2013-08-28 19:24:34 -04:00
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[[query-dsl-common-terms-query]]
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=== Common Terms Query
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The `common` terms query is a modern alternative to stopwords which
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improves the precision and recall of search results (by taking stopwords
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into account), without sacrificing performance.
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[float]
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==== The problem
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Every term in a query has a cost. A search for `"The brown fox"`
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requires three term queries, one for each of `"the"`, `"brown"` and
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`"fox"`, all of which are executed against all documents in the index.
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The query for `"the"` is likely to match many documents and thus has a
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much smaller impact on relevance than the other two terms.
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Previously, the solution to this problem was to ignore terms with high
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frequency. By treating `"the"` as a _stopword_, we reduce the index size
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and reduce the number of term queries that need to be executed.
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The problem with this approach is that, while stopwords have a small
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impact on relevance, they are still important. If we remove stopwords,
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we lose precision, (eg we are unable to distinguish between `"happy"`
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and `"not happy"`) and we lose recall (eg text like `"The The"` or
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`"To be or not to be"` would simply not exist in the index).
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[float]
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==== The solution
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The `common` terms query divides the query terms into two groups: more
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important (ie _low frequency_ terms) and less important (ie _high
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frequency_ terms which would previously have been stopwords).
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First it searches for documents which match the more important terms.
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These are the terms which appear in fewer documents and have a greater
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impact on relevance.
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Then, it executes a second query for the less important terms -- terms
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which appear frequently and have a low impact on relevance. But instead
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of calculating the relevance score for *all* matching documents, it only
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calculates the `_score` for documents already matched by the first
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query. In this way the high frequency terms can improve the relevance
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calculation without paying the cost of poor performance.
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If a query consists only of high frequency terms, then a single query is
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executed as an `AND` (conjunction) query, in other words all terms are
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required. Even though each individual term will match many documents,
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the combination of terms narrows down the resultset to only the most
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relevant. The single query can also be executed as an `OR` with a
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specific
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<<query-dsl-minimum-should-match,`minimum_should_match`>>,
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in this case a high enough value should probably be used.
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Terms are allocated to the high or low frequency groups based on the
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`cutoff_frequency`, which can be specified as an absolute frequency
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2015-04-07 04:12:39 -04:00
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(`>=1`) or as a relative frequency (`0.0 .. 1.0`). (Remember that document
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frequencies are computed on a per shard level as explained in the blog post
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2015-05-05 04:03:15 -04:00
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{defguide}/relevance-is-broken.html[Relevance is broken].)
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2013-08-28 19:24:34 -04:00
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Perhaps the most interesting property of this query is that it adapts to
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domain specific stopwords automatically. For example, on a video hosting
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site, common terms like `"clip"` or `"video"` will automatically behave
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as stopwords without the need to maintain a manual list.
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[float]
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==== Examples
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In this example, words that have a document frequency greater than 0.1%
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(eg `"this"` and `"is"`) will be treated as _common terms_.
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[source,js]
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--------------------------------------------------
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{
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"common": {
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"body": {
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"query": "this is bonsai cool",
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"cutoff_frequency": 0.001
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}
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}
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}
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--------------------------------------------------
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The number of terms which should match can be controlled with the
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<<query-dsl-minimum-should-match,`minimum_should_match`>>
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(`high_freq`, `low_freq`), `low_freq_operator` (default `"or"`) and
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`high_freq_operator` (default `"or"`) parameters.
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For low frequency terms, set the `low_freq_operator` to `"and"` to make
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all terms required:
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[source,js]
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--------------------------------------------------
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{
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"common": {
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"body": {
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"query": "nelly the elephant as a cartoon",
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"cutoff_frequency": 0.001,
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"low_freq_operator" "and"
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}
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}
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}
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--------------------------------------------------
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which is roughly equivalent to:
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[source,js]
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--------------------------------------------------
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{
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"bool": {
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"must": [
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{ "term": { "body": "nelly"}},
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{ "term": { "body": "elephant"}},
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{ "term": { "body": "cartoon"}}
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],
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"should": [
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{ "term": { "body": "the"}}
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{ "term": { "body": "as"}}
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{ "term": { "body": "a"}}
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]
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}
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}
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--------------------------------------------------
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Alternatively use
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<<query-dsl-minimum-should-match,`minimum_should_match`>>
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to specify a minimum number or percentage of low frequency terms which
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must be present, for instance:
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[source,js]
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--------------------------------------------------
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{
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"common": {
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"body": {
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"query": "nelly the elephant as a cartoon",
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"cutoff_frequency": 0.001,
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"minimum_should_match": 2
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}
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}
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}
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--------------------------------------------------
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which is roughly equivalent to:
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[source,js]
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--------------------------------------------------
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{
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"bool": {
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"must": {
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"bool": {
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"should": [
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{ "term": { "body": "nelly"}},
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{ "term": { "body": "elephant"}},
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{ "term": { "body": "cartoon"}}
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],
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"minimum_should_match": 2
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}
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},
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"should": [
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{ "term": { "body": "the"}}
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{ "term": { "body": "as"}}
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{ "term": { "body": "a"}}
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]
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}
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}
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--------------------------------------------------
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minimum_should_match
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A different
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<<query-dsl-minimum-should-match,`minimum_should_match`>>
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can be applied for low and high frequency terms with the additional
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`low_freq` and `high_freq` parameters Here is an example when providing
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additional parameters (note the change in structure):
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[source,js]
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--------------------------------------------------
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{
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"common": {
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"body": {
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"query": "nelly the elephant not as a cartoon",
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"cutoff_frequency": 0.001,
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"minimum_should_match": {
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"low_freq" : 2,
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"high_freq" : 3
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}
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}
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}
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}
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--------------------------------------------------
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which is roughly equivalent to:
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[source,js]
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--------------------------------------------------
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{
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"bool": {
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"must": {
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"bool": {
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"should": [
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{ "term": { "body": "nelly"}},
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{ "term": { "body": "elephant"}},
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{ "term": { "body": "cartoon"}}
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],
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"minimum_should_match": 2
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}
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},
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"should": {
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"bool": {
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"should": [
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{ "term": { "body": "the"}},
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{ "term": { "body": "not"}},
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{ "term": { "body": "as"}},
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{ "term": { "body": "a"}}
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],
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"minimum_should_match": 3
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}
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}
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}
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}
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--------------------------------------------------
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In this case it means the high frequency terms have only an impact on
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relevance when there are at least three of them. But the most
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interesting use of the
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<<query-dsl-minimum-should-match,`minimum_should_match`>>
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for high frequency terms is when there are only high frequency terms:
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[source,js]
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--------------------------------------------------
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{
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"common": {
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"body": {
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"query": "how not to be",
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"cutoff_frequency": 0.001,
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"minimum_should_match": {
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"low_freq" : 2,
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"high_freq" : 3
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}
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}
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}
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}
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--------------------------------------------------
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which is roughly equivalent to:
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[source,js]
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--------------------------------------------------
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{
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"bool": {
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"should": [
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{ "term": { "body": "how"}},
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{ "term": { "body": "not"}},
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{ "term": { "body": "to"}},
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{ "term": { "body": "be"}}
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],
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"minimum_should_match": "3<50%"
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}
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}
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--------------------------------------------------
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The high frequency generated query is then slightly less restrictive
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than with an `AND`.
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The `common` terms query also supports `boost`, `analyzer` and
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`disable_coord` as parameters.
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