>
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++++
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The More Like This Query finds documents that are "like" a given
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set of documents. In order to do so, MLT selects a set of representative terms
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of these input documents, forms a query using these terms, executes the query
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and returns the results. The user controls the input documents, how the terms
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should be selected and how the query is formed.
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The simplest use case consists of asking for documents that are similar to a
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provided piece of text. Here, we are asking for all movies that have some text
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similar to "Once upon a time" in their "title" and in their "description"
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fields, limiting the number of selected terms to 12.
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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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"more_like_this" : {
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"fields" : ["title", "description"],
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"like" : "Once upon a time",
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"min_term_freq" : 1,
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"max_query_terms" : 12
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}
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}
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}
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--------------------------------------------------
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// CONSOLE
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A more complicated use case consists of mixing texts with documents already
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existing in the index. In this case, the syntax to specify a document is
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similar to the one used in the <<docs-multi-get,Multi GET API>>.
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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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"more_like_this" : {
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"fields" : ["title", "description"],
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"like" : [
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{
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"_index" : "imdb",
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"_id" : "1"
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},
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{
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"_index" : "imdb",
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"_id" : "2"
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},
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"and potentially some more text here as well"
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],
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"min_term_freq" : 1,
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"max_query_terms" : 12
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}
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}
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}
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--------------------------------------------------
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// CONSOLE
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Finally, users can mix some texts, a chosen set of documents but also provide
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documents not necessarily present in the index. To provide documents not
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present in the index, the syntax is similar to <<docs-termvectors-artificial-doc,artificial documents>>.
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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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"more_like_this" : {
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"fields" : ["name.first", "name.last"],
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"like" : [
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{
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"_index" : "marvel",
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"doc" : {
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"name": {
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"first": "Ben",
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"last": "Grimm"
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},
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"_doc": "You got no idea what I'd... what I'd give to be invisible."
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}
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},
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{
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"_index" : "marvel",
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"_id" : "2"
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}
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],
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"min_term_freq" : 1,
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"max_query_terms" : 12
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}
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}
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}
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--------------------------------------------------
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// CONSOLE
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==== How it Works
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Suppose we wanted to find all documents similar to a given input document.
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Obviously, the input document itself should be its best match for that type of
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query. And the reason would be mostly, according to
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link:https://lucene.apache.org/core/4_9_0/core/org/apache/lucene/search/similarities/TFIDFSimilarity.html[Lucene scoring formula],
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due to the terms with the highest tf-idf. Therefore, the terms of the input
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document that have the highest tf-idf are good representatives of that
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document, and could be used within a disjunctive query (or `OR`) to retrieve similar
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documents. The MLT query simply extracts the text from the input document,
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analyzes it, usually using the same analyzer at the field, then selects the
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top K terms with highest tf-idf to form a disjunctive query of these terms.
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IMPORTANT: The fields on which to perform MLT must be indexed and of type
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`text` or `keyword``. Additionally, when using `like` with documents, either
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`_source` must be enabled or the fields must be `stored` or store
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`term_vector`. In order to speed up analysis, it could help to store term
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vectors at index time.
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For example, if we wish to perform MLT on the "title" and "tags.raw" fields,
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we can explicitly store their `term_vector` at index time. We can still
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perform MLT on the "description" and "tags" fields, as `_source` is enabled by
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default, but there will be no speed up on analysis for these fields.
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[source,js]
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--------------------------------------------------
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PUT /imdb
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{
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"mappings": {
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"properties": {
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"title": {
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"type": "text",
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"term_vector": "yes"
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},
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"description": {
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"type": "text"
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},
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"tags": {
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"type": "text",
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"fields" : {
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"raw": {
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"type" : "text",
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"analyzer": "keyword",
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"term_vector" : "yes"
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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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// CONSOLE
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==== Parameters
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The only required parameter is `like`, all other parameters have sensible
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defaults. There are three types of parameters: one to specify the document
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input, the other one for term selection and for query formation.
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[float]
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==== Document Input Parameters
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[horizontal]
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`like`::
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The only *required* parameter of the MLT query is `like` and follows a
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versatile syntax, in which the user can specify free form text and/or a single
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or multiple documents (see examples above). The syntax to specify documents is
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similar to the one used by the <<docs-multi-get,Multi GET API>>. When
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specifying documents, the text is fetched from `fields` unless overridden in
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each document request. The text is analyzed by the analyzer at the field, but
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could also be overridden. The syntax to override the analyzer at the field
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follows a similar syntax to the `per_field_analyzer` parameter of the
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<<docs-termvectors-per-field-analyzer,Term Vectors API>>.
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Additionally, to provide documents not necessarily present in the index,
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<<docs-termvectors-artificial-doc,artificial documents>> are also supported.
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`unlike`::
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The `unlike` parameter is used in conjunction with `like` in order not to
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select terms found in a chosen set of documents. In other words, we could ask
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for documents `like: "Apple"`, but `unlike: "cake crumble tree"`. The syntax
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is the same as `like`.
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`fields`::
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A list of fields to fetch and analyze the text from.
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[float]
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[[mlt-query-term-selection]]
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==== Term Selection Parameters
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[horizontal]
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`max_query_terms`::
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The maximum number of query terms that will be selected. Increasing this value
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gives greater accuracy at the expense of query execution speed. Defaults to
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`25`.
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`min_term_freq`::
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The minimum term frequency below which the terms will be ignored from the
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input document. Defaults to `2`.
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`min_doc_freq`::
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The minimum document frequency below which the terms will be ignored from the
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input document. Defaults to `5`.
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`max_doc_freq`::
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The maximum document frequency above which the terms will be ignored from the
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input document. This could be useful in order to ignore highly frequent words
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such as stop words. Defaults to unbounded (`0`).
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`min_word_length`::
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The minimum word length below which the terms will be ignored. The old name
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`min_word_len` is deprecated. Defaults to `0`.
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`max_word_length`::
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The maximum word length above which the terms will be ignored. The old name
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`max_word_len` is deprecated. Defaults to unbounded (`0`).
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`stop_words`::
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An array of stop words. Any word in this set is considered "uninteresting" and
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ignored. If the analyzer allows for stop words, you might want to tell MLT to
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explicitly ignore them, as for the purposes of document similarity it seems
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reasonable to assume that "a stop word is never interesting".
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`analyzer`::
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The analyzer that is used to analyze the free form text. Defaults to the
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analyzer associated with the first field in `fields`.
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[float]
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==== Query Formation Parameters
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[horizontal]
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`minimum_should_match`::
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After the disjunctive query has been formed, this parameter controls the
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number of terms that must match.
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The syntax is the same as the <<query-dsl-minimum-should-match,minimum should match>>.
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(Defaults to `"30%"`).
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`fail_on_unsupported_field`::
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Controls whether the query should fail (throw an exception) if any of the
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specified fields are not of the supported types
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(`text` or `keyword`). Set this to `false` to ignore the field and continue
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processing. Defaults to `true`.
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`boost_terms`::
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Each term in the formed query could be further boosted by their tf-idf score.
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This sets the boost factor to use when using this feature. Defaults to
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deactivated (`0`). Any other positive value activates terms boosting with the
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given boost factor.
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`include`::
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Specifies whether the input documents should also be included in the search
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results returned. Defaults to `false`.
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`boost`::
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Sets the boost value of the whole query. Defaults to `1.0`.
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